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2607.07708 2026-07-09 cs.CL cs.AI cs.CE cs.LG 新提交

Accurate, Interdisciplinary and Transparent Structure-property Understanding with Deep Native Structural Reasoning

通过深度原生结构推理实现准确、跨学科和透明的结构-属性理解

Chen Tang, Yizhou Wang, Jianyu Wu, Lintao Wang, Shixiang Tang, Pengze Li, Encheng Su, Jun Yao, Jiabei Xiao, Yuqi Shi, Jielan Li, Hongxia Hao, Zhangyang Gao, Fang Wu, Ben Fei, Xiangyu Yue, Pan Tan, Bozitao Zhong, Jinouwen Zhang, Aoran Wang, Yan Lu, Jiaheng Liu, Xinzhu Ma, Liang Hong, Mingyue Zheng, Phil Torr, Bowen Zhou, Wanli Ouyang, Lei Bai

发表机构 * Shanghai Artificial Intelligence Laboratory(上海人工智能实验室) The Chinese University of Hong Kong(香港中文大学) Shanghai Jiao Tong University(上海交通大学) Fudan University(复旦大学) University of Sydney(悉尼大学) Nanjing University(南京大学) University of Oxford(牛津大学) The University of Science and Technology of China(中国科学技术大学) Drug Discovery and Design Center, State Key Laboratory of Drug Research, Shanghai Institute of Materia Medica, Chinese Academy of Sciences(药物发现与设计中心、国家药物研究重点实验室、上海中医药材料医学研究所、中国科学院) University of Chinese Academy of Sciences(中国科学院大学) Stanford University(斯坦福大学)

AI总结 研究聚焦利用人工智能解释结构-属性关系的挑战,提出多模态科学基础模型SciReasoner,通过离散化结构信息为可寻址单元进行推理,在多领域基准测试中表现出色,实现准确预测与可解释科学推理的结合。

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AI中文摘要

结构-属性关系是生物学、化学和材料科学的基础,其功能、反应性和物理响应源于空间、化学和周期性组织。解释这些关系需要通过科学原理和物理约束来解读结构证据。将人工智能应用于此面临表示和推理的联合挑战。本文介绍了SciReasoner,一种用于蛋白质、小分子和无机晶体原生结构推理的多模态科学基础模型。它将坐标、拓扑和周期性连接性离散化为统一的结构感知词汇表,在推理过程中将结构令牌视为可寻址的证据单元。在同源性控制的基因本体预测中,它提高了低同源性和孤儿样蛋白质的细胞成分注释,在化学中提高了单步逆合成准确性,在材料科学中其表示可分离元素和化合物相并解决高、低带隙区域问题。在86个基准测试中,SciReasoner在67个任务上取得了领先性能。双盲专家评估表明其推理痕迹在98%的情况下被评为优于或至少与前沿大语言模型相当。通过使结构成为科学约束下可检查的推理基础,SciReasoner将准确预测与可解释的科学推理联系起来。

英文摘要

Structure-property relationships are foundational to biology, chemistry and materials science, where function, reactivity and physical response emerge from spatial, chemical and periodic organization. Mechanistically explaining these relationships requires interpreting structural evidence through scientific principles and physical constraints, from stereochemistry and bonding to symmetry, energetics and periodic order. However, applying artificial intelligence to this process presents a joint challenge of representation and reasoning: models must preserve domain-native structural information while showing how specific evidence supports predictions under these constraints. Here we introduce SciReasoner, a multimodal scientific foundation model for native structural reasoning across proteins, small molecules and inorganic crystals. SciReasoner discretizes coordinates, topologies and periodic connectivities into a unified structure-aware vocabulary, treating structural tokens as addressable evidence units during reasoning. In homology-controlled Gene Ontology prediction, SciReasoner improves Cellular Component annotation for low-homology and orphan-like proteins, increasing $F_{\max}$ from 0.42 to 0.55. In chemistry, it raises single-step retrosynthesis accuracy from 0.63 to 0.72 while generating fragment-level disconnection and precursor-verification traces. In materials science, its representations separate elemental and compound phases and resolve high- and low-band-gap regimes. Across 86 benchmarks, SciReasoner achieves state-of-the-art performance on 67 tasks. Double-blind expert evaluation rates its reasoning traces as preferred or at least comparable to those of a frontier large language model in 98% of cases. By making structure an inspectable substrate for reasoning under scientific constraints, SciReasoner connects accurate prediction with interpretable scientific inference.

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2607.07707 2026-07-09 cs.CL cs.AI cs.LG 新提交

Co-LMLM: Continuous-Query Limited Memory Language Models

Co-LMLM:连续查询有限记忆语言模型

Yair Feldman, Linxi Zhao, Nathan Godey, Dongyoung Go, Yilun Hua, Kilian Q. Weinberger, Jennifer J. Sun, Yoav Artzi

发表机构 * Department of Computer Science Cornell University(计算机科学系 哥伦比亚大学)

AI总结 研究提出连续查询有限记忆语言模型CO-LMLM,通过将知识库的键与文本知识值配对,以低成本生成灵活向量查询,整合检索知识。经多数据集预训练和多模型规模测试,在困惑度和事实精度上优于同类模型。

Comments preprint

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AI中文摘要

有限记忆语言模型(LMLMs)在预训练期间将事实知识外化到知识库(KB)中,而非存储在权重里。生成时,模型按需从KB获取知识。我们提出连续查询LMLM(CO-LMLM),其KB将连续键与文本知识值配对。CO-LMLM以低成本生成灵活向量查询,还将人类可读且可归因的检索知识整合到生成中。通过在Wikipedia和FineWeb-Edu上预训练并在多个模型规模下测试,CO-LMLM在困惑度和事实精度上均优于先前的LMLMs和普通LLMs。

英文摘要

Limited memory language models (LMLMs) externalize factual knowledge during pretraining to a knowledge base (KB), rather than memorizing it in their weights. During generation, the model then fetches knowledge from the KB as needed. This recently introduced paradigm provides multiple advantages, including knowledge control capabilities that remain beyond conventional LLMs. We propose continuous-query LMLM (CO-LMLM), where the KB pairs continuous keys with textual knowledge values, a significant departure from prior reliance on relational KB and queries. CO-LMLM generates flexible vector queries at minimal cost, while still integrating human-readable and attributable retrieved knowledge into its generation. We pair this design with an annotation pipeline that tags free-form factual spans in arbitrary text, removing prior work's restriction to Wikipedia. Across pretraining on Wikipedia and FineWeb-Edu and at multiple model scales, CO-LMLM outperforms prior LMLMs and vanilla LLMs in both perplexity and factual precision. At 360M scale, this includes lower perplexity than models pretrained on 40x more data, and SimpleQA-verified performance that is in line with gpt-4o-mini and higher than Claude Sonnet 4.5.

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2607.07706 2026-07-09 cs.LG 新提交

The Key to Going Linear: Analysis-Driven Transformer Linearization

走向线性的关键:分析驱动的Transformer线性化

Anna Kuzina, Paul N. Whatmough, Babak Ehteshami Bejnordi

发表机构 * Qualcomm AI Research(高通人工智能研究中心)

AI总结 研究针对因果自注意力二次成本限制长上下文Transformer推理的问题,通过分析状态更新设计,发现softmax原理及近似误差源,引入结构干预,在多模型上扩展线性化方法,提升性能并匹配复杂缓存框架的长上下文检索。

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AI中文摘要

因果自注意力的二次成本严重限制了长上下文Transformer推理。虽然存在众多事后线性化管道,但难以确定哪些组件能保持模型质量。本研究在严格的冻结主干机制下分离状态更新设计的影响。表明softmax依赖于与键相关的秩-1正交投影,解释了delta风格网络优于纯门控累加的原因。识别出近似误差的潜在来源并引入结构干预,包括下沉令牌、短卷积和固定预算缓存路由,缩小了剩余差距。在高达32B参数的LLaMA和Qwen模型上扩展此线性化方法,在MMLU上优于先前的事后基线,并与复杂自适应缓存框架的长上下文检索相匹配。

英文摘要

The quadratic cost of causal self-attention severely bottlenecks long-context transformer inference. While numerous post hoc linearization pipelines exist, it is difficult to identify which components preserve model quality. This work isolates the effect of state update design in a strict frozen-backbone regime. We show that softmax relies on key-dependent, rank-1 orthogonal projections, elucidating why delta-style networks outperform purely gated accumulation. We identify a potential source of approximation errors and introduce structural interventions, specifically sink tokens, short convolutions, and fixed-budget cache routing, which reduces the remaining gap. We scale this linearization approach across LLaMA and Qwen models up to 32B parameters, outperforming prior post hoc baselines on MMLU and matching the long-context retrieval of complex adaptive-caching frameworks.

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2607.07702 2026-07-09 cs.CL 新提交

From Noisy Traces to Root Causes: Structural Trajectory Analysis and Causal Extraction for Agent Optimization

从噪声轨迹到根本原因:用于智能体优化的结构轨迹分析和因果提取

Ying Chang, Jiahang Xu, Xuan Feng, Chenyuan Yang, Peng Cheng, Yuqing Yang

发表机构 * Microsoft Research(微软研究院) University of Chinese Academy of Sciences(中国科学院大学)

AI总结 研究针对长期智能体优化中实际执行轨迹难直接用于优化的问题,提出STRACE框架。该框架在批次和轨迹内分别进行故障模式挖掘与因果定位,去除冗余和非因果步骤,实验表明其显著优于基线,提升了智能体优化成功率。

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AI中文摘要

长期智能体的优化越来越依赖基于反射的机制,其中大语言模型(LLM)作为优化器来诊断智能体故障并改进智能体策略。然而,实际执行轨迹难以直接用于优化:大型轨迹集合往往冗余且异构,导致优化效率低下且容易过度拟合低价值故障;同时,每个单独的轨迹也包含许多无关步骤,而诸如截断或滑动窗口等简单的上下文缩减方法可能会丢弃因果重要证据并产生误导性的优化信号。为了解决这一困境,我们引入了STRACE(结构轨迹分析和因果提取),这是一个构建高信噪比优化上下文以进行更精确和有效优化的框架。在批次级别,STRACE挖掘故障模式以过滤冗余轨迹并保留代表性故障;在每个选定的轨迹内,它在文本依赖图上执行因果定位,以去除非因果步骤并识别真正的优化根本原因模块。实证结果表明,STRACE明显优于标准上下文过滤基线。值得注意的是,在具有挑战性的形式验证任务(VeruSAGE-Bench)上,它成功地优化了人类专家设计的智能体,成功率提高了1.4倍(从42.5%提高到58.5%)。代码可在该https URL获取。

英文摘要

The optimization of long-horizon agents increasingly relies on reflection-based mechanisms, where a large language model (LLM) acts as an optimizer to diagnose agent failures and improve agent policies. However, real execution traces are difficult to use directly for optimization: large trace collections are often redundant and heterogeneous, making optimization inefficient and prone to overfitting to low-value failures; meanwhile, each individual trajectory also contains many irrelevant steps, while naive context reduction methods such as truncation or sliding windows can discard causally important evidence and produce misleading optimization signals. To resolve this dilemma, we introduce STRACE (Structural TRajectory Analysis and Causal Extraction), a framework that constructs high signal-noise optimization contexts for more precise and effective optimization. At the batch level, STRACE mines failure patterns to filter redundant traces and retain representative failures; within each selected trace, it performs causal localization over a textual dependency graph to remove non-causal steps and identify the true root-cause module for optimization. Empirical results demonstrate that STRACE significantly outperforms standard context-filtering baselines. Notably, on a challenging formal verification task (VeruSAGE-Bench), it successfully optimizes human-expert designed agents, delivering $1.4\times$ success-rate improvement (42.5% to 58.5%). The code is available at this https URL.

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2607.07695 2026-07-09 cs.AI cs.GT cs.MA 新提交

Institutional Red-Teaming: Deployment Rules, Not Just Models, Causally Shape Multi-Agent AI Safety

机构红队测试:部署规则而非模型,因果性地塑造多智能体人工智能安全

Yujiao Chen

发表机构 * Massachusetts Institute of Technology(麻省理工学院)

AI总结 研究多智能体人工智能安全中部署规则的影响,提出机构红队测试方法,通过IABench-CA实例化,发现规则改变集体安全、无安全默认规则、身份显著性是机制,还打包成安全案例工作流程认证规则区域并明确风险义务。

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AI中文摘要

我们引入了机构红队测试,这是一种用于测试多智能体人工智能中部署规则的评估方法:保持智能体、目标和任务状态不变,仅改变一条规则,并将集体行为的变化归因于该规则。我们在IABench-CA中实例化了该方法,这是一个涵盖228个情境、五条规范规则和七个模型群体(33924个博弈)的后果分配基准,具有规范合作参考和自动标注的推理轨迹。有三个发现:(1)部署规则因果性地改变集体安全性:仅改变后果规则会使每个群体中的平均死亡率变动22至58个百分点。(2)不存在安全默认规则,但目标定位风险是普遍存在的:最安全的规则、最不安全的规则以及发生率效应的方向在不同群体中各不相同,然而回归身份定位在任何情境和群体中都绝非绝对最安全,在各地30%至87%的博弈中会消除资源最少的智能体,并且相对于所有七个群体的合作参考而言是选择不安全的。(3)身份显著性是其机制:对最易被利用的群体(gpt-5.1)进行一次性匿名化消融显示,仅仅在规则文本中提及损失承担者会在相同收益下将目标消除率从22%提高到81%;在重复博弈中,匿名化只会延迟目标定位,因为智能体会从观察到的消除情况中重新推断隐藏规则。我们将该方法打包成一个安全案例工作流程,为每个部署情境和群体认证一个临时规则区域$\Phi(c,P)$,并明确剩余风险和监测义务。

英文摘要

We introduce institutional red-teaming, an evaluation methodology for testing deployment rules in multi-agent AI: hold the agents, objectives, and task state fixed, vary only one rule, and attribute the resulting change in collective behavior to that rule. We instantiate the methodology in IABench-CA, a consequence-allocation benchmark spanning 228 contexts, five canonical rules, and seven model populations (33,924 games), with a normative cooperative reference and auto-labelled reasoning traces. Three findings emerge. (1) Deployment rules causally alter collective safety: changing only the consequence rule moves mean fatality by 22 to 58 percentage points within every population. (2) There is no safe default, but the targeting hazard is universal: the safest rule, the least-safe rule, and even the direction of the incidence effect vary across populations, yet regressive identity-targeting is never decisively safest in any context for any population, eliminates the least-resourced agent in 30-87% of games everywhere, and is selection-unsafe relative to the cooperative reference for all seven populations. (3) Identity salience is the mechanism: a one-shot anonymization ablation on the most exploitation-prone population (gpt-5.1) shows that merely naming the loss bearer in the rule text drives targeted elimination from 22% to 81% at identical payoffs; under repeated play, anonymization only delays the targeting, as agents re-infer the hidden rule from observed eliminations. We package the methodology as a safety-case workflow that certifies a provisional rule region $\Phi(c,P)$ per deployment context and population, with explicit residual risks and monitoring obligations.

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2607.07693 2026-07-09 cs.LG cs.AI cs.CV 新提交

Selective Timestep Weighting and Advantage-Based Replay for Sample-Efficient Diffusion RLHF

用于样本高效扩散强化学习从人类反馈中学习的选择性时间步加权和基于优势的重放

Eric Zhu, Abhinav Shrivastava, Soumik Mukhopadhyay

发表机构 * Carnegie Mellon University(卡内基梅隆大学) University of Maryland, College Park(马里兰大学帕克分校)

AI总结 研究如何提高扩散模型中强化学习从人类反馈的效率,提出选择性时间步加权和基于优势的重放两种互补策略,通过强调信息丰富的时间步和轨迹优化,提升反馈效率,样本效率比基线提高6倍。

Comments 19 pages, 18 figures, 4 tables. Submission under review. A shorter, non-archival 4-page abstract version of this work was accepted to CVPR 2026 Workshops (GCV, CVEU)

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AI中文摘要

强化学习从人类反馈(RLHF)已成为使生成模型与人类偏好对齐的强大范式。然而,将RLHF应用于扩散模型在反馈效率方面仍然很低,现有方法通常需要大量人类或奖励模型评估。本文提出两种互补策略,在保持对未见提示的泛化能力的同时大幅提高扩散RLHF的反馈效率。关键观察是扩散轨迹中的奖励信息分布不均。首先引入时间步加权方案,在策略优化期间重新加权去噪步骤,并从理论和经验上进行分析。其次引入重放机制,优先考虑信息丰富的轨迹。这些策略显著提高了扩散RLHF的反馈效率,在相同超参数设置下,样本效率比广泛使用的基线提高了6倍。

英文摘要

Reinforcement learning from human feedback (RLHF) has emerged as a powerful paradigm for aligning generative models with human preferences. However, applying RLHF to diffusion models remains highly feedback inefficient, as existing approaches typically require large amounts of human or reward model evaluations. This limitation reduces the practicality of diffusion RLHF in realworld settings where feedback is the primary bottleneck. In this paper, we propose two complementary strategies that substantially improve the feedback efficiency of diffusion RLHF while preserving generalization to unseen prompts. Our key observation is that reward information in diffusion trajectories is unevenly distributed: not all denoising timesteps or trajectories contribute equally to learning from a reward signal. By emphasizing informative timesteps and trajectories during optimization, we obtain more effective gradient updates. First, we introduce a per-timestep weighting scheme that reweights denoising steps during policy optimization. We theoretically connect this weighting to the optimal convergence properties of proximal policy optimization (PPO) and approximate the resulting weighting trend empirically. Second, we introduce a replay mechanism that prioritizes informative trajectories, enabling the model to reuse past samples instead of repeatedly querying new rewards. Together, these strategies significantly improve the feedback efficiency of diffusion RLHF. Under identical hyperparameter settings, our approach achieves up to a 6$\times$ improvement in sample efficiency compared to widely used diffusion RLHF baselines.

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2607.07690 2026-07-09 cs.LG cs.AI cs.CL 新提交

Agon: Competitive Cross-Model RL with Implicit Rival Grading of Reasoning

Agon:具有隐式推理对手评分的竞争性跨模型强化学习

Vladislav Beliaev

发表机构 * Independent Researcher(独立研究者)

AI总结 研究针对可验证奖励强化学习只评最终答案的问题,提出Agon方法,让两个竞争模型相互评分,通过轮流扮演角色隐式判断推理,在难题上提升了模型表现,且该排序在多种场景和模型家族中可复制。

Comments 15 pages, 7 figures, 8 tables

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AI中文摘要

可验证奖励的强化学习(如GRPO)是当今推理模型的核心,但它只对最终答案进行评分。在难题上,这会训练模型写得更多而非思考得更好,因为推理过程本身未被评分且不存在好的思考的标签。我们引入Agon,让两个竞争模型相互成为对方的评分者。两者尝试相同问题,轮流扮演角色,一个起草解决方案,另一个在解决问题时阅读并根据超越对方而获得奖励。为获胜,模型必须超越看过其工作的对手,所以在训练中推理被隐式判断,无需过程标签和奖励模型。由于两个模型都被优化,每个都面临逐渐更强的对手,这是单模型强化学习无法提供的。两者只需强度相当且行为不同。在推理时,按训练方式部署,即一个模型起草,另一个阅读后回答。在DeepMath与Qwen3的难题拆分上,这使GRPO的pass@1翻倍,大致是未训练的混合智能体在相同基础上增益的八倍。这种排序在竞争编程代码和跨模型家族(Qwen3.5、Gemma 4)中都能复制。目前模型通过文本交流;下一步是让它们在潜在空间中共同推理。

英文摘要

Reinforcement learning from verifiable rewards (e.g. GRPO) is the engine behind today's reasoning models, yet it grades only the final answer. On hard problems this trains models to write more rather than to think better, since the trace itself is never graded and no label for good thinking exists. We introduce Agon, which makes two competing models each other's graders. Both attempt the same problem; in alternating roles, one drafts a solution and the other reads it while solving, and each is rewarded for out-solving the other. To win, a model must out-reason a rival that has seen its work, so reasoning is judged implicitly during training, with no process labels and no reward model. Because both models are optimized, each faces a progressively stronger rival, which single-model RL cannot provide. The two need only be comparably strong and behaviorally different. At inference the pair deploys as it trains, a two-stage cascade in which one model drafts and the other answers after reading the draft. On the hard split of DeepMath with Qwen3, this doubles GRPO's pass@1, roughly eight times the gain of an untrained Mixture-of-Agents pass over the same base. The ordering replicates on competitive-programming code and across model families (Qwen3.5, Gemma 4). For now the models talk in text; the next step is to let them reason together in latent space.

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2607.07683 2026-07-09 cs.LG 新提交

ECGLight: Compute-Light Framework For Paper ECG Digitization and Myocardial Infarction Screening

ECGLight:用于纸质心电图数字化和心肌梗死筛查的轻计算框架

Shreyasvi Natraj, Cyrus Achtari, Felice Gragnano, Andrea Milzi, Marco Valgimigli, Diego Paez-Granados

发表机构 * ETH Zürich(苏黎世联邦理工学院) Swiss Paraplegic Research(瑞士截瘫研究中心) University of Campania “Luigi Vanvitelli”(坎帕尼亚“路易吉·万维泰利”大学) University of Italian Switzerland, Cardiocentro Ticino Institute(意大利瑞士大学提契诺心脏中心研究所)

AI总结 针对偏远诊所因资源限制无法利用AI分析纸质心电图的问题,提出端到端轻量级设备端数字化到诊断管道,能将纸质心电图转换为校准信号并筛查病变,经数据集验证,准确率高且运行快,可普及纸质记录并提供决策支持。

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AI中文摘要

心电图(ECG)是诊断心血管疾病最常用的测试之一。然而,由于连接性和计算能力有限,一些偏远诊所仍使用纸质ECG打印件进行分析。因此,偏远地区获取的大量物理ECG无法通过当代基于人工智能(AI)的决策支持来访问,因为它们需要高计算资源或强大的高速互联网连接。这导致急性冠状动脉闭塞(ACS)等情况被忽视,再灌注治疗延迟。虽然先前的工作分别处理了数字化和诊断,并为它们使用了先进的AI模型,但仍然缺乏一个轻计算的设备端框架,该框架可以高保真地重建纸质ECG,同时准确支持多个临床相关终点。我们通过一个端到端的轻量级设备端数字化到诊断管道来满足这一需求,该管道将智能手机拍摄的纸质ECG照片或扫描转换为校准的12导联信号,并筛查心肌梗死(MI)病变,使用SHapley Additive exPlanations(SHAP)来支持可解释性。在PTB-XL数据集中的21,799份ECG上进行训练和评估,并在医院获取的ECG-Matrix数据集上进一步验证,完整系统仅使用CPU资源时,每份ECG的运行时间<30秒,在PTB-XL上进行MI检测的准确率为95.51%(F1 = 0.9519),在ECG-Matrix上进行OMI检测的准确率为88.89%(F1 = 0.8862)。这项工作表明,传统的纸质记录可以在世界任何地方可靠地普及,在数字ECG导出、连接性或高端计算不可用时提供可扩展的决策支持。

英文摘要

Electrocardiography (ECG) is one of the most widely used tests for diagnosing cardiovascular disease. Yet several remote clinics still utilize paper ECG printouts for their analysis due to limited connectivity and computational capacity. As a result, vast numbers of physical ECGs obtained in remote areas still remain incapable of being accessed by contemporary artificial-intelligence (AI)-based decision support as they require high computational resources or strong high-speed internet connectivity. This causes several cases where conditions like acute coronary occlusion (ACS) is overlooked and reperfusion therapy delayed. Although prior work has tackled digitization and diagnosis separately, and utilized advanced AI models for them, there still remains a lack of a compute-light, on-device framework that reconstructs paper ECGs at high fidelity, while accurately supporting multiple clinically relevant endpoints. We address this need with an end-to-end lightweight on-device digitization-to-diagnosis pipeline that converts a smartphone photo or scan of a paper ECG into a calibrated 12-lead signal and screens for Myocardial Infarction (MI) pathologies, with SHapley Additive exPlanations (SHAP) to support interpretability. Trained and evaluated on 21,799 ECGs from the PTB-XL dataset and further validated on hospital-acquired ECG-Matrix dataset, the complete system runs in <30 s per ECG on CPU-only resources, achieving 95.51% accuracy (F1 = 0.9519) for MI detection on PTB-XL and 88.89% accuracy (F1 = 0.8862) for OMI detection on ECG-Matrix. This work showcases that legacy paper records can be reliably democratized in any part of the world, providing a scalable decision support when digital ECG export, connectivity, or high-end compute are unavailable

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2607.07678 2026-07-09 cs.LG 新提交

How Data Shapes RoPE Frequency Usage: From Positional Scale Matching to Length Generalization

数据如何塑造RoPE频率使用:从位置尺度匹配到长度泛化

Xinyi Wu, Siyuan Liu, Ali Jadbabaie

发表机构 * MIT IDSS(麻省理工学院信息系统与决策科学实验室) IIIS, Tsinghua University(清华大学交叉信息研究院)

AI总结 研究RoPE频率使用不均匀的原因,提出数据诱导依赖决定频率使用,最佳频率与1/W成比例,该原则解释了相关观察,还将频率选择与长度泛化联系,表明自然语言有自相似性,长上下文泛化取决于两种尺度匹配。

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AI中文摘要

旋转位置嵌入(RoPE)为Transformer提供了固定的位置频率网格,但训练模型对这些频率的使用极不均匀。我们研究了决定这种频率使用的因素,并提出了一种以数据为中心的解释:RoPE频率是为了匹配训练数据的相对距离结构而选择的。将每个频率视为一个位置透镜,我们形式化了场分辨率的权衡,并表明,对于宽度为W的数据诱导依赖配置文件,最佳频率与1/W成比例。这种频率匹配原则解释了对合成数据和基于文本的数据的控制观察结果,并表明语言模型中观察到的中低频带源于自然语言的多尺度依赖结构。我们进一步将频率选择与基于位置插值的长度泛化联系起来:降低频率会扩大有效场,同时降低分辨率。当更长上下文的依赖关系是训练期间观察到的依赖关系的近似扩张时,这会有所帮助,但当相关依赖关系不随上下文长度缩放时,可能会失败。从经验上看,我们表明自然语言在位置尺度上表现出近似的自相似性,这解释了为什么测试时频率缩放可以支持长上下文泛化。总的来说,我们的结果确定了RoPE频率使用出现背后的数据驱动机制,并表明长上下文泛化取决于两种形式的尺度匹配:学习频率与训练时依赖关系之间的匹配,以及频率缩放与这些依赖关系如何扩展到更长上下文之间的匹配。

英文摘要

Rotary Position Embeddings (RoPE) provide transformers with a fixed grid of positional frequencies, yet trained models use these frequencies highly non-uniformly. We study what determines this frequency usage and propose a data-centered explanation: RoPE frequencies are selected to match the relative-distance structure of the training data. Viewing each frequency as a positional lens, we formalize a field-resolution tradeoff and show that, for a data-induced dependency profile of width $W$, the optimal frequency scales as $1/W$. This frequency-matching principle explains controlled observations on synthetic and text-based data, and suggests that the mid-low frequency bands observed in language models arise from the multi-scale dependency structure of natural language. We further connect frequency selection to position-interpolation-based length generalization: scaling frequencies down expands the effective field while reducing resolution. This helps when longer-context dependencies are approximate dilations of those seen during training, but can fail when relevant dependencies do not scale with context length. Empirically, we show that natural language exhibits approximate self-similarity across positional scales, explaining why test-time frequency scaling can support long-context generalization. Overall, our results identify a data-driven mechanism behind emergent RoPE frequency usage and show that long-context generalization depends on two forms of scale matching: between learned frequencies and training-time dependencies, and between frequency scaling and how those dependencies extend to longer contexts.

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2607.07676 2026-07-09 cs.AI 新提交

SkillCenter: A Large-Scale Source-Grounded Skill Library for Autonomous AI Agents

SkillCenter:用于自主人工智能代理的大规模源基础技能库

Tianming Sha, Yue Zhao, Lichao Sun, Yushun Dong

发表机构 * Stony Brook University(纽约州立大学石溪分校) University of Southern California(南加州大学) Lehigh University(里海大学) Florida State University(佛罗里达州立大学)

AI总结 研究针对自主AI代理缺乏扎实操作知识的问题,构建SkillCenter技能库,通过多源获取等端到端框架,集成大量源基础和社区技能,实现技能可追溯,以保障代理输出的正确性、安全性和可维护性。

Comments 44 pages, 5 figures. Code: this https URL (https://github.com/LabRAI/SkillCenter); Data: this https URL (https://huggingface.co/datasets/Tommysha/skillcenter-bundles)

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AI中文摘要

自主人工智能代理能够在有限的人工审查下执行复杂任务,但往往缺乏扎实的操作知识,难以使输出不仅可执行,而且正确、安全和可维护。我们引入了SkillCenter,据我们所知,它是最大的开放技能库,共有216,938个结构化技能,涵盖24个领域包。通过SkillGate过滤的管道从同行评审期刊、ArXiv和24000多个技术来源贡献了114,565个源基础技能,并与来自GitHub和ClawHub市场的102,373个社区技能集成。我们展示了构建管道子集的端到端框架,包括多源获取、基于大语言模型的质量门控(SkillGate)、模板驱动生成、迭代源基础和质量控制发布。源基础是一种可追溯性保证,每个保留的声明都映射到其来源中的精确引用。所有技能都作为可离线搜索的SQLite FTS5包提供。

英文摘要

Autonomous AI agents can execute complex tasks with limited human review, yet they often lack the grounded operational knowledge to make their outputs not just executable but correct, secure, and maintainable. We introduce SkillCenter, to our knowledge the largest open skill library for agents by total count: 216,938 structured skills across 24 domain bundles. A SkillGate-filtered pipeline contributes 114,565 source-grounded skills from peer-reviewed journals, ArXiv, and over 24,000 technical sources, integrated with 102,373 community skills from GitHub and the ClawHub marketplace. We present the end-to-end framework that builds the pipeline subset: multi-source acquisition, an LLM-based quality gate (SkillGate), template-driven generation, iterative source-grounding, and quality-controlled publishing. Source grounding is a traceability guarantee: each retained claim maps to an exact quotation in its source. All skills ship as offline-searchable SQLite FTS5 bundles.

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2607.07675 2026-07-09 cs.CV 新提交

Scaling Mixture-of-Experts Video Pretraining for Embodied Intelligence

用于具身智能的缩放专家混合视频预训练

Shuailei Ma, Jiaqi Liao, Xinyang Wang, Jingjing Wang, Chaoran Feng, Zijing Hu, Chong Bao, Zichen Xi, Yuqi Gan, Weisen Wang, Yanhong Zeng, Qin Zhao, Zifan Shi, Wei Wu, Hao Ouyang, Qiuyu Wang, Shangzhan Zhang, Jiahao Shao, Yipengjing Sun, Liangxiao Hu, Lunke Pan, Nan Xue, Kecheng Zheng, Yinghao Xu, Xing Zhu, Yujun Shen, Ka Leong Cheng

发表机构 * Robbyant(蚂蚁灵波)

AI总结 针对视频生成模型领域不匹配问题,提出LingBot-Video,采用MoE架构、构建数据剖析引擎、开发多维奖励系统进行视频预训练,验证了其性能和效率,贡献了首个大规模开源MoE视频基础模型。

Comments Project page: this https URL (https://technology.robbyant.com/lingbot-video)

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AI中文摘要

尽管视频生成模型在机器人控制方面有前景,但因专注内容创作存在领域不匹配问题,如更注重视觉保真度和创造力而非计算效率和物理真实性。本文提出LingBot-Video,一种基于DiT专为具身智能定制的视频预训练范式。架构上采用专家混合(MoE)而非密集框架,在建模能力和推理效率间更好权衡并从零扩展。数据上构建数据剖析引擎,用大量机器人相关镜头扩充标准网络视频。训练上开发多维奖励系统强化物理合理性和任务完成度的对齐。综合评估验证了其作为视频基础模型的性能和效率。

英文摘要

Despite the recent promise in robot control, video generative models suffer from a domain mismatch due to their primary focus on content creation. For example, their design inherently prioritizes visual fidelity and creativity over computational efficiency and physical realism. In this work, we present LingBot-Video, a DiT-based video pretraining paradigm specifically tailored for embodied intelligence. From the architecture perspective, we adopt the Mixture-of-Experts (MoE), instead of dense, framework to achieve a better trade-off between modeling capacity and inference efficiency, and manage to scale it up from scratch. From the data perspective, we construct a data profiling engine that augments standard internet videos with extensive robot-oriented footage, encompassing manipulation, navigation, and egocentric perspectives, to equip the base model with an intrinsic understanding of actions and world dynamics. From the training perspective, we develop a multi-dimensional reward system to enforce the alignment regarding physical rationality and task completion, going beyond standard criteria such as aesthetics, prompt-following, and motion consistency. Comprehensive evaluations validate its performance and efficiency as a video foundation model. We contribute LingBot-Video as the inaugural large-scale, open-source MoE video foundation model to the community, in a pioneering effort to bridge digital creativity and physical actuation.

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2607.07674 2026-07-09 cs.LG cs.CL 新提交

Max Out GRPO Signal: Adaptive Trace Prefix Control for Hard Reasoning Problems

最大输出GRPO信号:针对硬推理问题的自适应轨迹前缀控制

Vladislav Beliaev

发表机构 * Independent Researcher(独立研究者)

AI总结 研究针对GRPO在硬推理问题上停滞的情况,提出AdaPrefix - GRPO方法,通过将前缀长度设为调节旋钮并转化为反馈控制器,在训练中调整问题获取解决方案比例,提升了模型在硬数学问题上的准确率并减半轨迹长度。

Comments 13 pages, 5 figures, 3 tables

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AI中文摘要

组相对策略优化(GRPO)在模型最难的问题上停滞不前:当组内没有一次展开成功时,组相对优势消失,该问题不产生梯度,浪费了我们最想从中学习的前沿示例。在参考解决方案前加上正确的前缀会提高成功率,使前缀长度成为难度的连续调节旋钮。并发方法只设置一次旋钮;AdaPrefix - GRPO将其变成一个反馈控制器:在整个训练过程中,它调整每个问题获得的解决方案的比例,使其成功率接近50%(GRPO梯度信号最大的地方),然后完全撤回帮助,这样部署的模型就能独立解决问题。在硬数学问题上,在匹配的训练FLOP下,对于0.6B模型,它使GRPO在来自训练分布的留出问题上的准确率提高了一倍多(2.1倍),在Qwen3 - 1.7B上提高了1.6倍,在AIME上提高了1.7倍,同时轨迹长度大致减半。该方法在数据准备和前缀令牌的损失掩码中实现;训练器则保持不变。模型越小,收益越大。

英文摘要

Group Relative Policy Optimization (GRPO) stalls on a model's hardest problems: when no rollout in a group succeeds, the group-relative advantages vanish and the problem contributes no gradient, wasting the frontier examples we most want to learn from. Prepending a correct prefix of a reference solution raises the success rate, making prefix length a continuous knob on difficulty. Concurrent methods set the knob once; AdaPrefix-GRPO turns it into a feedback controller: throughout training it adjusts how much of the solution each problem gets, holding its success rate near 50%, where GRPO's gradient signal is largest, then withdraws the assistance entirely, so the deployed model solves problems unaided. On hard math, at matched training FLOPs, it more than doubles GRPO's accuracy on held-out problems from the training distribution for a 0.6B model (2.1x), with 1.6x on Qwen3-1.7B and 1.7x on AIME, while roughly halving trace length. The method is implemented in data preparation plus a loss mask on prefix tokens; the trainer is otherwise stock. The smaller the model, the larger the gain.

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2607.07673 2026-07-09 cs.CV cs.LG 新提交

MedPMC: A Systematic Framework for Scaling High-Fidelity Medical Multimodal Data for Foundation Models

MedPMC:一种用于为基础模型扩展高保真医学多模态数据的系统框架

Hyunjae Kim, Dain Kim, Pan Xiao, Serina S. Applebaum, Younjoon Chung, Xuguang Ai, Yu Yin, Roy Jiang, Yuexi Du, Yawen Wei, Yiming Kong, Tuo Guo, Zhiyuan Cao, Mengmeng Du, Yuelei Fu, Yan Hu, Rui Shi, Gui Yang, Kevin W. Jin, Yuntian Liu, Yuxuan Tian, Jonathan Marquez, Zhen Chen, Sheng Zhang, Hoifung Poon, Hua Xu, Jaewoo Kang, Qingyu Chen

发表机构 * Yale University(耶鲁大学) Korea University(韩国大学) Washington University in St. Louis(圣路易斯华盛顿大学) The University of Queensland(昆士兰大学) The University of Texas Health Science Center at Houston(德克萨斯大学休斯顿健康科学中心) University of Washington(华盛顿大学) Microsoft Research(微软研究院)

AI总结 研究针对医学多模态基础模型受高质量临床数据限制问题,提出MedPMC框架,将文献转化为高保真基础设施。经实验,该框架整理大量图像-文本对,在多方面评估表现出色,训练模型在多基准测试和临床场景中效果显著,还公开相关资源。

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AI中文摘要

医学本质上是多模态的,需要临床医生综合不同数据流中的信息。然而,多模态基础模型的发展受到大规模、高质量临床数据获取有限的限制。虽然PubMed Central(PMC)提供了专家撰写的图像-文本数据的补充来源,但现有的源自PMC的资源在保真度、可重复性和临床验证方面仍然有限。我们引入了MedPMC,这是一个自动化、可不断更新的框架,它将许可宽松的文献转化为用于医学多模态模型的高保真基础设施。应用于610万篇PMC文章时,MedPMC整理了1100万个医学图像-文本对。组件评估显示,在初始筛选(F1 = 93.2)、多面板图形检测(F1 = 96.5)、图形分离(mAP = 89.8)、标题分离与对齐(F1 = 81.4;ROUGE-L = 85.3)以及医学图形分类(F1 = 96.5)方面表现出色。由五名注释者(三名有医学培训)进行的人工审查发现,MedPMC图像中有95.3%与医学相关,而在先前源自PMC的数据集中这一比例为19.7%。在涵盖11个专业的26个基准测试中,一个经过MedPMC训练的CLIP风格模型,尽管使用的图像-文本对比最强的架构匹配生物医学CLIP基线少不到一半,但平均零样本AUC提高了7.1个百分点。作为多模态大语言模型中的视觉编码器,它在两个基准测试中分别将医学视觉问答提高了1.9和16.9个百分点。在10524张耶鲁纽黑文健康系统皮肤科照片中,它将形态学-to-图像检索召回率@5提高了11.7个百分点。这些发现表明,高保真文献整理可在基准测试和临床环境中强化医学多模态基础模型。我们公开发布了该框架、语料库、基准测试和预训练模型。

英文摘要

Medicine is inherently multimodal, requiring clinicians to synthesize information across diverse data streams. Yet the development of multimodal foundation models is constrained by limited access to large-scale, high-quality clinical data. Although PubMed Central (PMC) offers a complementary source of expert-authored image-text data, existing PMC-derived resources remain limited in fidelity, reproducibility, and clinical validation. We introduce MedPMC, an automated, continuously updatable framework that transforms permissively licensed literature into high-fidelity infrastructure for medical multimodal models. Applied to 6.1 million PMC articles, MedPMC curated 11 million medical image-text pairs. Component evaluations showed strong performance for initial screening (F1 = 93.2), multi-panel figure detection (F1 = 96.5), figure separation (mAP = 89.8), caption separation and alignment (F1 = 81.4; ROUGE-L = 85.3), and medical figure classification (F1 = 96.5). Manual review by five annotators, three with medical training, found 95.3% of MedPMC images medically relevant, versus 19.7% in a prior PMC-derived dataset. Across 26 benchmarks spanning 11 specialties, a MedPMC-trained CLIP-style model improved average zero-shot AUC by 7.1 percentage points over the strongest architecture-matched biomedical CLIP baseline despite using fewer than half as many image-text pairs. As the vision encoder in a multimodal large language model, it improved medical visual question-answering by 1.9 and 16.9 percentage points across two benchmarks. In 10,524 Yale New Haven Health System dermatology photographs, it improved morphology-to-image retrieval Recall@5 by 11.7 percentage points. These findings show that high-fidelity literature curation strengthens medical multimodal foundation models across benchmark and clinical settings. We publicly release the framework, corpus, benchmarks, and pretrained models.

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2607.07671 2026-07-09 cs.LG 新提交

PeTeR: Post-Training Robustification of Probabilistic Circuits

PeTeR:概率电路的训练后鲁棒化

Adrian Ciotinga, Yeming Dai, YooJung Choi

发表机构 * School of Computing and Augmented Intelligence Arizona State University(计算与增强智能学院亚利桑那州立大学)

AI总结 研究针对概率电路学习易过拟合和泛化能力弱的问题,提出PeTeR这一无需数据的训练后框架,可使预训练概率电路抵御分布变化,实证评估显示该框架能有效增强模型对随机和对抗性扰动的鲁棒性,性能良好。

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AI中文摘要

概率电路(PCs)能对复杂联合分布建模,并支持对许多推理查询进行精确高效计算。然而,标准的基于似然的PC学习在面对数据噪声、小样本量或分布变化时易过拟合且泛化能力弱。可通过分布鲁棒优化缓解,但当前方法限于在此框架下从头训练模型。我们提出PeTeR,一个无需数据的训练后框架,能使预训练PCs抵御分布变化而无需从头再训练。在多个密度估计基准上的实证评估表明,PeTeR能有效增强基线模型抵御随机和对抗性扰动的能力,性能优于或可媲美依赖数据的鲁棒学习基线。

英文摘要

Probabilistic circuits (PCs) can model complex joint distributions while supporting exact and efficient computation of many inference queries. However, standard likelihood-based PC learning is vulnerable to overfitting and fragile generalization when confronted with data noise, small sample sizes, or distribution shifts. This can be mitigated using distributionally-robust optimization which consider worst-case distributions within a Wasserstein ball of the empirical distribution, but current methods are limited to training a model from scratch in this framework. Instead, we propose PeTeR: a novel, data-free post-training framework designed to robustify pre-trained PCs against distribution shifts without retraining from scratch. Empirical evaluations across multiple density estimation benchmarks demonstrate that PeTeR effectively robustifies baseline models against both random and adversarial perturbations, achieving competitive or superior performance to data-dependent robust learning baselines.

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2607.07670 2026-07-09 cs.CL cs.LG 新提交

Does Bielik Know What It Doesn't Know? Activation Dispersion Separates Entity Familiarity from Factual Reliability Across Model Scale

比埃利克模型知道它所不知道的吗?激活离散度在模型规模上区分实体熟悉度与事实可靠性

Grzegorz Brzezinka

发表机构 * Prosit AS(Prosit公司)

AI总结 研究大语言模型中实体熟悉度与事实可靠性,通过两种无监督离散度度量及有监督线性探测,在比埃利克模型上区分不同实体,发现激活离散度信号在模型规模上与事实可靠性表现不同,已知实体中区分正误更难,模型几乎不弃权。

Comments 23 pages, 6 figures and 7 tables

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AI中文摘要

大语言模型对从未见过的实体产生的幻觉最多。我们研究在生成单个答案令牌之前,模型的激活是否会暴露实体熟悉度,以及该信号是否能预测答案的事实可靠性。在四个波兰比埃利克模型(参数为15亿 - 110亿)上,针对四个实体领域(运动员、城市、作家、音乐家)进行研究,每个领域有42个知名、42个 obscure - but - real以及42个虚构实体,通过单句问题进行询问(每个模型504个提示)。两种无监督的、单次前向传播的离散度度量方法,即逆参与率和谱熵,在所有领域和规模上以0.95 - 1.00的AUROC区分已知实体和虚构实体;一种有监督的线性探测达到0.99 - 1.00。该信号在不同实体类型间可传递,且在15亿参数模型时已达上限,而行为事实可靠性随模型规模急剧提升。在已知实体中区分正确与幻觉答案更难。尽管模型有内部意识,但几乎从不弃权。实体熟悉度和事实可靠性是不同规模曲线上的不同现象。

英文摘要

Large language models hallucinate most about entities they have never seen. We ask whether a model's activations betray entity familiarity before a single answer token is generated, and whether that signal predicts the factual reliability of the answers. On four Polish Bielik models (1.5B-11B parameters), we probe four entity domains (athletes, cities, writers, musicians), each with 42 well-known, 42 obscure-but-real, and 42 fabricated entities addressed by a one-sentence question (504 prompts per model). Two unsupervised, single-forward-pass dispersion measures over post-SwiGLU MLP activations, inverse participation ratio and spectral entropy, separate known from fabricated entities at AUROC 0.95-1.00 across all domains and scales; a supervised linear probe reaches 0.99-1.00. Both clear selection-aware permutation floors of about 0.70-0.74 (empirical p<=1e-3), survive held-out layer selection (0.93-0.99), and persist on real names (known vs. obscure-but-real: 0.96-1.00). The signal transfers across entity types (mean off-diagonal AUROC 0.92-0.99); a matched-template counterfactual shows the only large drops are template-caused, not entity-type effects, and the signal is diffuse across heads. This representational signal is already at ceiling at 1.5B, whereas behavioral factual reliability scales sharply: 0, 2, 10, and 19 of 42 known athletes are answered fully correctly by the 1.5B, 4.5B, 7B, and 11B models under a strict judge. Within known entities, separating correct from hallucinated answers is much harder (probe 0.93; dispersion no better than a first-token-entropy baseline). A five-sample semantic-entropy baseline reaches only 0.71-0.83 at 5x the inference cost. Despite this internal awareness, the models almost never abstain: an audit of 2,520 answers finds 2 refusals and 1 hedge. Entity familiarity and factual reliability are distinct phenomena on different scaling curves.

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2607.07669 2026-07-09 cs.CL cs.AI 新提交

DiaLLM: An Investigation into the Robustness-Generation Gap in English Dialect Adaptation

DiaLLM:英语方言适应中稳健性-生成差距的研究

Jordan Painter, Dipankar Srirag, Adarsh Kappiyath, Diptesh Kanojia, Aditya Joshi, Lu Yin

发表机构 * Institute for People-Centered AI, University of Surrey(萨里大学以人为本人工智能研究所) University of New South Wales(新南威尔士大学)

AI总结 研究英语方言适应中稳健性与生成的差距,通过DiaLLM持续预训练并结合多种策略对比不同英语变体。发现二者分离,特定变体适应产出受青睐但优化奖励方法未获评估者偏爱,缩小差距需丰富奖励设计和投入方言资源。

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AI中文摘要

大语言模型越来越能理解方言英语,但仍只能生成标准的、偏向美式的英语,方言生成这一难题基本未得到解决。我们引入了DiaLLM,它在国际英语语料库上对三个开放权重语言模型家族进行持续预训练,并应用隐式和显式的训练后范式,每种范式结合三种模型对齐策略,首次对澳大利亚、印度和英国北部英语的这些组件进行了对照比较。结果表明方言稳健性和生成是分离的:基准由持续预训练和监督微调塑造,而对齐以基准未捕捉的方式明显重塑生成。显式的针对特定变体的适应产生了被可靠识别为方言且比广泛对齐更受青睐的输出,但最积极优化方言奖励的方法并不受人类评估者青睐。独立的语言分析证实了这种奖励-质量差距。没有单一的对齐方法占主导,缩小差距需要更丰富的奖励设计和对方言资源的持续投入。我们发布了所有代码、检查点和偏好数据集。

英文摘要

Large language models increasingly \emph{understand} dialectal English, yet still \emph{produce} only standard, US-leaning English, leaving dialectal generation, the harder half of the problem, largely unaddressed. We introduce \textbf{DiaLLM}, which continually pretrains three open-weight language model families on the International Corpus of English and applies implicit and explicit post-training paradigms, each combined with three model alignment strategies, giving the first controlled comparison of these components across Australian, Indian, and Northern British English. Our results reveal that dialectal robustness and generation are \emph{dissociated}: benchmarks are shaped by continual pretraining and SFT, while alignment visibly reshapes generation in ways benchmarks do not capture. Explicit variety-targeted adaptation produces output reliably recognised as dialectal and preferred over broad alignment, yet the method that most aggressively optimises the dialectal reward is not preferred by human evaluators. Independent linguistic analysis corroborates this reward-quality gap, most clearly on two of the three families. No single alignment method dominates, and closing the gap will require richer reward designs and continued investment in dialectal resources. We release all code, checkpoints, and preference datasets.

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2607.07663 2026-07-09 cs.AI 新提交

Recursive Self-Improvement in AI: From Bounded Self-Refinement to Autonomous Research Loops

人工智能中的递归自我改进:从有界自我优化到自主研究循环

Mingguang Chen, Licheng Wang, Bo Qu

发表机构 * University of California, Riverside (UCR)(加州大学河滨分校) AlphaAvatar(阿尔法阿凡达) Illinois Institute of Technology (IIT)(伊利诺伊理工学院)

AI总结 研究人工智能系统自身改进,通过对1250篇论文调查区分有界自我优化与开放式递归自我改进(RSI),考察评估器设计空间并排序信号,发现自我改进强度与层次相关,失败模式源于违规,指出治理级测量是薄弱环节。

Comments 42 pages, 6 figures

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AI中文摘要

人工智能系统越来越多地参与自身改进,如修改输出、调整部署工具、利用自身生成的数据训练等,甚至开展人工智能研究本身。现有文献用的术语混淆了不同的目标。本文沿两个轴对1250篇arXiv论文(2024 - 2026年)进行了调查,区分了有界自我优化(已在工业实践中应用)和开放式递归自我改进(RSI)。RSI在各测量轴上受多种限制,其独特之处在于有专门的自我评估类别。文中考察了评估器设计空间,将信号按验证层次排序,观察到自我改进强度与层次相关,其失败模式源于违反层次规则,且“研究方向设定”瓶颈位于层次顶端。还将技术文献与RSI极限理论及闭环带来的安全治理问题相联系,指出自我改进的治理级测量是该领域最薄弱的环节。

英文摘要

AI systems increasingly participate in their own improvement: revising their outputs, adapting their own harnesses during deployment, training on data they generate, and, increasingly, conducting AI research itself. This literature is described under a vocabulary ("self-refine," "self-reward," "self-play," "self-evolve") that conflates fundamentally different ambitions. We survey 1,250 arXiv papers (2024-2026) along two axes: what the system improves -- its behavior in deployment, its policy through training, its evaluator, or the research process itself -- and the degree of loop closure (human-in-the-loop to fully closed). The taxonomy separates bounded self-refinement -- convergent, evaluable, and already industrial practice -- from open-ended recursive self-improvement (RSI), which remains bounded by grounding requirements, collapse dynamics, and compute constraints on every measured axis. Its distinctive feature is a dedicated category for self-evaluation: every improvement loop is a claim that some signal can substitute for human judgment. We survey the evaluator design space -- judges, process reward models, verifiers, rubrics, meta-evaluation -- order the signals into a verification hierarchy from formal verifiers (strongest) to intrinsic self-assessment (weakest), and observe that demonstrated self-improvement strength tracks this hierarchy, that its failure modes (self-confirming loops, model collapse, diversity collapse) follow from its violations, and that the "research direction-setting" bottleneck keeping humans in the loop sits at the top of that hierarchy. We connect the technical literature to the theory of RSI limits and to the safety and governance questions raised by frontier-lab accounts of closing the loop, and identify governance-grade measurement of self-improvement as the field's most underpopulated niche.

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2607.07640 2026-07-09 cs.LG cs.AI 新提交

ALER-TI: Aligned Latent Embedding Retrieval for Time Series Imputation

ALER-TI:用于时间序列插补的对齐潜在嵌入检索

Xuan-Thong Truong, Trung-Kien Le, Tung Kieu, Thi-Thu Nguyen, Nhat-Hai Nguyen

发表机构 * School of Computer Science, Hanoi University of Science and Technology(河内科学技术大学计算机科学学院) Department of Computer Science, Aalborg University(奥尔堡大学计算机科学系)

AI总结 针对时间序列插补问题,提出检索增强框架ALER-TI,利用历史模式补充局部上下文。核心是潜在嵌入对齐,通过事后掩码减轻表示不匹配。该方法与模型无关,经实验验证能改进基线模型,增强不同插补设置下的鲁棒性。

Comments 10 pages, 2 figures, 12 tables

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AI中文摘要

深度学习显著推动了时间序列插补,但大多数现有架构主要依赖损坏输入序列中的局部时间上下文。在现实场景中这种依赖有局限性,因为时间序列常呈现非平稳动态、弱时间相关性和罕见模式,难以仅从附近观测重建。本文提出ALER-TI,一种用于时间序列插补的检索增强框架,利用历史模式补充退化的局部上下文以进行更可靠的缺失值重建。其核心是潜在嵌入对齐(LEA),通过在潜在空间中应用事后掩码来减轻损坏查询与完整历史候选之间的表示不匹配。ALER-TI与模型无关,可通过轻量级适配模块与各种插补主干集成。在不同缺失率的六个真实世界数据集上的大量实验表明,ALER-TI持续改进强大的基线模型并增强了跨不同插补设置的鲁棒性。

英文摘要

Deep learning has significantly advanced time series imputation, yet most existing architectures primarily rely on localized temporal context within the corrupted input sequence. This reliance can be limiting in real-world scenarios, where time series often exhibit non-stationary dynamics, weak temporal correlations, and infrequent patterns that are difficult to reconstruct from nearby observations alone. In this paper, we propose ALER-TI, Aligned Latent Embedding Retrieval for Time Series Imputation, a retrieval-augmented framework that explicitly leverages historical patterns to supplement degraded local context for more reliable missing-value reconstruction. The core of ALER-TI is Latent Embedding Alignment (LEA), which mitigates the representation mismatch between corrupted queries and complete historical candidates. By applying post-hoc masking in the latent space, LEA aligns candidates with the query's missingness pattern while allowing historical embeddings to be pre-computed and cached for efficient retrieval. ALER-TI is model-agnostic and can be integrated with various imputation backbones through a lightweight adaptation module. Extensive experiments on six real-world datasets under different missing rates demonstrate that ALER-TI consistently improves strong baseline models and enhances robustness across diverse imputation settings.

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2607.07622 2026-07-09 cs.RO 新提交

Continuous and large-scale: ELEANOR, the soft architected arm inspired by the elephant trunk

连续且大规模:受象鼻启发的软结构手臂ELEANOR

Giovanna A. Naselli, Anderson B. Nardin, Seonggun Joe, Ryan Drinkwater, Enrico Donato, Diego Bianchi, Egidio Falotico, Michel C. Milinkovitch, Lucia Beccai

发表机构 * Soft BioRobotics Perception Laboratory, Istituto Italiano di Tecnologia(软生物机器人感知实验室,意大利理工学院) Department of Autonomous Systems Engineering, Korea Aerospace University(自主系统工程系,韩国航空航天大学) Photocentric Ltd.(Photocentric公司) BRAIR lab, The BioRobotics Institute, Scuola Superiore Sant’Anna(BRAIR实验室,生物机器人研究所,圣安娜高等学院) Laboratory of Artificial and Natural Evolution, Department of Genetics and Evolution, University of Geneva(人工与自然进化实验室,基因与进化系,日内瓦大学)

AI总结 以非洲象鼻为模型,提出注重结构连续性和动态特性的设计方法,通过3D打印构建结合腱驱动的连续体手臂,实现对不同物体的全身抓握,突出了仿生设计在机器人技术中的应用及与生物象鼻的比较。

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AI中文摘要

象鼻是一种灵巧且多功能的操纵器,其性能在机器人领域仍无与伦比。以往工作优先考虑模块化并构建了相对小规模的连续体机器人。我们以非洲象的天然鼻子为模型,提出一种不同的设计方法,该方法注重结构连续性和动态特性,合理模拟天然象鼻,同时赋予对环境和人类的高适应性。我们表明基于自然系统宏观特性的仿生设计能实现象似运动和抓握,而非针对特定行为。通过3D打印构建了一个85厘米长、柔顺、锥形、体素化的连续体手臂,并结合模仿天然模型纵向和斜向肌肉的腱驱动。我们展示了对不同形状和尺寸物体的全身抓握,并讨论了与生物象鼻的比较,突出了生物学和机器人技术的方面。

英文摘要

The elephant trunk is a dexterous and versatile manipulator whose performance is still unmatched in robotics. In previous works, modularity was prioritized and relatively small-scale continuum robots were built. We take the natural proboscis of the *Loxodonta africana* species as a model and propose a different design approach which favors structural continuity and dynamic properties that plausibly emulate those of the natural trunk, while conferring high adaptability to the environment and humans. Instead of targeting prescribed behaviors, we show that a biomimetic design based on the macroscopic properties of the natural system enables elephant-like movements and grasping. We build by 3D printing an 85 cm long, compliant, tapered, volumetrically tessellated continuum arm, which is combined with tendon-driven actuation mimicking the longitudinal and oblique muscles of the natural model. We demonstrate whole-body grasping of objects having different shapes and dimensions and discuss a comparison to the biological trunk highlighting aspects of both biology and robotics.

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2607.07608 2026-07-09 cs.RO cs.CV 新提交

Dual Latent Memory in Vision-Language-Action Models for Robotic Manipulation

用于机器人操作的视觉-语言-动作模型中的双潜记忆

Hongyu Qu, Jianzhe Gao, Xiaobin Hu, Shaohuan Yang, Xinlei Yu, Rui Yan, Wenguan Wang, Xiangbo Shu, Shuicheng Yan

发表机构 * Nanjing University of Science and Technology(南京理工大学) Zhejiang University(浙江大学) National University of Singapore(新加坡国立大学)

AI总结 研究针对主流VLA模型处理长期任务的不足,提出LaMem-VLA框架,通过四个协调组件将历史经验重构为潜记忆令牌并与VLA推理直接交织,实现在同一潜空间处理历史经验,经实验验证该框架具有优越性。

Comments Project page: this https URL (https://github.com/quhongyu/LaMem-VLA)

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AI中文摘要

主流视觉-语言-动作(VLA)模型在马尔可夫假设下主要根据当前观察预测动作,在处理长期、时间相关任务时存在困难。现有增强记忆的VLA要么扩大观察窗口,要么从记忆库检索历史作为辅助策略背景,但记忆处于VLA推理的原生潜嵌入空间之外。为此引入LaMem-VLA,一个潜记忆原生框架,将历史经验重构为潜记忆令牌并与VLA推理直接交织。其核心有四个协调组件:组织者、探索者、压缩器和编织器。通过在同一连续潜空间中表示、检索和使用历史经验,LaMem-VLA使记忆能直接参与VLA推理并在有限背景下指导动作生成。在SimplerEnv和LIBERO上的大量实验证明了LaMem-VLA的优越性。

英文摘要

Mainstream Vision-Language-Action (VLA) models predict actions primarily from the current observation under a Markovian assumption, thus struggling with long-horizon, temporally dependent tasks. Existing memory-augmented VLAs either expand the observation window or retrieve history from the memory bank as auxiliary policy-side context. However, they leave memory outside the native latent embedding space of VLA reasoning, preventing historical experience from being fluidly interleaved with multimodal reasoning and action formation. To this end, we introduce LaMem-VLA, a latent-memory-native framework that reconstructs historical experience into latent memory tokens and directly interweaves them with VLA reasoning. At its core, LaMem-VLA introduces four coordinated components: (i) a curator that organizes historical experience into two complementary short-term and long-term memory vaults; (ii) a seeker that queries both vaults using the multimodal cognition to retrieve context-relevant evidence; (iii) a condenser that reconstructs the retrieved evidence into compact short-term and long-term latent memory tokens; and (iv) a weaver that injects these memory tokens with the current observation and instruction into one continuous embedding sequence. By representing, retrieving, and consuming historical experience entirely in the same continuous latent space, LaMem-VLA enables memory to directly participate in VLA reasoning and guide action generation under a bounded context. Extensive experiments on SimplerEnv and LIBERO demonstrate the superiority of our LaMem-VLA.

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2607.07601 2026-07-09 cs.RO cs.AI 新提交

CARLA-GS: Decoupling Representation, Reasoning, and Physics Simulation for Autonomous Driving Corner-Case Synthesis

CARLA-GS:用于自动驾驶极端情况合成的解耦表示、推理和物理模拟

Kaicong Huang, Meng Ma, Ruimin Ke

发表机构 * Rensselaer Polytechnic Institute(伦斯勒理工学院)

AI总结 研究自动驾驶极端情况合成问题,提出CARLA-GS模块化管道,解耦视觉表示、语义推理和物理执行并保持跨模块耦合,能从实际驾驶数据生成可编辑场景,经多智能体大语言模型推理等步骤,实现可控生成及逼真、时空一致的视频。

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AI中文摘要

自动驾驶的安全评估主要由罕见但关键的安全交互主导,这促使模拟器能够通过逼真的观测来刻意合成极端情况。极端情况生成本质上是一个多源问题,涉及视觉表示、场景推理以及车辆轨迹生成与控制。基于先验知识和模型的方法通常孤立地关注场景或轨迹组件,而基于扩散的方法尝试端到端生成,但仍难以确保时空一致性和物理真实性。为在单一框架内统一这些方面,我们提出CARLA-GS,这是一个模块化的极端情况合成管道,它在保持紧密跨模块耦合的同时,将视觉表示、语义推理和基于物理的执行解耦。从实际驾驶数据开始,我们重建一个具有额外几何一致性约束的可编辑高斯场景。然后,一个多智能体大语言模型进行场景级推理,以识别危险交互并生成意图级航路点轨迹,而低级运动控制则委托给CARLA,其中PID控制器确保运动学和动力学可行性。最后,将模拟的车辆状态重新投影到高斯场景中进行以自我为中心的渲染。这种设计在统一管道内实现了高级语义推理、低级物理可执行运动以及逼真的极端情况生成。在Waymo开放数据集上的实验从定量和定性两方面表明,我们的框架能够实现可控的极端情况生成,并生成与语义意图和物理可行运动一致的逼真、时空一致的视频。

英文摘要

Safety evaluation for autonomous driving is dominated by rare, safety-critical interactions, motivating simulators that can deliberately synthesize corner cases with photorealistic observations. Corner-case generation is inherently a multi-source problem spanning visual representation, scene reasoning, and vehicle trajectory generation and control. Prior knowledge- and model-based approaches typically focus on scene or trajectory components in isolation, while diffusion-based methods attempt end-to-end generation but still struggle to ensure spatiotemporal consistency and physical realism. To unify these aspects within a single framework, we propose CARLA-GS, a modular corner-case synthesis pipeline that decouples visual representation, semantic reasoning, and physics-based execution while maintaining tight cross-module coupling. Starting from real driving data, we reconstruct an editable gaussian scene with additional geometry-consistent constraints. A multi-agent LLM then performs scene-level reasoning to identify risky interactions and generate intent-level waypoint trajectories, while the low-level motion control is delegated to CARLA, where a PID controller ensures kinematic and dynamic feasibility. The simulated vehicle states are finally re-projected into the gaussian scene for ego-centric rendering. This design enables high-level semantic reasoning, low-level physically executable motion, and photorealistic corner-case generation within a unified pipeline. Experiments on the Waymo Open Dataset show, both quantitatively and qualitatively, that our framework enables controllable corner-case generation and produces photorealistic, spatiotemporally consistent videos aligned with semantic intent and physically feasible motion.

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2607.07581 2026-07-09 cs.CV 新提交

Cardiac MRI Through-Plane Super-Resolution Guided by Reference and Memory

基于参考和记忆引导的心脏MRI平面内超分辨率

Shaoming Pan (1), Chenchuhui Hu (1), Leon Axel (2), Meng Ye (1) ((1) University of Texas at Arlington, (2) New York University Grossman School of Medicine)

发表机构 * University of Texas at Arlington(德克萨斯大学阿灵顿分校) New York University Grossman School of Medicine(纽约大学格罗斯曼医学院)

AI总结 研究针对临床心脏MRI平面间分辨率粗糙的问题,提出STRMSR框架,利用参考视图和中间结果重建高分辨率心脏容积,通过粗到细匹配、动态特征聚合等方法,在WHS数据集实验中,相比基线在不同上采样因子下有一致改进。

Comments 8 pages, 3 figures 2 tables

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AI中文摘要

临床心脏MRI通常具有高平面内分辨率但平面间分辨率粗糙,这限制了3D分析和诊断准确性。我们提出了STRMSR,一个基于参考和记忆引导的平面间超分辨率框架,通过利用同一受试者的高分辨率参考视图和中间超分辨率结果作为记忆来重建高分辨率心脏容积。我们的方法使用从粗到细的上下文匹配来在空间未对齐下建立低分辨率目标与参考/记忆图像之间的稳健对应关系。一个可学习的逐块动态特征聚合模块预测每个局部块的内容自适应混合权重,有效融合动态信息同时抑制不可靠特征传递。存储在记忆库中的中间超分辨率结果确保了超分辨3D容积的切片间一致性。在WHS心脏MRI数据集上基于两种参考协议(正交平面视图和长轴腔室视图)的实验表明,在4倍和8倍上采样因子下相对于基线有一致的改进。

英文摘要

Clinical cardiac MRI is commonly acquired with high in-plane resolution but coarse through-plane resolution to reduce scan time and accommodate breath-hold and cardiac-motion constraints, which limits 3D analysis and diagnostic accuracy. We propose STRMSR, a reference- and memory-guided through-plane super-resolution (SR) framework that reconstructs high-resolution (HR) cardiac volumes by leveraging HR reference views acquired from the same subject and intermediate SR results as the memory. Our method uses coarse-to-fine contextual matching to establish robust correspondence between low-resolution target and reference/memory images under spatial misalignment. A learnable patch-wise dynamic feature aggregation module predicts content-adaptive mixture weights for each local patch, effectively fusing dynamic information while suppressing unreliable feature transfers. The intermediate SR results stored in the memory bank ensure slice-to-slice consistency for the super-resolved 3D volume. Experiments on the WHS cardiac MRI dataset under two reference protocols, orthogonal-plane views and long-axis chamber views, demonstrate consistent improvements over baselines at 4x and 8x upsampling factors.

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2607.07580 2026-07-09 cs.CV 新提交

Automatic Echocardiography Segmentation via Transition Probability Correlation for Stable Semantic Extraction

基于过渡概率相关性的自动超声心动图分割用于稳定语义提取

Xinran Chen, Xiyuan Wang, Guangquan Zhou, Chuan Chen

发表机构 * School of Biological Science and Medical Engineering, Southeast University(东南大学生物科学与医学工程学院)

AI总结 针对超声心动图分割中因噪声等导致的问题,设计STLSF模块并结合频率感知去噪预训练方法,构建卷积网络,有效缓解纹理不稳定和语义模糊问题,在相关数据集上取得优异分割性能。

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AI中文摘要

超声心动图对心血管诊断至关重要,但固有斑点噪声和低信噪比常导致语义特征模糊和边界破碎,影响深度学习模型在复杂临床病例中的分割精度,且心脏的时间运动对识别解剖结构也很关键。为此设计了包含基于窗口匹配的语义校正组件和语义引导的纹理增强组件的STLSF模块,利用局部过渡概率相关性校正语义并增强纹理,缓解超声心动图质量不佳带来的问题。还提出频率感知去噪预训练方法,构建具有局部归纳偏差和长程依赖性的卷积网络。实验表明该方法在CAMUS和EchoNet-Dynamic数据集上取得了93.87%和92.62%的Dice系数,HD95值分别为3.29mm和2.73mm,性能达到最优。

英文摘要

While echocardiography is essential for cardiovascular diagnosis, inherent speckle noise and low signal-to-noise ratio often lead to ambiguous semantic features and fragmented boundaries. These limitations significantly hinder the segmentation accuracy of deep learning models in complex clinical cases. Moreover, temporal motion of the heart plays a critical role in recognizing anatomical structures. To address these challenges, we designed a STLSF module which comprises a window-matching-based semantic correction component and a semantics-guided texture enhancement component. By leveraging local transition probability correlations to correct semantics and employing semantics-guided texture enhancement, the STLSF module effectively mitigates texture instability and ambiguous semantic interpretations caused by disadvantaged echocardiography quality. Additionally, to facilitate the encoder's adaptation to the intrinsic priors of ultrasound-specific imaging patterns, we propose a frequency-aware denoising pre-training method. The entire work builds a convolution-based network with locality inductive bias and long-range dependencies. Extensive experiments confirm our SOTA performance, achieving 93.87\% Dice on CAMUS and 92.62\% on EchoNet-Dynamic, with respective HD95 values of 3.29mm and 2.73mm.

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2607.07574 2026-07-09 cs.RO 新提交

Context-Aware Force Estimation for Deformable Tool Manipulation in Robotic Environmental Swabbing via Few-Shot Continual Adaptation

通过少样本持续适应实现机器人环境擦拭中可变形工具操作的上下文感知力估计

Siavash Mahmoudi, Chaitainya Kuppar Reddy, Yang Tian, Dongyi Wang

发表机构 * Department of Biological and Agricultural Engineering, University of Arkansas(阿肯色大学,生物与农业工程系) Department of Food Science, University of Arkansas(阿肯色大学,食品科学系)

AI总结 研究机器人环境擦拭中可变形工具操作的接触力估计问题,提出利用本体感知的数据驱动框架,通过比较评估确定循环架构,引入少样本适应策略,实验证明该方法能提高域转移下的鲁棒性,可靠估计力。

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AI中文摘要

机器人表面擦拭需要柔顺工具与异构环境之间的持续交互,准确估计尖端接触力对一致的采样性能至关重要。然而,可变形工具动力学引入非线性粘弹性滞后,使腕部安装的力测量与真实接触力解耦,且工具集成传感器因无菌和一次性使用限制难以部署。本文提出一种数据驱动框架,利用本体感知进行可变形工具操作中的接触力估计,无需明确物理模型或工具尖端的永久嵌入式传感硬件。通过对时间模型的比较评估确定循环架构,其中紧凑的LSTM实现最低估计误差和亚毫秒级推理延迟。为解决跨未见表面和工具柔顺条件的泛化问题,引入参数隔离的少样本适应策略。在UR5e平台上针对九种工具-表面交互模式的实验表明,该方法显著提高了域转移下的鲁棒性,将零样本估计误差降低多达63%,同时保持基线性能且无灾难性遗忘。这些结果表明,将共享变形历史动力学与特定域条件分离,能够在非平稳环境中对可变形工具操作进行可靠的力估计。

英文摘要

Robotic surface swabbing requires sustained interaction between a compliant tool and heterogeneous environments, where accurate estimation of tip-level contact force is critical for consistent sampling performance. However, deformable tool dynamics introduce nonlinear viscoelastic hysteresis that decouples wrist-mounted force measurements from true contact forces, while tool-integrated sensors are impractical for deployment due to sterility and disposability constraints. This paper presents a data-driven framework for contact force estimation in Deformable Tool Manipulation (DTM) that leverages proprioceptive sensing without requiring explicit physical models or permanent embedded sensing hardware at the tool tip. A recurrent architecture is first identified through a comparative evaluation of temporal models, where a compact LSTM achieves the lowest estimation error and sub-millisecond inference latency. To address generalization across unseen surfaces and tool compliance conditions, we introduce a parameter-isolated few-shot adaptation strategy that augments a frozen recurrent backbone with low-dimensional context embeddings using feature-wise linear modulation (FiLM). Experiments on a UR5e platform across nine tool-surface interaction regimes demonstrate that the proposed approach significantly improves robustness under domain shift, reducing zero-shot estimation error by up to 63\% while preserving baseline performance without catastrophic forgetting. These results show that separating shared deformation-history dynamics from domain-specific conditioning enables reliable force estimation for DTM in non-stationary environments.

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2607.07573 2026-07-09 cs.LG cs.CR 新提交

Multi-Class vs. Multi-Label BERT for CVE-to-CWE Mapping: How Taxonomy Structure Shapes the Errors

用于CVE到CWE映射的多类与多标签BERT:分类法结构如何塑造错误

Ana Schwengber Kelm, Christian Bockermann, Jörg Frochte

发表机构 * mindsquare AG(明思夸尔有限公司) Bochum University of Applied Sciences(波鸿应用科学大学)

AI总结 研究将CVE记录映射到CWE类别的文本分类任务,比较多类与多标签BERT建模,在三个嵌套标签空间评估三个编码器。多类训练宏F1更高,错误模式受分类法影响大,放宽层次结构评估可提升指标,CySecBERT总体结果最佳。

Comments 3 figures, 7 tables, to be published at the ICANN 2026 (International Conference on Artificial Neural Networks)

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AI中文摘要

将通用弱点枚举(CWE)类别分配给通用漏洞披露(CVE)记录在漏洞分析中仍然是一个重要但很大程度上依赖人工的步骤。我们将此任务作为文本分类问题进行研究,并比较两种建模选择:一种是为每个CVE预测单个CWE的多类表述,另一种是允许多个分配的多标签表述。在三个嵌套标签空间(83、47和25类)上评估了三个Transformer编码器(BERT Base、SecureBERT和CySecBERT)。多类训练在所有设置中都实现了更高的宏F1,尽管随着标签空间缩小,与多标签的差距从21个百分点缩小到2个百分点。多标签方面的事后阈值优化在25类设置上缩小了这一差距。混淆分析表明,主要的错误分类模式遵循CWE层次结构,并且在所有三个编码器中都是共享的(Pearson r>0.92),这表明错误结构更多地由分类法设计而非编码器选择驱动。一种放宽层次结构的评估,即容忍家族内的混淆,将宏F1从约81%提高到约90%,表明严格的指标低估了分支级分类器的质量。CySecBERT总体上取得了最强的结果,在多标签设置中取得了具有统计学意义的显著提升。

英文摘要

Assigning Common Weakness Enumeration (CWE) categories to Common Vulnerabilities and Exposures (CVE) records remains an important but largely manual step in vulnerability analysis. We study this task as a text classification problem and compare two modelling choices: a \emph{multi-class} formulation that predicts a single CWE per CVE and a \emph{multi-label} formulation that allows multiple assignments. Three transformer encoders (BERT Base, SecureBERT, and CySecBERT) are evaluated on three nested label spaces (83, 47, and 25 classes). Multi-class training achieves higher macro-F1 across all settings, although the gap to multi-label narrows from 21 to 2 percentage points as the label space shrinks. Post-hoc threshold optimisation on the multi-label side closes this gap on the 25-class setting. Confusion analysis shows that the dominant misclassification patterns follow the CWE hierarchy and are shared across all three encoders (Pearson $r > 0.92$), which suggests that the error structure is driven more by taxonomy design than by encoder choice. A hierarchy-relaxed evaluation that forgives within-family confusions raises macro-F1 from ${\sim}$81\% to ${\sim}$90\%, indicating that strict metrics understate branch-level classifier quality. CySecBERT achieves the strongest results overall, with statistically significant gains concentrated in the multi-label setting.

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2607.07565 2026-07-09 cs.LG cs.AI 新提交

Collaborative Synthetic Data Generation for Knowledge Transfer in Federated Learning

联邦学习中用于知识转移的协作式合成数据生成

Maximilian Andreas Hoefler, Karsten Mueller, Wojciech Samek

发表机构 * Fraunhofer Heinrich Hertz Institute(弗劳恩霍夫海因里希·赫茨研究所) BIFOLD Technical University Berlin(BIFOLD技术大学柏林)

AI总结 研究一次性联邦学习通信开销问题,提出FedKT-CSD框架,利用预训练自动编码器作共享潜在空间,客户端编码传输数据统计量,服务器解码合成数据集训练模型,兼顾隐私保证,在多场景下表现良好。

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AI中文摘要

一次性联邦学习(OSFL)通过将训练限制在单个轮次来解决联邦学习的通信开销问题,但在不牺牲模型质量的情况下做到这一点并非易事,尤其是当客户端数据分布存在差异时。近期工作通过构建可转移的合成数据集或蒸馏物在服务器上聚合客户端知识来应对这一挑战。然而,这些方法大多缺乏正式的隐私保证。我们提出了FedKT-CSD(通过协作式合成数据进行联邦知识转移)框架,它受神经图像压缩启发,利用公开预训练的自动编码器作为共享潜在空间来弥补这一差距。每个客户端在一次前向传播中对其私有数据进行编码,计算类条件潜在统计量并传输给服务器。服务器通过安全聚合来聚合这些统计量,添加校准的差分隐私噪声,并解码合成数据集用于训练全局模型及进一步的下游任务。该设计通过构造提供了正式的$(\varepsilon,\delta)$-差分隐私,同时保持客户端计算和通信的轻量级。尽管在隐私约束下运行,FedKT-CSD在不同数据集和异构设置下与非私有基线具有竞争力,甚至表现更优,并且可扩展到大量客户端。

英文摘要

One-shot federated learning (OSFL) addresses the communication overhead of federated learning by limiting training to a single round, but doing so without sacrificing model quality is non-trivial, particularly when client data distributions diverge. Recent work has addressed this challenge by aggregating client knowledge on the server through the construction of transferable synthetic datasets or distillates. However, most of these methods lack formal privacy guarantees, leaving a gap in jointly achieving low communication, robustness to heterogeneity, and rigorous privacy. We propose FedKT-CSD (Federated Knowledge Transfer via Collaborative Synthetic Data), a framework inspired by neural image compression that closes this gap by leveraging publicly pretrained autoencoders as a shared latent space. Each client encodes its private data in a single forward pass, computes class-conditional latent statistics, and transmits these to the server. The server aggregates these statistics via secure aggregation, adds calibrated differential privacy noise, and decodes a synthetic dataset for training a global model and further downstream tasks. This design provides formal $(\varepsilon,\delta)$-differential privacy by construction, while keeping client-side computation and communication lightweight. Despite operating under privacy constraints, FedKT-CSD is competitive with and even outperforms non-private baselines across diverse datasets and heterogeneity settings, and scales to a large number of clients. Our code is available at: this https URL

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2607.07557 2026-07-09 cs.CL cs.LG 新提交

PALS: Percentile-Aware Layerwise Sparsity for LLM Pruning

PALS:用于大语言模型剪枝的百分位数感知分层稀疏性

Yazdan Jamshidi, Alexey Shvets

发表机构 * Palo Alto Networks(帕洛阿尔托网络公司)

AI总结 研究针对大语言模型剪枝中各层重要性差异被忽略的问题,提出PALS方法,基于激活幅度第99百分位数调整每层稀疏性,在LLaMA - 2 - 7B上效果显著,且成本低无需微调,还发现基于梯度的分配效果不佳。

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AI中文摘要

像Wanda和SparseGPT这样的一次性剪枝方法对Transformer的每一层应用相同的稀疏率,忽略层重要性的已知差异。我们提出了PALS(百分位数感知分层稀疏性),它基于激活幅度的第99百分位数调整每层的稀疏性,在目标比率周围限制在±5%。在稀疏率为50%的LLaMA - 2 - 7B上,PALS的WikiText - 2困惑度为10.96,而均匀的Wanda为12.92(9次运行的平均值,p < 0.001)。这种好处取决于架构:LLaMA - 3 - 8B显示出边际收益,而Mistral - 7B则没有。我们还发现基于梯度的分配——看似更有原则的方法——产生的结果比随机的更差,这表明梯度幅度不能预测离散权重去除的影响。PALS在剪枝管道中增加的成本可忽略不计,并且不需要微调。

英文摘要

One-shot pruning methods like Wanda and SparseGPT apply the same sparsity ratio to every layer of a transformer, ignoring known variation in layer importance. We propose PALS (Percentile-Aware Layerwise Sparsity), which adjusts per-layer sparsity based on the 99th percentile of activation magnitudes, bounded to $\pm 5\%$ around the target ratio. On LLaMA-2-7B at 50\% sparsity, PALS achieves 10.96 WikiText-2 perplexity versus 12.92 for uniform Wanda (mean over 9 runs, $p < 0.001$). The benefit is architecture-dependent: LLaMA-3-8B shows marginal gains and Mistral-7B shows none. We also find that gradient-based allocation -- the seemingly more principled approach -- produces results worse than random, suggesting that gradient magnitude does not predict the impact of discrete weight removal. PALS adds negligible cost to the pruning pipeline and requires no fine-tuning.

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2607.07553 2026-07-09 cs.CV 新提交

AA-ViT: Anatomically Aware Vision Transformer with Structural and Frequency Guidance for Contrast Enhanced Brain MRI Synthesis

AA-ViT:用于对比增强脑MRI合成的具有结构和频率引导的解剖学感知视觉变换器

Talha Meraj, Tom Flannery, Charlie Cummins, Matt Townend, Thomas C Booth, Peter Crossley, Michael McCann, Ian Overton, Saritha Unnikrishnan

发表机构 * Atlantic Technological University(大西洋理工大学) Belfast Health and Social Care Trust(贝尔法斯特健康和社会关怀信托基金) King’s College Hospital NHS Foundation Trust(国王学院医院国民保健服务信托基金) King’s College London(伦敦国王学院) Queen’s University Belfast(贝尔法斯特女王大学)

AI总结 研究旨在开发准确无创的CEMRI合成方法,提出解剖学感知的频率和结构引导视觉变换器(AA-ViT),利用对比前MRI模态合成CEMRI。实验表明该方法能保留边界,临床评估获高分,可降低成本等,为CEMRI合成提供新途径。

Comments Accepted for Publication in MIUA 2026 proceedings

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AI中文摘要

准确的肿瘤定位和诊断是脑癌临床护理的关键部分。磁共振成像(MRI)因其卓越的软组织对比度而成为最常用的成像方式。然而,标准MRI常常对比度有限且存在成像伪影,这就需要使用造影剂来提高病变可见性。但使用化学造影剂并不总是可行的,对肾功能不全或其他健康状况的患者可能是禁忌的。因此,开发准确且无创的对比增强MRI(CEMRI)合成方法具有临床重要性。近年来,已经提出了许多CEMRI合成方法,主要依赖生成式人工智能模型。虽然这些方法表现出了有前景的性能,但它们对隐式特征学习的依赖常常限制了它们保留解剖边界和肿瘤特异性精细结构的能力。为了应对这些挑战,我们提出了一种解剖学感知的频率和结构引导视觉变换器(AA-ViT),用于使用对比前MRI模态(T1、T2和FLAIR)进行CEMRI合成。在BraTS 2021数据集上的实验表明,该方法保留了解剖和病变边界,比现有方法实现了更高的PSNR和SSIM。三位神经放射科医生和一位神经外科医生对19例随机选择的不同胶质瘤病例进行的临床评估平均得分为3.94/5,提供了先前研究中罕见的初步临床验证。我们模型的合成对比后扫描可以降低扫描成本、缩短成像时间,并避免使用钆基造影剂的潜在风险。

英文摘要

Accurate tumour localization and diagnosis is a critical component of clinical care for brain cancers. Magnetic Resonance Imaging (MRI) is the most commonly used imaging modality due to its superior soft-tissue contrast. However, standard MRI often exhibits limited contrast and imaging artifacts, which necessitates the use of contrast agents to enhance lesion visibility. The administration of chemical contrast agents is not always feasible and may be contraindicated in patients with renal impairment or other health conditions. As a result, developing accurate and non-invasive contrast enhanced MRI (CEMRI) synthesis methods has clinical importance. In recent years, numerous approaches for CEMRI synthesis have been proposed, predominantly relying on generative artificial intelligence models. While these methods demonstrate promising performance, their dependence on implicit feature learning often limits their ability to preserve anatomical boundaries and tumour-specific fine structures. To address these challenges, we propose an anatomically aware frequency-and-structure-guided vision transformer (AA-ViT), for CEMRI synthesis using pre-contrast MRI modalities (T1, T2, and FLAIR). Experiments on the BraTS 2021 dataset demonstrate that the proposed method preserves anatomical and lesion boundaries, achieving higher PSNR and SSIM than state-of-the-art approaches. Clinical evaluation by three neuroradiologists and a neurosurgeon on 19 randomly selected cases across diverse gliomas yielded a mean score of 3.94/5, providing preliminary clinical validation rarely seen in prior studies. Synthetic post-contrast scans from our model could lower scanning costs, shorten imaging time, and avoid the potential risks of using gadolinium-based contrast agents.

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2607.07548 2026-07-09 cs.CL 新提交

Think Big, Search Small: Where Capacity Matters in Hierarchical Search Agents?

想得大,搜得小:分层搜索智能体中容量的关键所在?

Qinnan Cai, Yibo Zhao, Xiang Li

发表机构 * School of Data Science and Engineering(数据科学与工程学院)

AI总结 研究基于大语言模型的分层搜索智能体中模型容量分配问题,通过角色分解和受控容量扫描实验,发现容量敏感性不对称,分解是瓶颈,还给出了集中容量于委托、缩减执行容量且不牺牲精度的构建分层搜索智能体方法。

Comments 21pages

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AI中文摘要

基于大语言模型的搜索智能体越来越多地采用多智能体架构,主智能体将复杂问题分解为子查询并分发给并行的子智能体。然而,现有系统用相同规模的单一模型实例化所有角色,模型容量如何在各角色间分配仍未明确。我们将分层搜索分解为三个角色:负责任务分解的委托角色、负责检索和证据提取的执行角色、作为混淆控制保持固定的答案生成角色。然后在五个多跳问答基准上沿委托和执行轴进行受控容量扫描。实验有三个发现:一是角色分解始终优于单智能体基线;二是容量敏感性不对称,分解是能力瓶颈;三是通过质量过滤轨迹蒸馏训练的17亿参数执行器在精度上与前沿子智能体匹配且消耗的子智能体令牌少37%。这些结果为构建分层搜索智能体提供了具体方法。

英文摘要

Large language model based search agents increasingly adopt multi-agent architectures in which a main agent decomposes a complex question into sub-queries and dispatches them to parallel sub-agents. However, existing systems instantiate all roles from a single model of identical scale, leaving open how model capacity should be distributed across roles. We factorize hierarchical search into three roles: a delegation role responsible for task decomposition, an execution role responsible for retrieval and evidence extraction, and an answer generation role held fixed as a confound control. We then conduct controlled capacity sweeps along the delegation and execution axes on five multi-hop QA benchmarks. The experiments yield three findings. First, role factorization consistently outperforms a single-agent baseline, improving exact match from 4.5 to 8.6 points across six model scales. Second, capacity sensitivity is asymmetric: scaling the delegation backbone improves EM by ~11 points, whereas scaling the execution sub-agent moves EM by only ~2.6 points, identifying decomposition as the capability bottleneck. Third, a 1.7B-parameter executor trained via quality-filtered trajectory distillation matches a frontier sub-agent in accuracy while consuming 37% fewer sub-agent tokens, advancing the Pareto frontier. These results suggest a concrete recipe for building hierarchical search agents: concentrate capacity at delegation and downsize execution without sacrificing accuracy. Our code is available at this https URL.

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2607.07545 2026-07-09 cs.CV 新提交

Face-trace: Open-Set Attribution and Progressive Discovery of Synthetic Face Generators

面部追踪:合成面部生成器的开放集归因与渐进式发现

Alessia Infantino, Claudio Schiavella, Irene Amerini

发表机构 * Department of Computer, Control and Management Engineering (DIAG), Sapienza University of Rome(罗马第一大学计算机、控制与管理工程系(DIAG))

AI总结 针对合成面部图像逼真带来的多媒体取证挑战,提出结合已知生成器分类、异常检测拒绝及未知生成器发现的开放集归因管道,实验验证其在封闭集和开放集设置下的有效性及增量设置下的渐进式发现能力,跨数据集实验显示可超越原数据集分布。

Comments Preprint. 17 pages, 16 figures

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AI中文摘要

生成式人工智能的进展使合成面部图像更逼真,给多媒体取证带来挑战。现有方法多在封闭集设置下处理合成面部归因,而实际新生成器不断出现。本文提出开放集合成面部源归因管道,结合已知生成器分类、基于能量的异常检测拒绝和未知生成器发现。在已知生成器上训练分类器,对拒绝样本聚类。实验表明该方法在封闭集归因准确率达96.73%,开放集下基于能量的拒绝平衡准确率达71.25%,拒绝样本聚类效果良好,增量设置下发现的生成器空间逐步扩展且最终纯度达99.23%,跨数据集实验表明管道可超越原始数据集分布,但后处理仍具挑战。

英文摘要

Recent advances in generative Artificial Intelligence have made synthetic face images increasingly realistic, creating new challenges for multimedia forensics. Source attribution methods should not only identify the generator of an image when the source is known, but also handle samples produced by previously unseen models. However, most existing approaches address synthetic face attribution in a closed-set setting, where all possible generators are available during training. This assumption does not hold in real-world scenarios, where new generators continuously appear and rejected samples should be organized rather than simply discarded. In this work we propose a pipeline for open-set synthetic face source attribution that combines known generator classification, energy-based OOD rejection, and unknown generator discovery. A classifier is trained on known generators using frozen I-JEPA embeddings, while rejected samples are represented by combining projected I-JEPA features with Forensic Self-Descriptors and then clustered to discover groups of unknown generators. We also extend the discovery stage to an incremental scenario, where rejected samples arrive over time. Experiments on the WILD dataset show that the proposed method achieves 96.73% closed-set attribution accuracy. In the open-set setting, energy-based rejection reaches 71.25% balanced accuracy, while rejected samples are clustered into meaningful unknown-generator groups, obtaining an ARI of 0.81, an NMI of 0.90, and an overall clustering purity of 87.74%. In the incremental setting, the discovered generator space is progressively extended while maintaining a final purity of 99.23%. Cross-dataset experiments suggest that the pipeline can operate beyond the original dataset distribution, although post-processing remains challenging.

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