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2607.15278 2026-07-17 cs.CV 新提交

Hierarchical Denoising For Multi-Step Visual Reasoning

用于多步视觉推理的分层去噪

Zezhong Qian, Xiaowei Chi, Chak-Wing Mak, Tianze Zhou, Ruibin Yuan, Yuhan Rui, Hengzhe Sun, Zhuoqun Wu, Yuming Li, Siyuan Qian, Sirui Han, Shanghang Zhang

发表机构 * State Key Laboratory of Multimedia Information Processing, School of Computer Science, Peking University(北京大学计算机科学学院多媒体信息处理技术国家重点实验室) The Hong Kong University of Science and Technology(香港科技大学) Beihang University(北京航空航天大学) Fuzhou University(福州大学) Muka Robotics(木卡机器人)

AI总结 研究针对视频模型多步推理不足的问题,提出HDR框架,通过树形层次结构和稀疏分层注意力模式进行多步推理,在新基准测试中提升了成功率和进度,推理更快,数据效率更高,在机器人实验中展现潜力。

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AI中文摘要

视频模型正在演变为视觉基础模型,但仍缺乏类似人类的多步推理能力。流式自回归扩散模型高效但推理有限,双向扩散虽能全局修正但推理成本高。我们提出了HDR,一个将分层潜在因素集成到因果视频生成中进行多步推理的统一框架。HDR将视频潜在因素组织成树形层次结构,在流式输出前实现从粗到细的推理。粗去噪层保留不确定假设用于全局规划,细层逐步将其细化为具体视觉状态。稀疏分层注意力模式进一步降低时间注意力成本。我们引入了一个具有分布外情况的分层多步视频推理基准,涵盖六个任务。与流式自回归扩散基线相比,HDR将成功率从34.22提高到60.29,平均进度从76.00提高到89.56,推理速度比双向扩散快54.2倍,在仅2%训练数据时保留82.9%的全数据性能。真实世界机器人实验进一步证明了HDR在物理交互和世界建模方面的潜力。

英文摘要

Video models are evolving into vision foundation models, yet they still lack human-like multi-step reasoning. Streaming autoregressive diffusion models are efficient but limited in reasoning, while bidirectional diffusion enables global revision with high inference costs due to dense frame-level denoising. Both paradigms struggle to achieve logical consistency and low-latency streaming for complex reasoning tasks. We propose HDR (Hierarchical Denoising for Visual Reasoning), a unified framework that integrates hierarchical latents into causal video generation for multi-step reasoning. HDR organizes video latents into a tree-structured hierarchy, enabling coarse-to-fine reasoning before streaming output. Coarse denoising layers preserve uncertain hypotheses for global planning, while finer layers progressively refine them into concrete visual states. A sparse hierarchical attention pattern (SHAP) further reduces temporal attention costs. We introduce a level-stratified multi-step video reasoning benchmark with out-of-distribution cases, covering six tasks: maze navigation, Tower of Hanoi, one-line drawing, sliding puzzle, Sokoban, and water pouring. Compared with streaming autoregressive diffusion baselines, HDR improves success from 34.22 to 60.29 (76.2% relative gain) and increases average progress from 76.00 to 89.56, demonstrating more consistent reasoning trajectories. HDR maintains low-latency streaming at 0.70 seconds per latent, achieving 54.2 times faster inference than bidirectional diffusion. It also retains 82.9% of full-data performance with only 2% training data, compared with 52.0% for bidirectional diffusion. Real-world robot experiments further demonstrate HDR's potential for physical interaction and world modeling. Project demo: https://hierarchical-diffusion-reasoning.github.io/.

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2607.15275 2026-07-17 cs.RO cs.AI cs.LG 新提交

RoboTTT: Context Scaling for Robot Policies

RoboTTT:机器人策略的上下文扩展

Yunfan Jiang, Yevgen Chebotar, Ruijie Zheng, Fengyuan Hu, Yunhao Ge, Jimmy Wu, Tianyuan Dai, Scott Reed, Li Fei-Fei, Yuke Zhu, Linxi "Jim" Fan

发表机构 * NVIDIA(英伟达公司) Stanford University(斯坦福大学) The University of Texas at Austin(德克萨斯大学奥斯汀分校)

AI总结 研究提出RoboTTT,将测试时训练集成到机器人基础模型,通过序列动作强制和截断反向传播扩展视觉运动上下文到8K时间步长,解锁新能力,提升多任务性能,证明上下文长度是机器人基础模型新扩展轴。

Comments Project website: http://research.nvidia.com/labs/gear/robottt/

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AI中文摘要

近期的机器人基础模型在单步或短历史视觉运动上下文下运行。我们引入了测试时训练机器人策略(RoboTTT),这是一种机器人模型和训练方法,可将视觉运动上下文扩展到8K时间步长,比现有技术策略高出三个数量级,且不增加推理延迟。在此上下文长度下,解锁了新的机器人能力,如从人类视频演示中一次性上下文模仿、即时策略改进、对扰动的鲁棒性以及在多阶段、长视野任务上更强的性能。还首次观察到随着预训练上下文长度增加,闭环性能稳步提升。核心是将测试时训练集成到机器人基础模型中,通过序列动作强制和截断反向传播来扩展训练上下文长度。在具有挑战性的真实机器人操作任务中,RoboTTT比单步上下文基线的整体性能提高了87%,并完全完成了五分钟、十阶段的装配任务,而基线模型从未做到。用8K时间步长上下文训练的RoboTTT比用1K时间步长预训练的相同模型性能高出62%,表明上下文长度是机器人基础模型新的扩展轴。

英文摘要

Recent robot foundation models operate with single-step or short-history visuomotor context. We introduce Test-Time-Training Robot Policies (RoboTTT), a robot model and training recipe that scale visuomotor context to 8K timesteps, three orders of magnitude beyond state-of-the-art policies, without growing inference latency. At this context length, we unlock new robot capabilities: one-shot in-context imitation from human video demonstrations, on-the-fly policy improvement, robustness to perturbations, and stronger performance on multi-stage, long-horizon tasks. We also observe, for the first time, steady gains in closed-loop performance as pretraining context length scales. At its core, RoboTTT integrates Test-Time Training into robot foundation models such as Vision-Language-Action policies, yielding a sequence model whose recurrent state consists of fast weights, parameters updated by gradient descent during both training and inference, compressing histories into weight space and retrieving contextual information for long-context conditioning. To scale training context length, the recipe combines sequence action forcing with truncated backpropagation through time. On challenging real-robot manipulation tasks, RoboTTT improves overall performance by 87% over the single-step context baseline and fully completes a five-minute, ten-stage assembly task, which no baseline ever does. RoboTTT trained with 8K-timestep context outperforms the same model pretrained with 1K timesteps by 62%, suggesting context length as a new scaling axis for robot foundation models. Videos are available at https://research.nvidia.com/labs/gear/robottt/

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2607.15273 2026-07-17 cs.CV cs.LG 新提交

MeanFlowNFT: Bringing Forward-Process RL to Average-Velocity Generators

MeanFlowNFT:将前向过程强化学习引入平均速度生成器

Yushi Huang, Xiangxin Zhou, Jun Zhang, Liefeng Bo, Tianyu Pang

发表机构 * Tencent Hunyuan(腾讯混元) The Hong Kong University of Science and Technology(香港科技大学)

AI总结 研究将强化学习应用于MeanFlow生成器的问题,核心方法是引入MeanFlowNFT,受MeanFlow恒等式启发构建预测器并应用DiffusionNFT目标,主要贡献是改进基线,在多数指标上超越现有方法,少步采样时能超越多步强化学习调整的扩散模型。

Comments Project Page: https://harahan.github.io/meanflownft-project-page/, GitHub: https://github.com/Harahan/MeanFlowNFT, Hugging Face: https://huggingface.co/Harahan/MeanFlowNFT

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AI中文摘要

MeanFlow生成器通过预测时间间隔内的平均速度实现快速少步采样,强化学习已成为使扩散和流模型符合人类偏好及特定任务目标的有力方式。DiffusionNFT提供了一个高效的前向过程强化学习框架,但将此类强化学习方法应用于MeanFlow的研究仍不足。为此引入MeanFlowNFT,受连接平均速度和瞬时速度的MeanFlow恒等式启发构建诱导瞬时速度预测器,应用DiffusionNFT目标进行奖励优化,同时保留基于平均速度的采样方式。实验表明MeanFlowNFT持续改进基线,在多数指标上优于现有方法。

英文摘要

MeanFlow generators achieve fast few-step sampling by predicting average velocities over time intervals, making them attractive for efficient generation. Reinforcement learning (RL) has become a powerful way to align diffusion and flow models with human preferences and task-specific objectives. In particular, DiffusionNFT offers an efficient forward-process RL framework that does not require reverse-process trajectories or likelihood estimation. However, applying such RL methods to MeanFlow remains underexplored. DiffusionNFT optimizes instantaneous velocities, whereas MeanFlow samples with average velocities. To bridge this gap, we introduce MeanFlowNFT. Inspired by the MeanFlow identity, which bridges average and instantaneous velocities, we construct an induced instantaneous-velocity predictor. We apply the DiffusionNFT objective to this predictor, making reward optimization well-defined for MeanFlow. Sampling remains based on the average velocity, preserving MeanFlow's fast few-step generation. We further prove that MeanFlowNFT inherits DiffusionNFT's strict policy-improvement guarantee. Experiments on image and video generation show that MeanFlowNFT consistently improves baselines. Moreover, it outperforms prior state-of-the-art RL-tuned few-step generators on most metrics ($6$ of $8$ on SD3.5-M), and can even surpass multi-step RL-tuned diffusion while using only a few sampling steps. For instance, on Wan 2.1, $4$-step MeanFlowNFT reaches a VBench score of $84.33$, surpassing $50$-step LongCat-Video RL ($82.57$).

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2607.15272 2026-07-17 cs.CL cs.AI 新提交

SciDiagramEdit: Learning to Edit Scientific Diagrams from Paper Revisions

SciDiagramEdit:从论文修订中学习编辑科学图表

Yasheng Sun, Zezi Zeng, Yifan Yang, Chong Luo, Wenyi Wang, Ziwei Liu, Jürgen Schmidhuber

发表机构 * King Abdullah University of Science and Technology(阿卜杜拉国王科技大学) Microsoft Research(微软研究院) Nanyang Technological University(南洋理工大学)

AI总结 研究针对科学论文图表编辑自动化的挑战,提出SciDiagramEdit框架,通过从arXiv版本历史挖掘数据,采用技能进化的智能体学习,能从自然论文修订中学习,提升编辑准确性。

Comments 20 pages

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AI中文摘要

编辑研究论文中的图表是日常研究工作中常见且耗时的部分。在自然语言指令下自动化此编辑工作流程具有挑战性,因为科学图表是密集的信息图。为此,我们提出了SciDiagramEdit,这是一个基准和技能进化框架,它从自然论文修订中学习,在图形的可编辑矢量源上运行。我们的基准从arXiv版本历史中挖掘前后图形对,通过技能进化采用智能体学习。结果表明自然论文修订是指令驱动图形编辑的有效训练信号。

英文摘要

Editing the figures in a research paper is a routine and time-consuming part of everyday research practice: authors relabel components, rearrange panels, and restyle visuals as they revise their manuscripts. Automating this editing workflow under a natural-language instruction, however, is challenging, because a scientific figure is a dense infographic in which heterogeneous visual elements such as schematics, plots, photos, captions, and arrows are composed under a tight visual grammar to advance a specific argument. To address this, we present SciDiagramEdit, a benchmark and skill-evolution framework that learns from natural paper revisions and operates on the figure's editable vector source, where users can inspect and co-edit individual primitives alongside the agent. Our benchmark mines before/after figure pairs from arXiv version histories, each grounded in the authors' own revision intent. To accommodate the diversity of editing instructions, we adopt agentic learning via skill evolution: an agentic proposer continually refines the agent's skill specification from execution traces over multiple epochs. The resulting skill progressively lifts edit accuracy on a held-out validation set, providing evidence that natural paper revisions are an effective training signal for instruction-driven figure editing.

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2607.15271 2026-07-17 cs.CV cs.GR cs.LG 新提交

Online Neural Space Time Memory for Dynamic Novel View Synthesis

用于动态新视角合成的在线神经时空记忆

Baback Elmieh, Lynn Tsai, Zeman Li, Srinivas Kaza, Tiancheng Sun, Gabor Csapo, Ali Behrouz, Yuan Deng, Stephen Lombardi, Steven M. Seitz, Xuan Luo

发表机构 * University of Washington(华盛顿大学) Google(谷歌)

AI总结 研究多视图流视频在线新视角合成问题,提出解耦记忆更新与应用频率的方法,通过跨视图注意力管理变形,引入辅助记忆损失和记忆缓存策略,实现实时、领先性能及微小尺度在线记忆。

Comments 15 pages. Preprint. Project page with demos and video results: https://nst-mem.github.io

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AI中文摘要

从多视图流视频进行在线新视角合成面临一个基本权衡:在严格的实时约束下运行时,既要维护持久的长时记忆以重建暂时遮挡的区域。虽然测试时训练(TTT)提供了强大的记忆机制,但标准模型要求在每一帧基于梯度更新记忆以适应动态场景中变化的运动。大量记忆更新的计算成本排除了实时应用,且可能导致长上下文的不稳定。鉴于记忆更新比记忆应用要求更高且视频内容大多冗余,我们提出解耦这两个过程的频率。我们的方法在逐帧应用记忆时进行周期性记忆更新,使用跨视图注意力管理先前记忆状态与当前帧之间的变形。为锁定历史上下文,我们引入两个关键机制:辅助记忆损失强制场景的持久内化,以及记忆缓存策略规范活动权重以防灾难性漂移。我们的方法在具有动态人体运动的场景以及微小尺度的在线记忆方面展示了实时的、领先的性能。

英文摘要

Online novel view synthesis from multi-view streaming videos faces a fundamental trade-off: maintaining a persistent, long-horizon memory to reconstruct temporarily occluded regions while operating under strict real-time constraints. While Test-Time Training (TTT) offers a powerful memory mechanism, standard models mandate gradient-based memory updates at every frame to adapt to the changing motion in dynamic scenes. The computational cost of heavy memory updates precludes real-time application and can lead to instability over long contexts. Given that memory updates are more demanding than memory application and video content is largely redundant, we propose to decouple the frequencies of these two processes. Our approach performs periodic memory updates while applying the memory on a per-frame basis, using cross-view attention to manage deformations between the prior memory state and the current frame. To lock in the historical context, we introduce two critical mechanisms: an auxiliary Memory Loss that forces persistent internalization of the scene, and a Memory Caching strategy that regularizes active weights against catastrophic drift. Our method demonstrates real-time, state-of-the-art performance on scenes with dynamic human motion as well as minute-scale online memorization.

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2607.15268 2026-07-17 cs.CV 新提交

Motion-Conditioned Multi-View Fusion for Myocardial Infarction Localization from Echocardiography

用于超声心动图心肌梗死定位的运动条件多视图融合

Guang Yang, Wentian Xu, Siyu Wang, Betty Raman, Lei Li, Vicente Grau

发表机构 * University of Oxford(牛津大学) National University of Singapore(新加坡国立大学)

AI总结 针对超声心动图心肌梗死定位问题,提出MCF-Net框架,融合心肌运动线索与基础模型表示,通过极稀疏监督建模心脏运动,利用运动衍生软掩码提供先验,跨视图整合运动和视觉优化预测,在节段级定位上性能优于现有方法。

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AI中文摘要

心肌梗死是全球主要死因。超声心动图是评估心肌梗死的常用方法,局部室壁运动异常是关键指标。以往基于学习的心肌运动分析方法存在局限性。基础模型改进了基于视觉的超声心动图分析,但多数方法基于单视图,在视图依赖模糊性下,尤其是心尖视图,节段级定位不可靠。为此提出MCF-Net,一种运动引导的多视图融合框架,融合心肌运动线索与基础模型表示来定位梗死。使用EchoPrime提取视觉特征,通过极稀疏监督建模心脏运动,运动衍生的段感知软掩码提供空间先验,运动条件融合机制跨视图整合运动和视觉来优化预测。在节段级心肌梗死定位上,MCF-Net取得了72.4%的F1值和84.9%的准确率,优于现有方法。

英文摘要

Myocardial infarction (MI) remains a leading cause of mortality worldwide. Echocardiography (Echo) is a widely available modality for MI assessment, where regional wall motion abnormality is a key indicator. Prior learning based methods for myocardial motion analysis often use handcrafted descriptors or densely supervised estimation, but the need for extensive annotation limits applicability. Foundation models have recently improved vision-based Echo analysis; however, most methods operate on single views and segment-level localization remains unreliable under view-dependent ambiguity, especially in apical views. To address this, we propose MCF-Net, a novel motion-guided multi-view fusion framework that fuses myocardial motion cues with foundation model representations to localize infarction. Visual features are extracted using EchoPrime, a pretrained Echo foundation model shared across dual views. Cardiac motion is modeled with extremely sparse supervision: a single annotated template frame is transferred across videos to initialize point tracking, avoiding dense labels. Motion-derived segment-aware soft masks provide coarse spatial priors that selectively enhance features for challenging myocardial segments. A motion-conditioned fusion mechanism then integrates motion and vision across views, refining predictions without overriding strong appearance cues. On segment-level MI localization, MCF-Net achieves 72.4\% F1 and 84.9\% accuracy, outperforming state-of-the-art motion-only, vision-only, and fusion baselines.

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2607.15267 2026-07-17 cs.AI cs.CL 新提交

Pretraining Data Can Be Poisoned through Computational Propaganda

预训练数据可通过计算宣传被下毒

Victoria Graf, Hannaneh Hajishirzi, Noah A. Smith, David Kohlbrenner, Kyle Lo

发表机构 * University of Washington(华盛顿大学) Allen Institute for Artificial Intelligence(艾伦人工智能研究所)

AI总结 研究发现预训练数据可通过公共讨论界面被下毒,引入HalfLife方法衡量恶意内容,探索在网络规模下毒预训练语料库的可行性,证明估计毒注入重要性,确立第三方网页内容为攻击语言模型预训练的可能载体。

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AI中文摘要

毒害预训练数据会给语言模型引入难以检测和缓解的有害行为。以往毒害预训练数据的工作大多利用维基百科等既定数据源,未体现预训练语料库的大规模和异质性,且忽视了中毒数据与数据处理管道的交互。本文通过现有网络规模内容注入机制——公共讨论界面,证明了在这种有限设置之外对预训练数据进行中毒攻击是可行的。此外,为衡量网络爬虫和数据处理后是否包含恶意内容,引入了HalfLife,一种用于估计基于网络爬虫的语言模型训练数据中对抗性内容包含情况的新颖分析方法。利用HalfLife探索通过开放讨论界面在网络规模下毒预训练语料库的可行性。分析表明估计预训练数据中是否包含毒注入的重要性,并将第三方网页内容确立为攻击语言模型预训练的可能载体。

英文摘要

Poisoning pretraining data can introduce harmful behaviors to LMs that are difficult to detect and mitigate. Prior work on poisoning pretraining data has largely exploited established data sources such as Wikipedia, which do not represent the large scale and heterogeneity typical of pretraining corpora, and has ignored the interaction between poisoned data and data curation pipelines. We demonstrate that poisoning attacks on pretraining data are feasible beyond this limited setting through an existing web-scale content injection mechanism: public discussion interfaces. Additionally, to measure whether malicious content is included after web crawling and data curation, we introduce HalfLife, a novel analysis for estimating adversarial content inclusion in web-crawl based LM training data. We use HalfLife to explore the feasibility of poisoning pretraining corpora at web scale through open discussion interfaces. Our analysis demonstrates the importance of estimating whether poison injections are included in pretraining data, and establishes third-party webpage content as a possible vector for attacking language model pretraining.

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2607.15265 2026-07-17 cs.CV cs.AI cs.MM cs.SD 新提交

SceneBind: Binding What and Where Across Vision, Audio and Language

SceneBind:跨视觉、音频和语言绑定“什么”与“哪里”

Mingfei Chen, Zijun Cui, Ruoke Zhang, Hyeonggon Ryu, Eli Shlizerman

发表机构 * University of Washington(华盛顿大学) University of Texas at Dallas(德克萨斯大学达拉斯分校) Hankuk University of Foreign Studies(韩国外国语大学)

AI总结 研究提出SceneBind全模态场景表示,结合全局语义与对象中心语义空间插槽解决空间结构缺失问题,还提出匹配方案。通过构建新数据集及训练协议进行训练评估,兼容预训练编码器,实现先进检索并能零样本转移到下游任务。

Comments Project website: https://scenebind.github.io/

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AI中文摘要

我们提出了SceneBind,一种对现实场景的全模态表示,具有跨视觉、音频和语言的联合语义和3D空间理解。现有全模态编码器在实例级语义(即存在什么)方面表现出色,但往往缺乏明确的空间结构(即其位置)。SceneBind通过将每个场景表示为语义空间实体来解决这一差距,结合全局语义嵌入和以对象为中心的语义空间插槽。我们还提出了SceneBind匹配,一种整合全局场景相似度与对象对齐的语义空间匹配方案,支持跨模态场景检索和对象定位。为训练和评估SceneBind,我们精心构建了一个具有结构化语义和空间注释的新型真实世界双耳视听数据集,并提出了一种跨模态对齐语义和空间信号的训练协议。SceneBind与大规模预训练语义编码器兼容,仅添加少量额外令牌即可进行轻量级空间建模。它实现了最先进的场景和空间检索,同时能够强大地零样本转移到下游任务,如视听定位。

英文摘要

We present SceneBind, an omni-modal representation of realistic scenes with joint semantic and 3D spatial understanding across vision, audio and language. Existing omni-modal encoders excel at instance-level semantics (i.e., what is present), but often lack explicit spatial structure (i.e., where it is). SceneBind addresses this gap by representing each scene as a semantic-spatial entity, combining a global semantic embedding with object-centric semantic-spatial slots. This representation explicitly captures object-level semantics, spatial attributes, and uncertainty. We further propose SceneBind Matching, a semantic-spatial matching scheme that integrates global scene similarity with object alignment, supporting cross-modal scene retrieval and object grounding. To train and evaluate SceneBind, we curate a novel real-world binaural audio-visual dataset with structured semantic and spatial annotations, and propose a training protocol for aligning semantic and spatial signals across modalities. SceneBind is compatible with large-scale pretrained semantic encoders, adds lightweight spatial modeling with only a few additional tokens. It achieves state-of-the-art scene and spatial retrieval while enabling strong zero-shot transfer to downstream tasks such as audio-visual localization.

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2607.15258 2026-07-17 cs.LG cs.CE 新提交

Decoding Market Emotion from Blockchain Activity: A Data-Driven Sentiment Classifier

从区块链活动中解码市场情绪:一种数据驱动的情感分类器

Arthur G. Bubolz, Abreu Quevedo, Giancarlo Lucca, Rafael A. Berri, Eduardo Borges, Bruno L. Dalmazo

发表机构 * Computing Sciences Center - C3(计算科学中心 - C3)

AI总结 研究通过结合链上、金融数据与社交媒体帖子分析比特币市场情绪,用梯度提升等模型分类,SHAP量化特征贡献,此数据组合产生有意义信号与见解,支持加密货币分析及深度学习改进。

Comments This manuscript has been accepted for presentation at the IEEE International Symposium on Computers and Communications (ISCC 2026)

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AI中文摘要

比特币作为去中心化数字资产和投资工具的使用日益增加,引发了人们对理解其市场行为的浓厚兴趣。本研究提出了一种新方法,通过将链上和金融数据与社交媒体帖子相结合来分析比特币市场情绪。与旨在预测价格的模型不同,这项工作专注于使用区块链交易、比特币历史价格数据和每日推特情绪分类来解释市场情绪。该方法将情绪趋势与链上和金融指标合并,归一化为一个数据集用于详细的市场分析。使用交叉验证测试了多个机器学习模型,梯度提升(XGBoost)成为最可靠的情绪分类模型,平均F1分数约为0.84。基于博弈论的模型可解释性方法SHAP用于量化链上特征对模型预测的贡献,提高了透明度。结果表明,这种数据组合产生了有意义的预测信号和见解,支持数据驱动的加密货币分析以及未来深度学习的改进。

英文摘要

The growing use of Bitcoin as a decentralized digital asset and investment tool has sparked strong interest in understanding its market behavior. This study presents a new approach to analyze Bitcoin market sentiment by combining on-chain and financial data with social media posts. Unlike models that aim to predict prices, this work focuses on explaining market sentiment using blockchain transactions, historical price data of Bitcoin, and daily Twitter sentiment classifications. The method merges sentiment trends with on-chain and financial metrics, normalized into a dataset for detailed market analysis. Multiple machine learning models were tested using cross-validation, with Gradient Boosting (XGBoost) emerging as the most reliable model for classifying sentiment, achieving an average F1-score of about 0.84. SHAP (SHapley Additive exPlanations), a game theory-based method for model interpretability, was used to quantify the contribution of on-chain features to the model's predictions, improving transparency. The results indicate that this data combination yields meaningful predictive signals and insights, supporting data-driven cryptocurrency analysis and future improvements with deep learning.

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2607.15257 2026-07-17 cs.AI cs.IR 新提交

SearchOS-V1: Towards Robust Open-Domain Information-Seeking Agent Collaboration

SearchOS-V1:迈向稳健的开放域信息检索智能体协作

Yuyao Zhang, Junjie Gao, Zhengxian Wu, Jiaming Fan, Jin Zhang, Shihan Ma, Yao Yao, Weiran Qi, Chuyan Jin, Guiyu Ma, Xingzhong Xu, Kai Yang, Ji-Rong Wen, Zhicheng Dou

发表机构 * Gaoling School of Artificial Intelligence, Renmin University of China(中国人民大学高瓴人工智能学院) Ant Group(蚂蚁集团)

AI总结 研究开放域信息检索智能体协作问题,提出SearchOS系统级多智能体框架,通过将搜索进展转化为显式状态、设计上下文管理、应用调度机制及引入中间件和技能系统,在相关数据集上领先基线,推动稳健信息检索协作。

Comments Code is available at https://github.com/antins-labs/SearchOS

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AI中文摘要

工具集成大语言模型的进展使网络搜索成为信息检索智能体的核心能力。但随着交互历史增长,智能体追踪任务进展困难,搜索失败会陷入重复循环。本文介绍SearchOS系统级多智能体框架,将脆弱、隐式搜索进展转化为显式、持久和共享状态。先将开放域信息检索表述为带基础引用的关系模式完成,设计面向搜索的上下文管理,在此基础上应用管道并行调度机制,还引入搜索工具中间件 harness 及可重用分层技能系统。在WideSearch和GISA上,SearchOS在评估的单智能体和多智能体基线中各项指标领先,为稳健信息检索协作铺平道路。

英文摘要

Recent advances in Tool-Integrated Large Language Models have made web search a core capability of information-seeking agents. However, as interaction histories grow, agents increasingly struggle to track task progress. When search attempts fail to yield useful evidence, current single- and multi-agent systems can become trapped in repetitive loops, wasting search budgets and ultimately compromising the quality and completeness of the final output. We introduce SearchOS, a system-level multi-agent framework that turns fragile, implicit search progress into explicit, persistent, and shared state. First, we formulate open-domain information seeking as relational schema completion with grounded citations, where agents discover entities, populate attributes across linked tables, and anchor each value to source evidence. Then we design Search-Oriented Context Management (SOCM), which externalizes the evolving state into Frontier Task, an Evidence Graph, a Coverage Map, and Failure Memory. Built on SOCM, SearchOS applies a pipeline-parallel scheduling mechanism that overlaps the execution of sub-agents and continuously refills freed slots with tasks targeting unresolved coverage gaps to improve utilization and throughput. To schedule and control the execution of search agents, SearchOS introduces a Search Tool Middleware Harness that intercepts model and tool interactions to record grounded evidence and react to stalls or budget exhaustion, and provides a reusable hierarchical skill system comprising strategy and access skills to augment the agents' search process and avoid repeating failed search patterns across runs. On WideSearch and GISA, SearchOS leads all metrics among the evaluated single- and multi-agent baselines, paving the way toward robust information-seeking collaboration.

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2607.15255 2026-07-17 cs.CV 新提交

HoloGeo: Mitigating Landmark Bias in Geo-localization via Evidence-Driven Reasoning

HoloGeo:通过证据驱动推理减轻地理定位中的地标偏差

Pengcheng Zhou, Xuanyu Liu, Yanchen Yin, Bobo Li, Shengqiong Wu, Mong-Li Lee, Wynne Hsu

发表机构 * National University of Singapore(新加坡国立大学) Shandong University of Science and Technology(山东科技大学) University of Oxford(牛津大学)

AI总结 研究针对视觉语言模型地理定位易受地标偏差影响的问题,提出证据驱动推理框架HoloGeo,借助高质量数据集,通过多维度奖励实现平衡关注与联合推理,经实验验证其在多个数据集上能有效减轻地标偏差,提升地理定位性能。

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AI中文摘要

视觉语言模型(VLMs)的进展改善了图像地理定位,但现有模型仍易受地标偏差影响,导致忽视地理线索或形成虚假关联,造成定位不准确。为此设计了偏差强度(BI)和偏差危害(BH)两个量化指标,建立了LandmarkBias - 3K基准。提出证据驱动推理框架HoloGeo,借助高质量BF - 30k数据集,通过纳入多维度奖励鼓励对多样视觉线索的平衡关注,实现证据驱动联合推理。实验表明HoloGeo在多个数据集上表现出色,验证了其对稳健地理空间推理的有效性。

英文摘要

Recent advances in Vision-Language Models (VLMs) have significantly improved image geo-localization, yet existing models remain susceptible to landmark bias, causing them to overlook geographical cues or form spurious correlations, ultimately resulting in inaccurate localization. To systematically investigate this issue, we first design two quantitative metrics, Bias Intensity (BI) and Bias Harmfulness (BH), to characterize the impact of landmarks exerted on model reasoning, and establish a comprehensive benchmark, LandmarkBias-3K. To mitigate landmark bias, we further propose an evidence-driven reasoning framework, HoloGeo, to improve the reliability of geo-localization. HoloGeo is supported by a high-quality dataset, BF-30k, annotated with structured multi-evidence bias-free reasoning chains. By incorporating multi-dimensional rewards, HoloGeo explicitly encourages balanced attention over diverse visual cues and achieves evidence-driven joint reasoning. Extensive experiments demonstrate that HoloGeo not only maintains excellent performance on IM2GPS3K and YFCC4k but also significantly outperforms existing open-source VLMs on LandmarkBias-3K, validating its effectiveness for robust geospatial reasoning.

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2607.15254 2026-07-17 cs.AI cs.HC 新提交

teLLMe Why (Ain't Nothing but a Jam): Exploratory Causal Analysis of Urban Driving Data

告诉我为什么(不过是一场拥堵):城市驾驶数据的探索性因果分析

Qiwei Li, Jorge Ortiz

发表机构 * Rutgers University(罗格斯大学)

AI总结 研究城市驾驶数据因果问题,提出teLLMe系统,结合多种方法从结构化事件表出发,通过模式感知大语言模型映射问题,返回‘因果卡片’总结相关内容,能揭示合理关系,用于假设生成和专家推理。

Comments Accepted at the NeurIPS 2025 Workshop on UrbanAI. 6 pages

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AI中文摘要

交通机构现在能够获取大量源自视频的数据以研究安全和拥堵情况。但多数数据是观测性的且无干预收集,使得诸如‘降雨如何改变交通密度?’这类因果问题难以回答。我们提出了teLLMe,一个用于城市驾驶数据集探索性因果分析的系统。该系统从由行车记录仪注释构建的结构化事件表出发,将因果结构学习与PC算法、基于自助法的稳定性检查以及使用线性回归和DoWhy的特定查询效应估计相结合。自然语言问题通过模式感知大语言模型映射到结构化因果查询,用户能指定处理、结果和子群体。teLLMe返回一张‘因果卡片’,总结效应估计、调整集、有向无环图支持和假设,并附带简短的自然语言解释。对源自BDD的交通事件的案例研究表明,该系统能揭示涉及天气、高峰时段和交通密度的合理关系,同时明确不确定性和建模选择。该系统被设计为一个用于假设生成和专家推理的工具,而非确定性因果声明的来源。

英文摘要

Traffic agencies now have access to large volumes of video-derived data for studying safety and congestion. Most of these data are observational and collected without interventions, which makes causal questions such as "How would rain change traffic density?" difficult to answer. We present teLLMe, a system for exploratory causal analysis of urban driving datasets. The system starts from a structured event table built from dashcam annotations and combines causal structure learning with the PC algorithm, bootstrap-based stability checks, and query-specific effect estimation using linear regression and DoWhy. Natural-language questions are mapped to structured causal queries through a schema-aware LLM, enabling users to specify treatments, outcomes, and subpopulations. teLLMe returns a "Causal Card" that summarizes effect estimates, adjustment sets, DAG support, and assumptions, followed by a short natural-language explanation. Case studies on BDD-derived traffic events show that the system can surface plausible relationships involving weather, peak hours, and traffic density, while making uncertainty and modeling choices explicit. The system is designed as a tool for hypothesis generation and expert reasoning rather than a source of definitive causal claims.

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2607.15247 2026-07-17 cs.AI 新提交

AutoSynthesis: An agentic system for automated meta-analysis

自动合成:一种用于自动化元分析的智能系统

Moein Taherinezhad, Sebastian Maier, Gerardo Vitagliano, Francesco Pierri, Stefan Feuerriegel

发表机构 * Politecnico di Milano(米兰理工大学) LMU Munich(慕尼黑大学) Munich Center for Machine Learning(慕尼黑机器学习中心) MIT CSAIL(麻省理工学院计算机科学与人工智能实验室)

AI总结 研究旨在解决定量证据合成人工操作难扩展问题,提出自动合成这一端到端多智能体系统,能完成从制定策略到元分析等一系列任务,还支持相关分析与评估,应用效果显示其可使证据合成更具扩展性,助力循证决策。

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AI中文摘要

证据合成对于将原始研究转化为科学、医学、教育和政策方面可靠的知识至关重要。然而,定量证据合成在很大程度上仍然是人工操作且难以扩展。在此,我们介绍了自动合成,一个用于自动化元分析的端到端多智能体系统。给定自然语言的研究问题,它能制定搜索策略、检索科学文献、筛选候选研究、评估全文适用性、提取定量统计数据、计算标准化效应量,最后进行随机效应元分析。它还支持异质性分析和偏倚风险评估,并生成符合PRISMA指南的透明报告。在我们的应用中,它筛选了超过28项研究并提取了20多条定量声明。其合并效应估计与专家进行的元分析的Hedges' $g$ 相似,表明与人工证据合成高度一致。这些结果表明自动合成可使定量证据合成更具扩展性,从而支持跨学科的循证决策。

英文摘要

Evidence synthesis is crucial for turning primary research into reliable knowledge for science, medicine, education, and policy. Yet, quantitative evidence synthesis remains largely manual and difficult to scale. Here, we introduce AutoSynthesis, an end-to-end multi-agent system for automated meta-analysis. Given a research question in natural language, AutoSynthesis formulates a search strategy, retrieves scientific literature, screens candidate studies, assesses full-text eligibility, extracts quantitative statistics, computes standardized effect sizes, and finally performs random-effects meta-analysis. AutoSynthesis further supports heterogeneity analysis to examine how effect sizes vary across moderators, as well as risk-of-bias assessment. As output, AutoSynthesis produces a transparent report aligned with PRISMA guidelines. In our application, AutoSynthesis screened over 28 studies and extracted more than 20 quantitative claims. The pooled effect estimates produced by AutoSynthesis are similar to Hedges' $g$ of expert-conducted meta-analyses, indicating close agreement with manual evidence synthesis. Together, these results show that AutoSynthesis can make quantitative evidence synthesis more scalable, thereby supporting evidence-based decision-making across disciplines.

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2607.15246 2026-07-17 cs.CV 新提交

ARMOR++: Agentic Orchestration of a Multi-Domain Primitive Set for Transferable Attacks on Deepfake Detectors

ARMOR++:用于对深度伪造检测器进行可转移攻击的多域原语集的智能编排

Christos Korgialas, Gabriel Lee Jun Rong, Dion Jia Xu Ho, Pai Chet Ng, Xiaoxiao Miao, Konstantinos N. Plataniotis

发表机构 * Department of Informatics, Aristotle University of Thessaloniki(塞萨洛尼基亚里士多德大学信息学系) Infocomm Technology Cluster, Singapore Institute of Technology(新加坡科技学院信息通信技术集群) Department of Applied Physics and Applied Mathematics, Columbia University(哥伦比亚大学应用物理与应用数学系) Division of Natural and Applied Sciences, Duke Kunshan University(昆山杜克大学自然科学与应用科学部) Department of Electrical and Computer Engineering, University of Toronto(多伦多大学电气与计算机工程系)

AI总结 研究针对深度伪造检测器在黑盒对抗转移下可靠性下降问题,提出ARMOR++多智能体框架,利用视觉与语言模型提供语义先验并编排原语选择等,整合多种原语有效针对异构偏差,实验表明其性能优于现有基线,凸显当前检测器可靠性差距及智能编排的有效性。

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AI中文摘要

深度伪造检测器的可靠性在黑盒对抗转移下经常下降,因为这些模型通常依赖脆弱的、与架构相关的取证线索。现有转移攻击缺乏语义感知,在严格的无查询约束下难以保持有效性。本文介绍了ARMOR++,一个用于高转移性深度伪造逃避的强大多智能体框架。该框架利用Qwen2.5-VL视觉语言模型提供空间语义先验,Qwen3大语言模型编排原语选择、自适应超参数重新参数化和熵正则化扰动混合。通过整合五种互补原语,ARMOR++有效针对异构归纳偏差。在AADD-2025基准上的严格评估表明,ARMOR++在低质量和高质量图像模式下均显著优于现有智能体和非智能体基线。统计分析证实,与最先进的智能体基线相比,盲目标攻击成功率有大幅提高,在针对非智能体基准和强大防御配置下也有进一步性能优势。这些发现凸显了当前深度伪造检测器部署中存在的显著可靠性差距,并证明了智能编排识别潜在漏洞的有效性。

英文摘要

The reliability of deepfake detectors frequently degrades under black-box adversarial transfer, as these models often rely on fragile, architecture-dependent forensic cues. Existing transfer attacks often lack semantic awareness and struggle to maintain effectiveness under strict no-query constraints, particularly when perturbations are transferred from convolutional surrogates to transformer-based targets. To address these limitations, this paper introduces ARMOR++, a robust multi-agent framework designed for high-transferability deepfake evasion. The framework leverages the Qwen2.5-VL Vision-Language Model (VLM) to supply spatial semantic priors, while the Qwen3 Large Language Model (LLM) orchestrates primitive selection, adaptive hyperparameter reparameterization, and entropy-regularized perturbation mixing. By integrating five complementary primitives, spanning dense optimization, saliency-based methods, spatial transformations, frequency-domain perturbations, and block-structured modifications, ARMOR++ effectively targets heterogeneous inductive biases. Rigorous evaluation on the AADD-2025 benchmark demonstrates that ARMOR++ significantly outperforms existing agentic and non-agentic baselines across both low- and high-quality image regimes. Statistical analysis confirms a substantial gain in blind-target Attack Success Rate (ASR) over the state-of-the-art agentic baseline, with further performance advantages evidenced against non-agentic benchmarks and under robust defensive configurations. These findings highlight a significant residual reliability gap in current deepfake detector deployments and demonstrate the efficacy of agentic orchestration in identifying latent vulnerabilities.

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2607.15242 2026-07-17 cs.LG 新提交

Mutable Low-Rank Sketches for Retrain-Free Recommendation

用于无再训练推荐的可变低秩草图

Hector J. Garcia, Nick Clayton

发表机构 * University of Michigan(密歇根大学) Criteo

AI总结 研究两阶段推荐中嵌入陈旧性问题,提出可变草图方法,将用户偏好存于KP树,一次拟合低秩投影,即时重算嵌入。证明可收紧预测误差范围,实验显示该方法在KuaiRec上效果好、更新快,新用户获推荐快,还比较了不同采样策略。

Comments 6 pages, 3 figures, 8 tables

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AI中文摘要

两阶段推荐中的一个常见瓶颈是嵌入陈旧性:当用户对新项目评分时,其嵌入在下次再训练周期之前保持不变。我们提出了可变草图,它将每个用户的偏好存储在KP树(具有求和聚合的稀疏段树)中,一次拟合低秩投影,并在评分到达时即时重新计算嵌入。我们证明每个新观察值都会单调收紧预测误差范围(定理1),这是FunkSVD和eALS所缺乏的保证。在KuaiRec上,可变草图在读取1.8%数据时RMSE达到0.810,而ALS在读取100%数据时RMSE为0.822,且每批更新速度快8倍。新用户首次评分后不到1毫秒即可获得个性化推荐,无需模型再训练。不同密度情况下采样策略的比较表明,KP树的范数比例采样在稀疏数据(密度<1%)上提供的项目覆盖率比均匀采样高40-130%,而在密集矩阵上均匀采样就足够了。

英文摘要

A common bottleneck in two-stage recommendation is embedding staleness: when a user rates a new item, their embedding remains fixed until the next retrain cycle. We propose mutable sketches, which store each user's preferences in a KP-tree (a sparse segment tree with sum aggregation), fit a low-rank projection once, and recompute embeddings on-the-fly as ratings arrive. We prove that each new observation monotonically tightens the prediction error envelope (Theorem 1), a guarantee that FunkSVD and eALS lack. On KuaiRec, the mutable sketch achieves 0.810 RMSE at 1.8% data read vs. ALS 0.822 at 100%, with 8x faster per-batch updates. A new user receives personalized recommendations in <1 ms after their first rating, with no model retraining required. A comparison of sampling strategies across density regimes shows that the KP-tree's norm-proportional sampling provides 40-130% better item coverage on sparse data (<1% density), while uniform sampling suffices on dense matrices.

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2607.15240 2026-07-17 cs.CL 新提交

TikStance: A Multimodal and Hierarchical Dataset for Multi-target Stance Analysis in TikTok Political Conversations

TikStance:用于TikTok政治对话中多目标立场分析的多模态分层数据集

Yazhi Zhang, Fuqiang Niu, Bowen Zhang

发表机构 * School of Artificial Intelligence, Shenzhen Technology University(深圳技术大学人工智能学院) School of Cyber Science and Technology, University of Science and Technology of China(中国科学技术大学网络空间安全学院)

AI总结 研究针对TikTok政治对话中多目标立场分析,提出多模态分层数据集TikStance,涵盖2024年美国选举周期三位政治人物,结合多目标覆盖、分层对话与人工注释,支持多模态立场检测等多领域研究。

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AI中文摘要

政治话语日益转向短视频平台,但对此类内容的计算分析仍受限于缺乏能同时保留视听信息和分层对话的数据集。本文提出TikStance,这是一个多模态且情境感知的数据集,包含来自TikTok的161个视频和13876条评论,用于政治讨论中的立场检测。该数据集涵盖2024年美国选举周期的三位主要政治人物,内容在2023年9月至2025年1月收集。每个讨论单元将一个主视频及其元数据链接到一个父链接评论树,以便在视听和对话情境中进行立场分析。每个项目由三名注释者独立标注,最终特朗普、拜登和哈里斯子集的Krippendorff's α分别达到0.743、0.723和0.722。描述性分析进一步揭示了立场分布和对话深度中与目标相关的差异,嵌套回复占所有评论的23.3%。通过结合多目标覆盖、分层对话和可靠的多层次人工注释,TikStance支持多模态立场检测、政治传播、计算社会科学和情境感知自然语言处理等方面的研究。

英文摘要

Political discourse has increasingly moved to short-video platforms, yet computational analysis of such content remains constrained by the scarcity of datasets that jointly preserve audiovisual information and hierarchical conversations. Here we present TikStance, a multimodal and context-aware dataset comprising 161 videos and 13,876 comments from TikTok, designed for stance detection in political discussions. The dataset covers three major political figures in the 2024 U.S. election cycle--Donald Trump, Joe Biden, and Kamala Harris--with content collected between September 2023 and January 2025. Each discussion unit links a host video and its metadata to a parent-linked comment tree, enabling stance analysis within both audiovisual and conversational context. Each item was independently labeled by three annotators using a three-class scheme (Favor, Against, None) for video-to-target and comment-to-target stance; items with disagreement were re-annotated, and the final Krippendorff's \(α\) reached 0.743, 0.723, and 0.722 for the Trump, Biden, and Harris subsets, respectively. Descriptive analysis further reveals target-dependent differences in stance distributions and conversational depth, with nested replies accounting for 23.3\% of all comments. By combining multi-target coverage, hierarchical conversations, and reliable multi-level human annotations, TikStance supports research in multimodal stance detection, political communication, computational social science, and context-aware natural language processing.

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2607.15238 2026-07-17 cs.CL 新提交

Language Identification via Compositional Data Analysis: A Linear-Time Classifier Based on Log-Ratio Geometry

通过成分数据分析进行语言识别:基于对数比率几何的线性时间分类器

Paul-Andrei Pogăcean, Sanda-Maria Avram

发表机构 * Faculty of Mathematics and Computer Science Babeş-Bolyai University(巴比什-波雅依大学数学与计算机科学学院)

AI总结 研究针对语言识别,将字符和二元语法频率分布建模为成分向量,经CLR变换映射到特定子空间,结合CLR变换特征与拉普拉斯平滑提出管道方法,在六种语言上评估,该方法在不同文本长度下准确率高,提供了高效且可解释的语言识别替代方案。

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AI中文摘要

语言识别通常使用神经架构或统计n元语法模型。神经方法通常需要大量计算资源,而基于频率的经典方法提供了高效的线性时间性能,但依赖于并非总是适用于成分数据的距离度量。这项工作将字符和二元语法频率分布建模为受限于单纯形的成分向量,并通过中心对数比率(CLR)变换双射地映射到\(\mathbb{R}^D\)的\((D - 1)\)维零和子空间,其中欧几里得距离对应于艾奇逊距离。提出了一个管道,将CLR变换的一元语法和二元语法特征与拉普拉斯平滑相结合以解决稀疏性。该方法在六种语言上进行了评估。实验结果表明,该方法在不同文本长度上实现了稳健的准确率,对较长序列表现出强大性能。这些发现表明,成分表示为语言识别提供了一种确定性且计算高效的替代方案,特别是在可解释性和低资源消耗至关重要的情况下。

英文摘要

Language identification is commonly addressed using either neural architectures or statistical n-gram models. Neural approaches typically require substantial computational resources, whereas classical frequency-based methods offer efficient linear-time performance, but rely on distance metrics that are not always appropriate for compositional data. This work models character and bigram frequency distributions as compositional vectors constrained to the simplex and mapped via the centered log-ratio (CLR) transformation bijectively onto the $(D-1)$-dimensional zero-sum subspace of $\mathbb{R}^D$, where Euclidean distances correspond to Aitchison distances. A pipeline is proposed, combining CLR-transformed unigram and bigram features with Laplace smoothing to address sparsity. The method is evaluated on six languages. Experimental results show that the proposed approach achieves robust accuracy across different text lengths, with strong performance for longer sequences. These findings indicate that compositional representations provide a deterministic and computationally efficient alternative for language identification, particularly in settings where interpretability and low resource consumption are essential.

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2607.15227 2026-07-17 cs.CV cs.HC 新提交

Divergent Gaze Patterns in Artistic Viewing: Spatial and Temporal Signatures of Attention Across Autistic Individuals, Artists, and Neurotypical Observers

艺术观看中的发散注视模式:自闭症个体、艺术家和神经典型观察者注意力的空间和时间特征

Mohammed Amine Kerkouri, Daphné Senggaran, Renaud Jusiak, Océane Lehmann, Marouane Tliba, Claire Wardak, Emmanuelle Houy-Durand, Shasha Morel-Kohlmeyer, Aladine Chetouani, Nadia Aguillon-Hernandez

发表机构 * Université de Tours(图尔大学) Université d’Orléans(奥尔良大学) Université Sorbonne Paris Nord(索邦巴黎北大学)

AI总结 研究比较自闭症成年人、艺术家和神经典型观察者观看画作的注视模式,通过有向度量框架从空间和时间轴分析,发现自闭症患者注视在时空上有独特特征,与其他两组不同,该研究为审美注意力模型提供依据并开源代码和结果。

Comments Submitted for review

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AI中文摘要

不同人群如何视觉探索艺术品与认知科学和无障碍设计相关,但自闭症的大多数眼动追踪研究使用社交场景而非艺术,且只分析眼睛落点,忽略时间和顺序。我们对自闭症成年人、训练有素的艺术家和神经典型观察者三组进行比较性自由观看研究,每组观看30幅画15秒。引入有向、基于度量的框架,沿空间和时间两个互补轴比较组间差异。空间轴通过六种显著性度量比较注视密度图,时间轴用多种方法比较个体扫描路径。结果表明:艺术家和神经典型者在空间和时间上几乎无差异,而自闭症患者的注视不同;自闭症患者注意力分散,空间探索类似艺术家,但时间特征独特;自闭症患者注视在任何度量上都不选择性地像艺术家,反而更接近神经典型者。这些发现表明自闭症患者观看艺术在时空上有独特、特定群体的注意力特征,推动了基于人群的审美注意力模型。我们发布了所有分析代码和每个刺激的结果。

英文摘要

How different populations visually explore artworks bears on cognitive science and on accessibility design, yet most eye-tracking work in autism has used social scenes rather than art, and has analysed where the eyes land while ignoring when and in what order. We present a comparative free-viewing study across three groups, autistic adults (ASD), trained artists, and neurotypical observers, who each viewed 30 paintings for 15s. We introduce a directed, metric-grounded framework that compares groups along two complementary axes: a spatial axis, in which one group's fixation-density map predicts another's fixations under six saliency metrics (AUC-Judd, NSS, CC, SIM, KL, Information Gain); and a temporal axis, in which individual scanpaths are compared with MultiMatch, ScanMatch, a foveal-disc IoU score (FDISS), and dynamic time warping (DTW). Fixations are extracted uniformly for all groups with a dispersion-threshold algorithm. Three results converge. (i)Artists and neurotypicals are almost indistinguishable in both space (density-map correlation CC=0.96) and time (they form the most alignable scanpath pair), whereas ASD gaze diverges from both. (ii)ASD attention is dissociated: it matches artists' wide spatial exploration (dispersion, explored area) but carries a distinct temporal signature, shorter fixations, less dwell, and the most idiosyncratic (least self-consistent) scanpaths of any group. (iii)ASD gaze is not selectively artist-like on any metric; if anything it is marginally closer to neurotypical. Together these findings indicate that autistic viewing of art is a distinct, group-specific attentional profile in both space and time, and they motivate population-conditioned models of aesthetic attention. We release all analysis code and per-stimulus results.

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2607.15220 2026-07-17 cs.CV 新提交

Structural-Semantic Reciprocal Learning for Unsupervised Visible-Infrared Person Re-Identification

用于无监督可见光-红外行人重识别的结构-语义交互学习

Moyao Tian, Shijia Liu, Yan Yang, Xin Yuan, Minshi Chen, Wei Wang, Xiao Wang

发表机构 * School of Computer Science and Technology, Wuhan University of Science and Technology(武汉科技大学计算机科学与技术学院) Hubei Province Key Laboratory of Intelligent Information Processing and Real-Time Industrial System, Wuhan University of Science and Technology(武汉科技大学智能信息处理与实时工业系统湖北省重点实验室) Shenyang Institute of Automation, Chinese Academy of Sciences(中国科学院沈阳自动化研究所) China University of Chinese Academy of Sciences(中国科学院大学)

AI总结 针对无监督可见光-红外行人重识别的挑战,提出结构-语义交互学习框架SSRL。通过细粒度结构解耦和闭环语义校准机制,实现结构与语义学习的交互,有效过滤伪标签噪声,在相关数据集上表现优于现有方法。

Comments Accepted by PRCV 2026

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AI中文摘要

无监督可见光-红外行人重识别(USVI-ReID)因模态差距大且缺乏跨模态身份标注而具有挑战性。渐进关联范式虽被提出以逐步弥合差距,但存在依赖模糊全局表示和伪标签噪声开环传播不受控这两个关键瓶颈。为解决这些问题,我们提出结构-语义交互学习(SSRL)框架,将开环关联转变为自校正闭环系统。结构上引入细粒度结构解耦提取有判别力的身体部位基元作为可靠空间锚点,语义上设计闭环语义校准机制在每个epoch重建共享语义原型并反馈到训练循环,有效过滤伪标签噪声。通过结构和语义学习的交互,SSRL实现了强大的跨模态表示。大量实验表明SSRL在SYSU-MM01和RegDB上优于现有USVI-ReID方法,在RegDB上甚至超过了一些有监督的对应方法。

英文摘要

Unsupervised visible-infrared person re-identification (USVI-ReID) is challenging due to the large modality gap and the lack of cross-modal identity annotations. Progressive association paradigms have been proposed to gradually bridge the gap, but they suffer from two critical bottlenecks: reliance on ambiguous global representations and unchecked propagation of pseudo-label noise in an open-loop manner. To address these issues, we propose Structural-Semantic Reciprocal Learning (SSRL), a framework that transforms open-loop association into a self-correcting closed-loop system. Structurally, we introduce Fine-grained Structural Decoupling (FSD) to extract discriminative body-part primitives as reliable spatial anchors, complementing ambiguous holistic silhouettes with spatially consistent structural details. Semantically, we design a Closed-loop Semantic Calibration (CSC) mechanism that reconstructs shared semantic prototypes at each epoch and feeds them back into the training loop, effectively filtering pseudo-label noise before the next clustering cycle. Through the reciprocal interaction between structural and semantic learning, SSRL achieves robust cross-modal representation. Extensive experiments demonstrate the competitive performance of SSRL against state-of-the-art USVI-ReID methods on both SYSU-MM01 and RegDB, notably surpassing several supervised counterparts on RegDB.

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2607.15218 2026-07-17 cs.AI cs.CR 新提交

When Words Are Safe But Actions Kill: Probing Physical Danger Beyond Text Safety in Hidden-State Risk Space

当言语安全但行动致命:在隐藏状态风险空间中探究超越文本安全的物理危险

Weimeng Wang, Ziqiang Wang, Zihang Zhan, Chuanpu Fu, Qi Li, Ke Xu

发表机构 * Tsinghua University(清华大学) Nanyang Technological University(南洋理工大学)

AI总结 研究大语言模型中语言无害指令在现实世界中的物理危险与文本级内容危险是否相同,提出PRISM方法,通过隐藏状态方向分析等证明CD和PD可分离,PRISM在多个基准测试中表现良好,能检测物理危险而非仅依赖明确不安全措辞。

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AI中文摘要

大语言模型越来越多地充当具身智能体的高级规划器,语言上无害的指令一旦在现实世界中落地就可能变得不安全。研究这种现实世界中的危险是否与普通文本级内容危险是同一安全问题。通过隐藏状态方向分析和随机分割零测试表明,内容危险(CD)和物理危险(PD)在Qwen2.5 - 3B/7B/14B/32B、Phi - 3.5和SmolLM2等语言模型表示中形成可分离信号。在此基础上提出PRISM,在SafeAgentBench上准确率达86.2 - 87.7%,误报率11.7 - 13.7%,还引入PhysicalSafetyBench - 1K进行测试,PRISM在该测试中准确率达99.6%,误报率0.7%,且在SafeText和EARBench上也有良好表现。

英文摘要

Large language models (LLMs) increasingly serve as high-level planners for embodied agents, where linguistically benign instructions can become unsafe once grounded in the physical world. We study whether this physically grounded danger is the same safety problem as ordinary text-level content danger. Through hidden-state direction analysis and random-split null tests, we show that content danger (CD) and physical danger (PD) form separable signals in LLM representations across Qwen2.5-3B/7B/14B/32B, Phi-3.5 and SmolLM2. Building on the CD/PD separability, we propose PRISM, a single-layer L2-regularized logistic probe over full hidden states. PRISM achieves 86.2--87.7\% accuracy on SafeAgentBench with 11.7--13.7\% FPR, while same-scale LLM judges over-block safe tasks at 24.7--39.0\% FPR. We further introduce PhysicalSafetyBench-1K (PSB-1K), a contrastive benchmark of 1{,}000 physical-risk pairs without direct harm keywords, to test whether methods detect physically grounded danger rather than explicit unsafe wording. On PSB-1K, PRISM reaches 99.6\% accuracy and 0.7\% FPR, whereas a Qwen2.5-3B judge rejects 67.8\% of safe tasks. PRISM also replicates on SafeText and EARBench, supporting hidden-state probing as a representation-level method for physical safety beyond text moderation.

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2607.15211 2026-07-17 cs.CV 新提交

MAGiSt3R: Multi-Agent Feed-forward 3D Reconstruction from Monocular RGB Videos

MAGiSt3R:基于单目RGB视频的多智能体前馈3D重建

Ziren Gong, Xiaohan Li, Fabio Tosi, Ninghui Xu, Stefano Mattoccia, Jianfei Cai, Matteo Poggi

发表机构 * University of Bologna(博洛尼亚大学) The University of Hong Kong(香港大学) Southeast University(东南大学) Monash University(莫纳什大学)

AI总结 研究基于单目RGB视频的多智能体3D重建问题,核心方法是用3R家族前馈模型和MAGMA合并模型,并进行姿态图优化,主要贡献是在合成和真实数据集上验证该框架相比现有方法有更高重建和相机跟踪精度。

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AI中文摘要

本文提出了MAGiSt3R,一个多智能体3D重建框架,可对单目RGB视频进行重建和相机跟踪,帧率近10 FPS。它依赖3R家族的前馈模型处理RGB视频并回归局部点图,以及合并模型MAGMA在智能体内外合并局部图以获最终全局点图。此外,还进行姿态图优化以减轻相机漂移。在合成和真实数据集上评估,结果显示其相比现有方法有更高重建和跟踪精度。

英文摘要

This paper presents MAGiSt3R, a multi-agent 3D reconstruction framework performing reconstruction and camera tracking for monocular RGB videos at almost 10 FPS. MAGiSt3R relies on a feed-forward model from the 3R family to process RGB videos and regress local point maps, and on a merging model, MAGMA, that combines local maps at both intra-agent and inter-agent levels to obtain the final global point map. Furthermore, MAGiSt3R performs pose graph optimization to mitigate cumulative camera drift occurring along the feed-forward pipeline. We evaluate MAGiSt3R on both synthetic and real-world datasets, demonstrating its superior reconstruction and camera tracking accuracy compared to state-of-the-art approaches.

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2607.15207 2026-07-17 cs.LG cs.RO 新提交

BadWAM: When World-Action Models Dream Right but Act Wrong

BadWAM:当世界-动作模型想得对但做得错时

Qi Li, Xingyi Yang, Xinchao Wang

发表机构 * National University of Singapore(新加坡国立大学) The Hong Kong Polytechnic University(香港理工大学)

AI总结 研究针对世界-动作模型(WAMs)提出BadWAM框架,用于建模和评估世界-动作漂移攻击,包括仅动作攻击和保持想象攻击,通过不同标准刻画攻击面,评估结果显示能大幅降低任务成功率,揭示WAM漏洞。

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AI中文摘要

世界-动作模型(WAMs)正成为具身控制的一个有前景的基础:它们学习将动作生成与未来世界预测相结合的表示,而非仅预测动作。这种耦合常被视为鲁棒性、可解释性和安全性的来源。本文表明该假设是脆弱的。我们引入BadWAM,一个用于建模和评估世界-动作漂移攻击的统一框架,这是一类新的针对WAM的对抗攻击,利用小的视觉扰动打破WAM想象与执行之间的对齐。BadWAM根据攻击强度和隐蔽性这两个自然标准来刻画这种攻击面。当对手优先考虑破坏时,BadWAM实例化仅动作对抗攻击,直接驱使模型走向导致任务失败的动作。当对手还优先考虑隐蔽性时,BadWAM实例化保持想象的对抗攻击,试图在使模型预测的未来接近其纯净想象的同时引发有害的动作转变。我们在不同的WAM变体上评估BadWAM。结果表明,我们的攻击在闭环执行下大幅降低了任务成功率。例如,我们的仅动作攻击将模型性能从96.5%的成功率降至43.1%。我们的保持想象攻击结果进一步揭示了WAM特有的漏洞:适度的未来保持正则化可以保持强大的攻击性能,同时减少未来想象漂移。

英文摘要

World-action models (WAMs) are emerging as a promising foundation for embodied control: rather than predicting actions alone, they learn representations that couple action generation with future world prediction. This coupling is often viewed as a source of robustness, interpretability, and safety, as a robot's action can in principle be checked against its imagined future. In this paper, we show that this assumption is fragile. We introduce BadWAM, a unified framework for modeling and evaluating World-Action Drift Attacks: a new class of WAM-specific adversarial attacks that use small visual perturbations to break the alignment between what a WAM imagines and what it executes. BadWAM characterizes this attack surface along two natural criteria: attack strength and stealthiness. When the adversary prioritizes disruption, BadWAM instantiates an action-only adversarial attack, which directly drives the model toward task-failing actions. When the adversary additionally prioritizes stealth, BadWAM instantiates an imagination-preserving adversarial attack, which seeks to induce harmful action shifts while keeping the model's predicted future close to its clean imagination. Together, these two attacks capture a spectrum of WAM-specific failures: from overt action hijacking to stealthier cases where the model appears to imagine a plausible future but executes a desynchronized action. We evaluate BadWAM across different variants of WAMs. Results show that our attacks substantially reduce task success rates under closed-loop execution. For example, our action-only attack reduces the model performance from 96.5% to 43.1% success. The results of our imagination-preserving attack further exposes a WAM-specific vulnerability: moderate future-preserving regularization can maintain strong attack performance while reducing future imagination drift.

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2607.15200 2026-07-17 cs.CL cs.AI cs.LG 新提交

Mask-Aware Policy Gradients for Diffusion Language Models

用于扩散语言模型的掩码感知策略梯度

Haran Raajesh, Kulin Shah, Adam Klivans, Philipp Krähenbühl

发表机构 * The University of Texas at Austin(德克萨斯大学奥斯汀分校)

AI总结 研究针对强化学习扩展到MDLMs的难题,将MDLM生成形式化为两阶段动作MDP,使策略梯度分解为令牌项和掩码项,结合优化这两项在数学推理和编码基准测试中取得了最优成绩。

Comments Accepted at COLM 2026

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AI中文摘要

强化学习已被证明对改善大语言模型中的推理有效,但由于对数似然估计的难处理性,将其扩展到掩码扩散语言模型(MDLM)仍然具有挑战性。现有方法仅通过对令牌预测进行建模来近似此对数似然,忽略了生成过程中位置被解掩码的顺序。我们观察到MDLM生成在每个步骤涉及两个决策:在每个掩码位置放置什么令牌以及重新掩码哪些位置。我们将此形式化为两阶段动作MDP,表明策略梯度自然地分解为令牌项和掩码项。结合对这两个项的优化在数学推理和编码基准测试中产生了最先进的结果,在GSM8K上得分为87.1%,在MBPP上得分为53.4%。

英文摘要

Reinforcement learning has proven effective for improving reasoning in large language models, but extending it to Masked Diffusion Language Models (MDLMs) remains challenging due to the intractability of the log-likelihood estimation. Existing approaches approximate this log-likelihood by modeling only the token predictions, ignoring the order in which positions are unmasked during generation. We observe that MDLM generation involves two decisions at each step: what tokens to place at each masked position and which positions to remask. We formalize this as a two-stage action MDP, showing that the policy gradient naturally decomposes into a token term and a masking term. Combining optimization of both terms leads to state-of-the-art outcomes on mathematical reasoning and coding benchmarks, with scores of 87.1% on GSM8K and 53.4% on MBPP.

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2607.15193 2026-07-17 cs.AI 新提交

Plover: Steering GUI Agents through Plan-Centric Interaction

Plover:通过以计划为中心的交互来操控图形用户界面代理

Madhumitha Venkatesan, Shicheng Wen, Jiajing Guo, Jorge Piazentin Ono, Liu Ren, Dongyu Liu

发表机构 * University of California, Davis(加利福尼亚大学戴维斯分校) Bosch Research North America(博世北美研究院)

AI总结 研究针对现实中GUI自动化难题,提出以计划为中心的Plover系统,通过规划器-执行器架构,支持多方式监督与修正,经形成性研究和评估表明,该系统能让GUI自动化更透明、可控与可适应,利于修复故障。

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AI中文摘要

在现实世界环境中,图形用户界面(GUI)自动化颇具挑战,动态布局、意外对话框和不断变化的界面状态会使自主代理偏离用户意图。近期基于视觉的多模态代理虽通过直接操作截图和自然语言指令提高了灵活性,但规划和适应常处于内部,限制了用户检查、监督或纠正系统行为的能力。我们提出了Plover,这是一个以计划为中心的基于视觉的GUI自动化系统,它将任务计划和重新规划作为持久、可检查和可修订的工件外化。通过规划器-执行器架构,Plover支持对不断演变的执行进行明确监督,通过可编辑计划进行局部纠正、自然语言指导以及基于截图的干预,同时在修复过程中保留先前进度。一项有六名参与者的形成性研究为交互设计提供了参考。然后我们通过基准故障案例修复和基于场景的工作流程分析对Plover进行评估。结果表明,当计划可见且干预局部化时,许多自主GUI代理故障在结构上是可修复的,并且明确的重新规划有助于使GUI自动化更透明、可控和可适应。

英文摘要

Graphical user interface (GUI) automation remains challenging in real-world environments, where dynamic layouts, unexpected dialogs, and evolving interface states can cause autonomous agents to drift from user intent. Recent vision-based multimodal agents improve flexibility by operating directly over screenshots and natural language instructions, but planning and adaptation often remain internal, limiting users' ability to inspect, supervise, or correct system behavior. We present Plover, a plan-centric vision-based GUI automation system that externalizes task plans and replanning as persistent, inspectable, and revisable artifacts. Through a planner--executor architecture, Plover supports explicit supervision of evolving execution, localized correction through editable plans, natural-language guidance, and screenshot-grounded interventions, while preserving prior progress during repair. A formative study with six participants informed the interaction design. We then evaluate Plover through benchmark failure-case repair and scenario-based workflow analyses. Our results show that many autonomous GUI-agent failures are structurally repairable when plans remain visible and interventions are localized, and that explicit replanning helps make GUI automation more transparent, controllable, and adaptable.

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2607.15190 2026-07-17 cs.AI 新提交

Can We Trust Item Response Theory for AI Evaluation?

我们能信任项目反应理论进行人工智能评估吗?

Han Jiang, Sunbeom Kwon, Jinwen Luo, Ziang Xiao, Susu Zhang

发表机构 * Johns Hopkins University(约翰·霍普金斯大学) University of Illinois Urbana-Champaign(伊利诺伊大学厄巴纳-香槟分校) University of California, Los Angeles(加利福尼亚大学洛杉矶分校)

AI总结 研究探讨项目反应理论(IRT)用于人工智能评估的可靠性,利用六个大语言模型基准模拟响应矩阵,比较四种估计工具,评估IRT在多方面的表现,发现经典估计器在大型基准中可能不可行,可扩展估计器在特定模型集下可能产生不可靠推断。

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AI中文摘要

人工智能基准越来越多地利用项目级统计模型,特别是项目反应理论(IRT)来估计模型能力、对系统进行排名、选择信息丰富的示例以及诊断基准质量。然而,人工智能基准数据往往与最初开发标准IRT估计工具的人类测试数据模式不同。我们研究了这些模式不匹配如何挑战IRT建模在人工智能评估中的可靠性。通过六个广泛使用的大语言模型基准得出的项目参数和能力分布,模拟三种常见IRT模型下的响应矩阵,并比较四种估计工具。在18000个模拟条件下,系统评估IRT在模型排名、预测性能和项目特征推断方面的计算可行性、可扩展性和可靠性。结果表明,经典估计器在大型基准设置中可能变得不可行,而可扩展估计器在小或非正态分布模型集下可能产生不可靠的项目级和排名推断。本研究确定了潜在特质模型何时可靠支持或可能扭曲人工智能基准测试声明,以及需要何种样本量和诊断才能可靠使用。

英文摘要

AI benchmarks increasingly leverage item-level statistical models, particularly item response theory (IRT), to estimate model capabilities, rank systems, select informative examples, and diagnose benchmark quality. However, AI benchmark data often departs from the data regime of human testing, for which standard IRT estimation tools were originally developed: benchmarks typically involve fewer evaluated models, far more items, and capability distributions that may be skewed, clustered, or multimodal. We examine how these regime mismatches challenge the reliability of IRT modeling for AI evaluation. Using item parameters and capability distributions derived from six widely used LLM benchmarks, we simulate response matrices under three common IRT models and compare four estimation tools used in recent benchmark studies: marginal maximum likelihood, Markov chain Monte Carlo, variational inference, and a neural pseudo-Siamese estimator. Across 18,000 simulation conditions, we systematically evaluate computational feasibility, scalability, and the reliability of IRT inferences about model rankings, predicted performance, and item characteristics. Results show that classical estimators can become infeasible in large benchmark settings, whereas scalable estimators can produce unreliable item-level and ranking inferences with small or nonnormally distributed model sets. This study identifies when latent trait models reliably support or risk distorting AI benchmarking claims, and what sample sizes and diagnostics are needed for trustworthy use.

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2607.15180 2026-07-17 cs.LG cs.SY eess.SY 新提交

RTS Smoother-Guided Learning of Physics-Based Neural Differential Models

基于RTS平滑器引导的物理神经网络微分模型学习

Ahmet Demirkaya, Georgios Stratis, Tales Imbiriba, Zachary D. Danziger, Deniz Erdogmus

发表机构 * Northeastern University(东北大学) University of Massachusetts Boston(马萨诸塞大学波士顿分校) Emory University(埃默里大学)

AI总结 针对部分状态变量可测、动力学方程部分未知的情况,提出混合神经-物理框架,交替进行状态和参数估计,利用RTS平滑器和反向传播,能从测量中学习缺失的ODE组件,提升潜在状态重建和长期预测能力。

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AI中文摘要

常微分方程(ODEs)广泛用于物理、生物、神经科学和生理学中的动力系统建模,但在许多应用中,动力学的一些方程未知,只有部分状态变量可测量。我们提出了一种混合神经-物理框架,其中ODE的已知部分保持显式,缺失部分由神经网络表示。该方法包括两个阶段,在状态估计和参数估计之间交替迭代,直到满足预定标准。具体而言,第一步,将模型参数视为已知,使用Rauch-Tung-Striebel(RTS)平滑器从可用测量中推断潜在状态;第二步,将平滑后的轨迹视为已知,通过反向传播估计神经网络参数。我们在部分状态观测下的线性、非线性和刚性动力学的基准系统上评估了该方法。在这些设置中,该方法从不完整测量中学习缺失的ODE组件,同时利用并保留可解释的机制结构,改善潜在状态重建和长期预测。

英文摘要

Ordinary differential equations (ODEs) are widely used to model dynamical systems in physics, biology, neuroscience, and physiology, but in many applications some equations of the dynamics are unknown and only a subset of the state variables are measured. We propose a hybrid neural--physics framework in which the known components of the ODE are kept explicit and the missing components are represented by a neural network. The proposed method consists of two stages where we alternate between state and parameter estimation and iterate until a predetermined criterion is met. Specifically, in the first step, we treat the model parameters as being known and we infer the latent states from the available measurements using a Rauch--Tung--Striebel (RTS) smoother. In the second stage, we treat the smoothed trajectories as being known and use them to estimate the neural networks' parameters through backpropagation. We evaluate the method on benchmark systems spanning linear, nonlinear, and stiff dynamics under partial state observation. Across these settings, the proposed method learns missing ODE components from incomplete measurements while exploiting and retaining interpretable mechanistic structure and improving latent-state reconstruction and long-horizon prediction.

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2607.15178 2026-07-17 cs.CL cs.AI 新提交

T^2MLR: Transformer with Temporal Middle-Layer Recurrence

T^2MLR:具有时间中层循环的Transformer

Ziyang Cai, Xingyu Zhu, Yihe Dong, Yinghui He, Sanjeev Arora

发表机构 * Princeton University(普林斯顿大学)

AI总结 研究针对Transformer推理受自回归解码限制问题,提出T2MLR架构,将前token缓存中间层表示融合到当前token较早层,在自然语言预训练和多跳推理微调中表现优,且局部中层块应用循环效果好,还无需从头预训练,降低实际应用门槛。

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AI中文摘要

Transformer推理受自回归解码限制,通过token空间反复压缩丰富的隐藏计算,使中间推理状态难以持久。我们引入了具有时间中层循环(T2MLR)的Transformer,将前一个token的缓存中间层表示直接融合到当前token位置的较早层,使抽象中间计算在解码步骤中持久,推理开销小。在自然语言预训练和多跳推理微调中,T2MLR始终优于基线。仅对局部中层块应用循环(低至网络的20%)往往优于全层循环。T2MLR无需从头预训练,将循环路径改造到现有预训练的17亿参数Transformer并微调可显著提升数学推理。结果表明有效的Transformer潜在推理无需像以前那样遍历所有层,通过有针对性的中层循环即可更有效实现。

英文摘要

Transformer reasoning is limited by autoregressive decoding, which repeat edly compresses rich hidden computation through token space and makes it difficult for intermediate reasoning states to persist across time. We in troduce Transformers with Temporal Middle-Layer Recurrence (T2MLR), a transformers-based latent reasoning architecture that fuses a cached middle layer representation from the previous token directly into an earlier layer of the current token position, enabling abstract intermediate computation to persist across decoding steps with little inference overhead. Across natural-language pretraining and multi-hop reasoning finetuning, T2MLR consistently outperforms data- and parameter-matched Transformer base lines. Moreover, applying recurrence to only a localized middle-layer block (as little as 20% of the network) often outperforms full-layer recurrence. Im portantly, T2MLR does not require pretraining from scratch: retrofitting the recurrent pathway into an existing pretrained 1.7B Transformer and briefly finetuning substantially improves math reasoning, lowering the barrier to practical adoption. These results suggest that effective latent reasoning in Transformers does not require looping over all layers as in previous works, but can instead emerge more strongly from targeted middle-layer recurrence.

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2607.15176 2026-07-17 cs.AI cs.CL cs.HC 新提交

Benchmarking Multimodal Large Language Models for Scientific Visualization Literacy

用于科学可视化素养的多模态大语言模型基准测试

Patrick Phuoc Do, Chau M. Ta, Chaoli Wang

发表机构 * University of Notre Dame(圣母大学)

AI总结 研究对六个多模态大语言模型进行科学可视化素养基准测试,涵盖多种技术和任务类型。通过封闭世界协议评估闭源和开源模型,与人类参与者数据对比。发现模型表现不均,Gemini最强,开源模型低于人类基线,明确SciVis素养对评估多模态AI系统的必要性。

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AI中文摘要

多模态大语言模型(MLLMs)越来越多地用于解释可视化,但目前的评估主要以图表为中心,对科学可视化(SciVis)理解的证据有限。我们在科学可视化素养评估测试中对六个MLLMs进行基准测试,该测试是一项标准化的SciVis素养评估,包括基于18个科学可视化和插图的49个项目,涵盖8种技术和11种任务类型。我们在封闭世界协议下评估了三个闭源模型和三个开源模型,并使用485名人类参与者的数据比较了它们的性能。结果表明,当前的MLLMs没有表现出统一的SciVis素养。Gemini是总体上最强的模型,在评估子集中超过了人类平均水平,而开源模型仍低于人类基线。不同技术和任务的性能差异很大:模型在科学插图、搜索和空间理解方面表现最佳,但在基于纹理和基于集成的可视化以及定量估计方面存在困难。错误分析揭示了在细粒度定量估计、流向解释和基础编码解释方面反复出现的失败。这些发现将SciVis素养定位为评估多模态人工智能系统的必要基准维度。我们的代码和模型输出可在这个https URL上公开获取。

英文摘要

Multimodal large language models (MLLMs) are increasingly used to interpret visualizations, yet current evaluations remain largely chart-centric and provide limited evidence of understanding of scientific visualization (SciVis). We benchmark six MLLMs on the scientific visualization literacy assessment test, a standardized SciVis literacy assessment comprising 49 items based on 18 scientific visualizations and illustrations, spanning 8 techniques and 11 task types. We evaluate three closed-source and three open-source models under a closed-world protocol and compare their performance using data from 485 human participants. Results show that current MLLMs do not exhibit uniform SciVis literacy. Gemini is the strongest model overall, exceeding the human mean across the evaluated subsets, whereas the open-source models remain below the human baseline. Performance is highly uneven across techniques and tasks: models perform best on scientific illustration, search, and spatial understanding, but struggle on texture-based and integration-based visualizations and on quantitative estimation. Error analysis reveals recurring failures in fine-grained quantitative estimation, flow-direction interpretation, and grounded encoding interpretation. These findings position SciVis literacy as a necessary benchmark dimension for evaluating multimodal AI systems. Our code and model outputs are publicly available at https://github.com/patdmp/mllm-scivis-lit-benchmark.

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2607.15175 2026-07-17 cs.CL 新提交

Linear representations of grammaticality in neural language models

神经语言模型中语法性的线性表示

Jane Li, Najoung Kim

发表机构 * Johns Hopkins University(约翰·霍普金斯大学) Boston University(波士顿大学)

AI总结 探讨神经语言模型能否基于语法性区分字符串,通过质量均值探测研究语法性是否编码在其内部表示中,结果表明语法性在多种预训练模型中有力编码,为相关争论提供新证据及评估框架。

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AI中文摘要

神经语言模型是否具备基于语法性区分字符串的能力在计算语言学文献中仍是一个有争议的话题。现有证据大多依赖基于概率的度量。本文超越基于概率的评估,通过质量均值探测研究语法性是否编码在神经语言模型的内部表示中,测试语法和非语法句子在表示空间中是否系统分离,还考察了表示与相关属性的独立性及跨语法现象和语言的泛化性。结果表明语法性在多种预训练神经语言模型的句子表示中得到有力编码,这为语言模型句法知识本质的争论提供了新证据,也提供了不依赖字符串概率的语法能力评估框架。

英文摘要

Whether neural language models (NLMs) possess the ability to distinguish strings on the basis of their grammaticality remains a debated topic in the computational linguistics literature. Existing evidence has largely relied on probability-based measures, testing whether models assign higher probabilities to grammatical than ungrammatical strings. However, probability comparisons have been criticized as a measure for grammatical knowledge based on the assumption that grammaticality is inherently entangled with likelihood. Model-assigned probability is a function of many related sentence properties, such as lexical frequency, plausibility, and world knowledge. In this work, we move beyond probability-based evaluations and investigate whether grammaticality is encoded in the internal representations of NLMs. Using mass-mean probing, we test whether grammatical and ungrammatical sentences are systematically separated in representational space. We further examine the extent to which these representations are independent of sentence properties that are correlated with grammaticality, as well as their generalization across grammatical phenomena and languages. Our results provide evidence that grammaticality is robustly encoded in sentence representations of a wide range of pretrained NLMs, yielding clear representational separation on the dimension of grammaticality that cannot be fully explained by alternative sentence-level factors. Moreover, this encoding generalizes across a broad range of grammatical phenomena and to some degree, across languages, suggesting that grammaticality constitutes a coherent representational dimension in contemporary NLMs. These findings contribute new evidence to debates about the nature of syntactic knowledge in language models and offer a complementary framework for evaluating grammatical competence that is not dependent on string probabilities alone.

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2607.15172 2026-07-17 cs.RO 新提交

AHEAD: Anticipatory Hand-Driven Teleoperation via Human Intent Prediction

AHEAD:通过人类意图预测实现预期的手动驱动遥操作

Seok Joon Kim, Junho Lee, Federica Spinola, Taein Kwon, Mohsen Moghaddam

发表机构 * Georgia Institute of Technology(佐治亚理工学院) Neuromeka Ltd.(Neuromeka有限公司) INRIA(法国国家信息与自动化研究所) University of Oxford(牛津大学)

AI总结 研究旨在减少机器人反应时间并降低操作员工作量,提出AHEAD实时VR遥操作系统,通过处理手和头部信号及场景上下文预测意图,转换为稳定目标,该系统意图预测准确率高,能有效减少延迟并降低操作员负荷。

Comments Accepted to IROS2026, 8 pages, 6 figures

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AI中文摘要

直接手动驱动遥操作能精确控制,但在接近、抓取和放置过程中需持续监控和校正,效率低且易疲劳。监督式遥操作虽简化流程,但有延迟。为解决如何减少机器人反应时间并降低操作员工作量的问题,提出AHEAD实时VR遥操作系统。在数字孪生中,操作员自然执行抓取和放置,AHEAD通过基于注意力的分类器处理手和头部信号及场景上下文来预测意图,状态机将意图预测转换为稳定目标。其意图预测模块在抓取对象和目标插槽上的Top1准确率达76%,用户研究表明AHEAD相对于基线分别减少了0.6秒(对象)和1.4秒(插槽)的机器人反应延迟,还降低了操作员负荷。

英文摘要

Direct hand-driven teleoperation maps an operator's hand motion to robot end-effector commands at every frame, enabling precise control, but it requires constant monitoring and correction during approach, grasp, and placement, which can be slow and fatiguing. For repetitive pick-and-place tasks, supervisory (goal-based) teleoperation simplifies this process: the operator specifies goals/waypoints, and the robot executes the motion using planning algorithms. Yet, this introduces latency, as the robot must wait for the next command before it can plan and act. "How can we reduce robot reaction time while lowering operator workload?" To tackle this question, we present AHEAD, a real-time VR teleoperation system that anticipates operator intent to enable proactive, hand-driven control. In a digital twin, the operator performs pick-and-place naturally, using hand motion to convey high-level commands rather than a continuous robot trajectory. AHEAD processes a short window of 3D hand and head signals together with scene context through an attention-based classifier to predict the intended grasp object and placement slot. A state machine converts intent predictions into stable robot goals, enabling early motion while remaining stable under noisy predictions and corrective hand movements. AHEAD's intent prediction module achieves Top1 accuracy: 76% for grasp objects and 76% for target slots. Moreover, our user study shows AHEAD reduces robot reaction latency by 0.6 s (object) and 1.4 s (slot) relative to baselines. Participants also reported lower operator load, indicating faster robot responses while maintaining low operator effort in practice.

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