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2607.11886 2026-07-14 cs.CV 新提交

Read It Back: Pretrained MLLMs Are Zero-Shot Reward Models for Text-to-Image Generation

读回:预训练的多模态语言模型是文本到图像生成的零样本奖励模型

Runhui Huang, Qihui Zhang, Zhe Liu, Yu Gao, Jie Wu, Hengshuang Zhao

发表机构 * The University of Hong Kong(香港大学) ByteDance Seed(字节跳动Seed) Peking University(北京大学)

AI总结 研究提出SpectraReward将预训练多模态语言模型转为图像生成强化学习奖励模型,用图像条件提示对数似然作奖励,还引入Self-SpectraReward形成闭环框架。经广泛实验验证,二者能提升生成性能,表明奖励-策略对齐是关键。

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AI中文摘要

在本文中,我们提出了SpectraReward,一种无需训练的奖励函数,它将预训练的多模态语言模型转变为用于图像生成强化学习的现成奖励模型。SpectraReward不是要求多模态语言模型判断生成的图像或回答分解的验证问题,而是通过单次图像条件下的教师强制前向传递来衡量从生成的图像中恢复原始提示的程度。我们使用平均图像条件提示对数似然作为奖励,直接重用多模态语言模型的预训练图像-文本对齐能力,无需偏好标签和奖励模型微调。我们进一步引入了Self-SpectraReward,这是统一多模态模型的一种特殊情况,其中策略自身的理解分支作为其生成分支的奖励模型,形成了一个无需外部奖励模型或外部知识的闭环自我改进框架。广泛的实验通过涵盖两个扩散模型、三种强化学习算法、来自四个多模态语言模型家族的九个奖励多模态语言模型主干(参数跨度从4B到235B)以及五个分布外文本到图像基准的广泛图像生成强化学习研究验证了SpectraReward。结果表明,SpectraReward和Self-SpectraReward都显著且持续地提高了生成性能,并且优于先前基于多模态语言模型的奖励训练方法。进一步的分析表明,更大的奖励多模态语言模型并不总是更好,而Self-SpectraReward可以匹配或超过大得多的外部奖励模型,这表明奖励-策略对齐是有效图像生成强化学习的关键因素。

英文摘要

In this paper, we propose SpectraReward, a training-free reward function that turns pretrained MLLMs into off-the-shelf reward models for image-generation reinforcement learning. Instead of asking the MLLM to judge a generated image or answer decomposed verification questions, SpectraReward measures how well the original prompt can be recovered from the generated image through a single image-conditioned, teacher-forced forward pass. We use the average image-conditioned prompt log-likelihood as the reward, directly reusing the MLLM's pretrained image-text alignment ability without preference labels, reward-model fine-tuning. We further introduce Self-SpectraReward, a special case for unified multimodal models where the policy's own understanding branch serves as the reward model for its generation branch, forming a closed-loop self-improving framework without external reward models or external knowledge. Extensive experiments validate SpectraReward through a broad image-generation RL study covering two diffusion models, three RL algorithms, nine reward MLLM backbones from four MLLM families spanning 4B to 235B parameters, and five out-of-distribution text-to-image benchmarks. Results show that both SpectraReward and Self-SpectraReward significantly and consistently improve generation performance and outperform prior MLLM-derived reward training methods. Further analysis reveals that larger reward MLLMs are not always better, while Self-SpectraReward can match or surpass much larger external reward models, suggesting that reward-policy alignment is a key factor for effective image-generation RL. Project Page: https://huangrh99.github.io/SpectraReward/

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2607.11885 2026-07-14 cs.CV cs.GR 新提交

Latent-Identity Tuning in Text-to-Image Personalization Models

文本到图像个性化模型中的潜在身份调整

Daniel Garibi, Ronen Kamenetsky, Hadar Averbuch-Elor, Daniel Cohen-Or, Or Patashnik

发表机构 * Tel Aviv University(特拉维夫大学) Cornell University(康奈尔大学)

AI总结 研究文本到图像个性化模型中细粒度身份调整问题,利用预训练冻结编码器潜在空间,无需额外训练,通过揭示潜在语义方向实现局部、细粒度且语义连贯的面部编辑,经实验验证有效。

Comments Project page at: https://garibida.github.io/IdentityTuning/

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AI中文摘要

生成和编辑人脸需要高精度,因为即使是细微修改也可能显著改变人物身份。当前基于通用文本到图像模型的个性化和编辑方法往往缺乏细粒度面部编辑所需的精度。我们提出一种文本到图像个性化模型中的细粒度身份调整方法。与在给定图像上操作的标准图像编辑不同,身份调整修改特定身份的潜在表示,能生成一致描绘相同编辑身份的多样图像。为实现细粒度潜在身份调整,我们探索预训练、冻结编码器的潜在空间。该方法无需额外训练,利用冻结编码器现有架构揭示潜在语义方向。此空间由一组潜在令牌组成,它们在捕捉身份不同方面发挥不同作用,常对应特定空间或语义面部区域。我们表明可在此空间及所选令牌定义的子空间内识别有意义的方向,实现局部、细粒度且语义连贯的编辑。通过定性和定量实验验证了该方法,展示了多样的局部面部编辑,同时保持跨图像身份一致性。

英文摘要

Generating and editing a person's face demands high precision, as even minor modifications can significantly alter a subject's perceived identity. Current personalization and editing methods built on general-purpose text-to-image models, however, often lack the precision required for fine-grained facial edits. We present a method for fine-grained identity tuning in text-to-image personalization models. Unlike standard image editing, which operates on a given image, identity tuning modifies the latent representation of a specific identity, enabling the generation of diverse images that consistently depict the same edited identity. To enable fine-grained latent identity tuning, we explore the latent space of a pre-trained, frozen encoder for text-to-image personalization. Our approach requires no additional training. Instead, it leverages the existing architecture of a frozen encoder to uncover latent semantic directions. This space consists of a set of latent tokens that play distinct roles in capturing different aspects of an identity and often correspond to specific spatial or semantic facial regions. We show that meaningful directions can be identified within this space and within subspaces defined by selected tokens, enabling localized, fine-grained, and semantically coherent edits. We validate our approach through qualitative and quantitative experiments that demonstrate diverse localized facial edits while preserving cross-image identity consistency. Project page at: https://garibida.github.io/IdentityTuning/

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2607.11884 2026-07-14 cs.RO 新提交

Mixture of Frames Policy: Multi-Frame Action Denoising for Bimanual Mobile Manipulation

帧混合策略:用于双手机器人移动操作的多帧动作去噪

Dian Wang, Jisang Park, Xiaomeng Xu, Han Zhang, Shuran Song, Jeannette Bohg

发表机构 * Stanford University(斯坦福大学)

AI总结 研究双手机器人移动操作中多帧动作去噪问题,提出帧混合策略(MoF),通过在多坐标框架同步去噪,维护规范扩散状态并融合噪声预测,在模拟和实际任务中均优于单帧基线。

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AI中文摘要

机器人操作本质上是多帧的:局部动作在末端执行器框架中可能简单,而运输、直立物体处理和全身协调在基对齐框架中表现更好。然而,现代基于扩散的视觉运动策略通常采用单个预定义动作框架,迫使一个去噪器对该框架中往往不必要复杂的动作分布进行建模。我们提出了帧混合策略(MoF),一种在多个坐标框架上执行同步动作去噪的扩散策略。MoF 维护单个规范扩散状态,在几个与任务相关的框架中重新表达它,应用特定于框架的去噪器,并将它们的噪声预测融合回规范框架。为了使中间噪声扩散状态能够做到这一点,我们在 SE(3)动作参数化中引入了基于列的 6D 旋转表示,该表示支持精确、可微的框架变换,而无需噪声旋转位于 SO(3)流形上。在九个模拟双手机器人操作任务中,我们表明最佳动作框架取决于任务,并且 MoF 优于 oracle 框架选择和标准专家混合(MoE)基线。我们还在两个实际双手机器人移动操作任务上评估了 MoF,证明它优于所有组成的单帧基线。项目主页:这个 https URL

英文摘要

Robotic manipulation is inherently multi-frame: local actions may be simple in an end-effector frame, while transport, upright-object handling, and whole-body coordination are better represented in a base-aligned frame. However, modern diffusion-based visuomotor policies typically commit to a single predefined action frame, forcing one denoiser to model action distributions that are often unnecessarily complex in that frame. We propose Mixture of Frames Policy (MoF), a diffusion policy that performs synchronized action denoising across multiple coordinate frames. MoF maintains a single canonical diffusion state, re-expresses it in several task-relevant frames, applies frame-specialized denoisers, and fuses their noise predictions back in the canonical frame. To make this possible for intermediate noisy diffusion states, we introduce a column-based 6D rotation representation within an SE(3) action parameterization that supports exact, differentiable frame transformations without requiring noisy rotations to lie on the SO(3) manifold. Across nine simulated bimanual manipulation tasks, we show that the best action frame is task-dependent and that MoF improves over oracle frame selection and standard Mixture-of-Experts (MoE) baselines. We further evaluate MoF on two real-world bimanual mobile manipulation tasks, demonstrating that it outperforms all constituent single-frame baselines. Project homepage: https://mofpo.github.io

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2607.11883 2026-07-14 cs.LG 新提交

Requential Coding: Pushing the Limits of Model Compression with Self-Generated Training Data

顺序编码:利用自生成训练数据突破模型压缩的极限

Shikai Qiu, Marc Finzi, Yujia Zheng, Kun Zhang, Andrew Gordon Wilson

发表机构 * New York University(纽约大学) Carnegie Mellon University(卡内基梅隆大学)

AI总结 研究利用自生成训练数据的顺序编码突破模型压缩极限,教师模型从学生分布选样本,学生代码记录选择,代码长度与参数和熵无关且更短,还能揭示现象、给出泛化保证、隔离可学习信息。

Comments Code available at https://github.com/shikaiqiu/requential-coding

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AI中文摘要

压缩对于智能至关重要。能够将训练数据表示为短代码的模型发现了有助于泛化的规律。大型神经网络可能学习的函数比其参数数量所显示的要简单得多,但构建实现这种简单性的代码具有挑战性。基于参数的方法如量化产生的代码长度与模型大小成比例,对参数存储的信息量不敏感。顺序编码通过压缩训练轨迹绕过了这个问题,但对确切的数据序列进行编码,而不管模型学习了多少,当数据具有高熵时会产生大代码。我们引入顺序编码,其中教师模型从学生自身的分布中选择训练样本。学生的代码只记录这些选择,只有在教师和学生意见不一致时才花费比特。由此产生的代码长度与参数数量和数据熵无关,并且通常比顺序编码的对应物短几个数量级,优势随着规模的增加而增长。这种压缩揭示了先前压缩器无法触及的现象。在保持损失固定的情况下,尽管参数更多,更大的模型和集成压缩到更小的尺寸。将顺序编码插入 PAC - 贝叶斯界,为数十亿参数的语言模型产生了最先进的泛化保证,甚至在零误差的情况下也优于基于激进的训练后量化构建的界。在计算最优状态下,随着模型相对于数据集大小变得越来越可压缩,该界随着规模而收紧。相同的代码预测,当模型训练多个 epoch 时会逐渐过拟合。它还将数据集中可学习的信息与其不可预测的随机内容隔离开来,揭示出低熵文本比高熵图像数据拥有更多可学习的结构。

英文摘要

Compression is fundamental to intelligence. A model that can represent its training data as a short code has discovered regularities that enable generalization. Large neural networks may learn functions far simpler than their parameter counts suggest, but it is challenging to construct codes that realize this simplicity. Parameter-based methods such as quantization produce code lengths that scale with model size, insensitive to how much information the parameters store. Prequential coding bypasses this issue by compressing the training trajectory, but codes the exact data sequence regardless of how much the model learns, yielding large codes when the data has high entropy. We introduce requential coding, where a teacher model selects training samples drawn from the student's own distribution. The student's code records only these selections, which cost bits only where teacher and student disagree. The resulting code length is independent of parameter count and data entropy, and often orders of magnitude shorter than the prequential counterpart, with an advantage that grows with scale. This compression sheds light on phenomena inaccessible to prior compressors. Holding loss fixed, larger models and ensembles compress to much smaller sizes despite more parameters. Plugged into a PAC-Bayes bound, the requential code yields state-of-the-art generalization guarantees for billion-parameter LLMs, outperforming bounds built on aggressive post-training quantization even granted zero error. The bound tightens with scale in the compute-optimal regime, as models become increasingly compressible relative to dataset size. The same code predicts that models gradually overfit when trained for multiple epochs. It also isolates the learnable information in a dataset from its unpredictable, random content, revealing that lower-entropy text holds far more learnable structure than higher-entropy image data.

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2607.11881 2026-07-14 cs.CL cs.AI 新提交

Metacognition in LLMs: Foundations, Progress, and Opportunities

大语言模型中的元认知:基础、进展与机遇

Gabrielle Kaili-May Liu, Areeb Gani, Jacqueline Lu, Jordan Thomas, Mark Steyvers, Arman Cohan

发表机构 * Yale University(耶鲁大学) University of California, Irvine(加利福尼亚大学欧文分校)

AI总结 本文全面概述大语言模型元认知知识现状,分析分类该领域,总结技术进展,涵盖测量评估方法、引发改进应用技术等,还讨论相关应用、问题挑战及未来方向,为该主题研究提供综述与指引。

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AI中文摘要

元认知是智能的基础组成部分,对有效学习、问题解决、决策、沟通等至关重要。近年来,它日益被视为强大、透明的人工智能系统的基石。尽管大语言模型在各种现实世界任务中取得了重大进展,但尚不清楚它们何时、如何或在多大程度上能展现或被赋予有效的元认知能力,以及如何利用这些能力提升人工智能系统的基本能力、可靠性和智能。本文首次全面概述了大语言模型元认知的知识现状,分析并分类了这一新兴领域,总结了近期技术进展,包括测量和评估大语言模型元认知能力的方法和基准、在大语言模型中引发、改进和应用元认知的技术,以及正在进行的研究的发现和启示。还讨论了应用、开放问题和挑战以及未来工作的有前景方向。旨在提供该主题的详细最新综述并激发有意义的研究和讨论。

英文摘要

Metacognition is a foundational component of intelligence critical to effective learning, problem solving, decision-making, communication, and more. In recent years, it has become increasingly recognized as a cornerstone of capable, transparent AI systems. Yet while LLMs have made significant progress across diverse real-world tasks, it is not yet clear when, how, or to what extent they can exhibit or be endowed with effective metacognitive abilities, nor how such abilities can be adapted to advance the fundamental capabilities, reliability, and intelligence of AI systems. This paper bridges this gap by presenting the first comprehensive overview of the current state of knowledge on metacognition for LLMs. We analyze and taxonomize the landscape of this emerging field and summarize recent technical advancements, including methods and benchmarks to measure and evaluate LLMs' metacognitive abilities, techniques to elicit, improve, and apply metacognition in LLMs, and findings and implications of ongoing research. We also discuss applications, open questions and challenges, and promising directions for future work. Our aim is to provide a detailed and up-to-date review of this topic and stimulate meaningful research and discussion. An organized list of papers can be found at https://github.com/yale-nlp/LLM-Metacognition.

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2607.11875 2026-07-14 cs.LG cs.AI 新提交

Invariant Learning Dynamics of Transformers in Inductive Reasoning Tasks

归纳推理任务中Transformer的不变学习动态

Tiberiu Musat, Tiago Pimentel, Nicholas Zucchet, Thomas Hofmann

发表机构 * ETH Zurich(苏黎世联邦理工学院) Stanford(斯坦福大学)

AI总结 该研究提出理论框架解释Transformer语言模型归纳推理能力,研究广义归纳任务,证明其训练动态可限制在低维不变流形,刻画数据统计对学习竞争的影响,探讨初始化作用并展示坐标框架用途,向Transformer学习预测理论迈进。

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AI中文摘要

我们提出一个理论框架来解释Transformer语言模型中归纳推理能力的出现。以往关于Transformer学习动态的工作大多局限于特定任务,我们研究了一类广义归纳任务,它统一了文献中已知的几个合成任务,包括上下文n元语法和多跳推理。在此类任务中,我们从理论上证明了注意力模型的训练动态可以被限制在一个高度可解释的低维不变流形上。在这个流形上,学习动态由少数可解释坐标而非数百万参数捕捉,使理论和实证分析更易处理。利用此框架,我们刻画了数据统计如何控制上下文学习和权重学习之间的竞争,研究了随机初始化如何在多个解决方案可行时确定“获胜”电路,还证明了与流形相关的坐标框架可用于自动检测训练模型中学习到的电路。通过将电路形成视为低维动态现象,我们朝着Transformer学习的预测理论迈进了一步。

英文摘要

We present a theoretical framework to explain the emergence of inductive reasoning abilities in Transformer language models. While previous works on Transformer learning dynamics have so far been mostly tied to specific tasks, we study a generalized class of inductive tasks that unifies several synthetic tasks known in the literature, including in-context n-grams and multi-hop reasoning. In this class, we theoretically prove that the training dynamics of attention models can be confined to a highly interpretable, low-dimensional invariant manifold. On this manifold, the learning dynamics are captured by a handful of interpretable coordinates rather than millions of parameters, making both theoretical and empirical analysis more tractable. Using this framework, we characterize how data statistics govern the competition between in-context and in-weights learning, we study how random initializations determine the `winning' circuit when multiple solutions are possible, and we demonstrate that the coordinate frame associated with the manifold can be used to automatically detect which circuits have been learned in trained models. By casting circuit formation as a low-dimensional dynamical phenomenon, we take a step toward a predictive theory of how Transformers learn.

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2607.11874 2026-07-14 cs.RO cs.AI cs.LG 新提交

A Minimalist Retargeting-Guided Reinforcement Learning Recipe for Dexterous Manipulation

一种用于灵巧操作的极简重定向引导强化学习方法

Yunhai Feng, Natalie Leung, Jiaxuan Wang, Lujie Yang, Haozhi Qi, Preston Culbertson

发表机构 * Cornell University(康奈尔大学) Amazon FAR(亚马逊FAR)

AI总结 研究如何将重定向引导强化学习用于灵巧操作,提出REGRIND方法,从单人演示学习策略,经重定向、模拟训练、零样本转移到硬件,在丰富接触任务中产生类人行为,还分析了模拟到现实转移的关键因素。

Comments Website: https://yunhaifeng.com/REGRIND

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AI中文摘要

近期人形机器人全身控制的工作通过简单方法取得成功:将人类运动重定向到机器人运动学参考,然后通过强化学习训练策略来跟踪。但该方法在灵巧操作中如何应用并不明确,因操作涉及复杂动力学。我们提出REGRIND,一种极简重定向引导强化学习流程,从单人演示中学习灵巧操作策略。它将人类手部与物体运动重定向到保留手部与物体空间及接触关系的机器人参考,在模拟中训练残差强化学习策略以跟踪沿该参考的以物体为中心的关键点,并通过仔细的系统识别将策略零样本转移到硬件。在丰富接触的工具使用任务中,该策略在两种不同多指手上产生流畅、类人行为。通过系统硬件实验,识别并分析了灵巧操作中模拟到现实转移的关键因素,为丰富接触场景下基于重定向的学习提供实用指导。

英文摘要

Recent work in humanoid whole-body control has found success with a simple recipe: retarget human motion to robot kinematic references, then train policies via reinforcement learning (RL) to track them. But how does this recipe transfer to dexterous manipulation? The answer is not obvious, as manipulation involves complex, contact-rich dynamics and requires delicate regulation of contact modes and forces. We present REGRIND, a minimalist retargeting-guided RL pipeline that learns dexterous manipulation policies from a single human demonstration. REGRIND retargets human hand-object motion to a robot reference that preserves hand-object spatial and contact relationships, trains a residual RL policy in simulation to track object-centric keypoints along that reference, and transfers the resulting policy zero-shot to hardware with careful system identification. The resulting policies produce fluid, human-like behavior on two different multi-fingered hands across contact-rich tool-use tasks, including operating a pair of scissors and turning a screwdriver. Through systematic hardware experiments, we identify and analyze the key factors that govern sim-to-real transfer in dexterous manipulation, offering practical guidance for retargeting-based learning in contact-rich settings. Videos and code are available at https://yunhaifeng.com/REGRIND.

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2607.11873 2026-07-14 cs.CL cs.LG 新提交

A Durability and Cross-Language Transfer Benchmark for a Validated Teaching-Feedback Classification Protocol

用于经过验证的教学反馈分类协议的耐久性和跨语言转移基准

Esteban U. Vega Barajas

发表机构 * Universidad de Guadalajara(瓜达拉哈拉大学)

AI总结 研究教学反馈分类协议的复用性问题,通过在原始西班牙数据上跨三代表示方法重新运行,并转移到英语,发现该协议具有耐久性,模型选择是部署决策而非方法特性。

Comments 12 pages, 2 figures

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AI中文摘要

机构收集的开放式教学评估反馈数量远超其阅读量。先前研究引入了一种经过验证的协议,通过主题类别和情感对这类评论进行分类,该协议基于文档化的注释指南、注释者内部可靠性测量、分层交叉验证以及对西班牙机构语料库采用冻结编码器设计进行的保留评估构建。有两个问题限制了其复用性:随着表示方法的发展,固定于2019年时代冻结嵌入的协议是否仍具竞争力,以及它是否能转移到第二语言。我们在原始西班牙数据上跨三代表示方法重新运行该协议,并将其情感任务转移到英语。我们发现该协议具有耐久性,模型选择是部署决策而非方法特性。

英文摘要

Institutions collect far more open-ended teaching-evaluation feedback than they read. A prior study introduced a validated protocol for classifying such comments by thematic category and sentiment, built from a documented annotation guide, an intra-annotator reliability measurement, stratified cross-validation, and a held-out evaluation on a Spanish institutional corpus with a frozen-encoder design. Two questions limit its reuse: whether a protocol fixed to 2019-era frozen embeddings stays competitive as representation methods advance, and whether it transfers to a second language. We re-run it on the original Spanish data across three representation generations, sparse lexical features, frozen transformer embeddings, and prompted large language models, and transfer its sentiment task to English with a balanced 45,000-comment corpus checked against an aspect-labeled education dataset. Treating paired comparisons as descriptive, we find the protocol durable: a 2026 frontier model posts the highest thematic F1 on the hardest Spanish task, yet shows no sentiment advantage over a cheap model and no descriptive separation from it on English, so model choice is a deployment decision, not a property of the method.

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2607.11871 2026-07-14 cs.LG cs.AI cs.CL 新提交

Inside the Unfair Judge: A Mechanistic Interpretability Account of LLM-as-Judge Bias

剖析不公平的评判者:基于大语言模型作为评判者的偏差的机械可解释性分析

Zixiang Xu, Sixian Li, Huaxing Liu, Xiang Wang, Shuai Li, Zirui Song, Xiuying Chen

发表机构 * AMAP, Alibaba Group(阿里巴巴集团AMAP实验室) Mohamed bin Zayed University of Artificial Intelligence(穆罕默德·本·扎耶德人工智能大学) University of Southern California(南加州大学) University of Michigan, Ann Arbor(密歇根大学安娜堡分校)

AI总结 研究大语言模型作为评判者的偏差,提出偏差在隐藏状态有表示层面解释。通过七位评判者等实验发现,偏差输入沿特定子空间移动,操纵隐藏状态可控制评分,线性投影能预测评判失败,统一多方面内容。

Comments 58 pages, 13 figures, 30 tables; project page: https://xzx34.github.io/unfair-judge/

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AI中文摘要

现有的关于大语言模型作为评判者评分偏差的研究主要在输入-输出层面进行:扰动输入、测量分数变化并提出提示级别的缓解措施。我们认为,同样的偏差在评判者的隐藏状态中存在一种表示层面的解释,它与输入-输出观点互补,并且在操作上具有实用价值。我们报告了三项发现,涉及七位评判者、七种偏差类型和九个基准。几何学方面:基线评判输入占据一个紧密的激活流形,而有偏差的输入则沿着一个低维的、特定类型的子空间移动,该子空间随深度而锐化,并能被三类估计器一致地恢复。因果控制方面:沿着这个子空间操纵隐藏状态会在两个方向上驱动评分,正向移动在干净输入上重现偏差评分,反向移动在有偏差的输入上恢复基线评分,而匹配范数的随机方向产生的移动则小一个数量级。操作方面:在相同偏差方向特征上的简单线性投影能够预测在三个完全未见过的基准上的评判失败,显著优于基于文本的替代方法。将偏差视为激活几何学,而非输入-输出噪声,在一个单一框架内统一了几何结构、因果控制和操作预测。项目页面可在这个https链接获取。

英文摘要

Existing studies of LLM-as-judge scoring bias work predominantly at the input-output level: they perturb inputs, measure score deltas, and propose prompt-level mitigations. We argue that the same biases admit a representation-level account in the judge's hidden state, complementary to the input-output view and operationally useful in ways it does not afford. We report three findings, across seven judges, seven bias types, and nine benchmarks. Geometry: baseline judging inputs occupy a tight activation manifold while biased inputs are displaced along a low-dimensional, type-specific subspace that sharpens with depth and is recovered consistently by three families of estimators. Causal control: steering hidden states along this subspace drives scoring in both directions, forward shifts reproducing biased scoring on clean inputs and reverse shifts restoring baseline scoring on biased ones, while matched-norm random directions produce shifts an order of magnitude smaller. Operational: a simple linear projection onto the same bias-direction features anticipates judge failures on three entirely unseen benchmarks, substantially outperforming text-based alternatives. Reading bias as activation geometry, rather than as input-output noise, unifies geometric structure, causal control, and operational prediction within a single framework. The project page is available at https://xzx34.github.io/unfair-judge/

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2607.11862 2026-07-14 cs.CV cs.AI 新提交

Evidence-Backed Video Question Answering

有证据支持的视频问答

Shijie Wang, Honglu Zhou, Ziyang Wang, Ran Xu, Caiming Xiong, Silvio Savarese, Chen Sun, Juan Carlos Niebles

发表机构 * Salesforce, Palo Alto, CA, USA(Salesforce公司) Brown University, Providence, RI, USA(布朗大学)

AI总结 研究视频问答中模型缺乏可视化依据的问题,提出E-VQA任务及ST-Evidence基准,开发数据集ST-Evidence-Instruct,通过微调提高模型表现,为可解释的视频理解建立基线。

Journal ref ECCV 2026

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AI中文摘要

当前的视频大语言模型在问答方面表现出色,但大多像黑匣子一样运作,提供无可视化依据的文本答案。现有的可解释性方法依赖文本理由或稀疏边界框,难以捕捉复杂的视频动态。我们提出有证据支持的视频问答(E-VQA),要求模型联合输出语义答案和精确的时空证据。为此引入ST-Evidence基准,评估显示问答准确性和真正视觉感知之间存在关键解耦。我们开发数据集ST-Evidence-Instruct,在该数据上微调可提高模型表现,为可解释的视频理解建立了强大基线。

英文摘要

Current Video Large Language Models (Video LLMs) excel in question answering (QA) but largely operate as black boxes, providing textual answers without verifiable visual grounding. Existing explainability efforts rely on textual rationales or sparse bounding boxes, which struggle to capture complex video dynamics such as occlusions and non-rigid deformations. We propose Evidence-Backed Video Question Answering (E-VQA), a novel task requiring models to jointly output a semantic answer and precise spatio-temporal evidence: temporal segments and dense, tracked object segmentation masklets. To support this, we introduce ST-Evidence, the first human-verified benchmark for both discriminative and generative pixel-level grounding. Evaluations of state-of-the-art models reveal a critical decoupling between QA accuracy and true visual perception that scaling alone fails to bridge. To address this, we develop scalable, automated generation pipelines to create ST-Evidence-Instruct, a 160k-scale dataset bridging high-level reasoning with fine-grained grounding. Fine-tuning grounded Video LLMs on this data yields substantial gains over the corresponding size-matched UniPixel baselines (e.g., +27.2 t-mean and +13.8 J&F on a 7B model), establishing a robust baseline for explainable, evidence-backed video understanding. Code and data are available at https://github.com/SalesforceAIResearch/EVQA.

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2607.11855 2026-07-14 cs.RO 新提交

Robust bipedal locomotion on flowable slopes via foot-driven terrain manipulation

通过足部驱动的地形操纵在可流动斜坡上实现稳健的双足运动

Deniz Kerimoglu, Junnosuke Kamohara, Jiyeon Maeng, Ziwon Yoon, Seth Hutchinson, Ye Zhao, Daniel I. Goldman

发表机构 * Georgia Institute of Technology(佐治亚理工学院) Northeastern University(东北大学)

AI总结 研究双足机器人在颗粒斜坡上的运动控制问题,通过研究带防滑钉足部的地面动力学,发现中等防滑钉间距利于行走,据此设计可调整防滑钉深度的足部,应用于大小不同的双足机器人,提出以肢体为中心调节地形相互作用的新控制方法。

Comments 38 pages, 12 figures

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AI中文摘要

双足机器人控制具有挑战性,因其接近不稳定状态,足部与地形接触的微小变化会迅速破坏运动稳定性。在刚性地形上,可通过成熟的接触力学和控制策略缓解这种脆弱性。而在可流动表面如颗粒斜坡上,足部接触会引发大的表面变形和类似固液转变,耦合地形效应与机器人动力学,导致性能不佳或失败,部分原因是缺乏可靠的可流动地形动力学表示方法。本文通过研究带防滑钉的足部(从鞋底伸出的薄板)的地面动力学,探讨控制地形响应如何改善颗粒斜坡上的双足运动。对小型(1.4千克)机器人物理双足的系统研究表明,防滑钉间距稀疏和密集分别会导致过度的地形屈服和阻力,降低性能并导致失败。中等防滑钉间距可分布相互作用力,使基底应力维持在(或低于)屈服阈值,从而能在高达30度的颗粒斜坡上行走。基于这些原理,设计了一种能主动调整防滑钉深度并适应刚性和颗粒地形的足部。还证明了有效的足部与地形相互作用原理可应用于更大(15千克)的自主双足机器人。本研究提出了一种替代传统以身体为中心的机器人控制方法的方案,即通过以肢体为中心的方法调节地形相互作用,而非通过身体运动调节地形诱导效应。

英文摘要

Bipedal robots are challenging to control because they operate close to instability, where small variations in foot-terrain contact can rapidly destabilize locomotion. On rigid terrain, bipedal robots mitigate this fragility by using well-established contact mechanics and control strategies. On flowable surfaces such as granular slopes, foot contact can induce large surface deformations and solid-fluid-like transitions, coupling terrain effects with robot dynamics, leading to underperformance or failure. This is partly due to the lack of reliable methods to represent the dynamics of flowable terrain, making it difficult to account for terrain effects in locomotion design. Here, we investigate how controlling terrain response can improve bipedal locomotion on granular slopes by studying the terradynamics of cleated feet, thin plates emanating from the foot soles. Systematic studies of a small-scale (1.4 kg) robophysical biped reveal that cleats with sparse and dense spacing lead to excessive terrain yielding and resistance, respectively, degrading performance and leading to failure. An intermediate cleat spacing distributes interaction forces to maintain substrate stresses near (or below) the yield threshold, enabling walking on granular slopes up to 30 degrees. Guided by these principles, we design a foot that actively adjusts cleat depth and accommodates both rigid and granular terrain. We also demonstrate that the principles of effective foot-terrain interaction translate to a larger (15 kg) autonomous biped. Our study presents an alternative to conventional body-centric robot control approaches, which regulate terrain-induced effects through body motion, by instead regulating terrain interactions through limb-centric approach.

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2607.11849 2026-07-14 cs.CL 新提交

AdvancedMathBench: A Benchmark Suite for Advanced Mathematical Proof Generation and Verification

高级数学基准测试:用于高级数学证明生成与验证的基准测试套件

Lingkai Kong, Zijian Wu, Yuzhe Gu, Haiteng Zhao, Wenyong Huang, Shuang Sun, Zhicheng Xiong, Xiaotian Zhang, Shuya Zhao, Yan Wang, Disheng Xu, Wenwei Zhang, Kai Chen

发表机构 * Shanghai AI Laboratory(上海人工智能实验室) MMLab, The Chinese University of Hong Kong(香港中文大学多媒体实验室) Shanghai Jiao Tong University(上海交通大学) Great Bay University(大湾区大学)

AI总结 介绍用于评估高级数学推理能力的AdvancedMathBench基准测试套件,含ProverBench证明生成基准及自动验证管道,还有VerifierBench。实验显示前沿模型在证明生成与验证上表现不佳,该套件对模型提升高级数学证明能力有挑战。

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AI中文摘要

大语言模型在高中和奥林匹克风格数学上表现出色,但在高级数学方面能力尚不明晰。现有基准测试在范围和评估粒度上不足。为此引入高级数学基准测试套件AdvancedMathBench,其核心证明生成基准ProverBench含296个本科和博士资格考试级别的问题。开发了自动验证管道评估证明,还引入VerifierBench。实验表明该基准测试对前沿模型仍具挑战性,证明生成和验证方面模型都有很大提升空间。

英文摘要

Large language models (LLMs) have achieved remarkable performance on high-school and olympiad-style mathematics, yet their capabilities on advanced mathematics remain poorly understood. Existing benchmarks, however, fall short in both scope and evaluation granularity: they provide limited disciplinary coverage and often rely on final-answer correctness or coarse judgments, leaving the validity of the reasoning process inadequately assessed. To bridge this gap, we introduce AdvancedMathBench, a benchmark suite designed to evaluate advanced mathematical reasoning capabilities. Its core proof-generation benchmark, ProverBench, contains 296 problems spanning undergraduate and doctoral qualifying-exam levels. To provide reliable evaluation of the proofs, we develop a dedicated automatic verification pipeline trained on large-scale expert annotations to produce both correctness verdicts and fine-grained assessments of proof errors, which exhibits strong agreement with human experts on held-out proof trajectories. We further introduce VerifierBench, consisting of 888 model-generated proof trajectories paired with expert ground truth, to evaluate whether models can correctly judge proof validity and provide sound verification rationales. Experiments show that AdvancedMathBench remains challenging for frontier models. On proof generation, the best-performing model, GPT-5.5-xhigh, achieves only 75.8 and 66.1 on the UGD and QE splits, respectively, indicating substantial room for improvement on advanced mathematical proof construction. On proof verification, the best model attains a Balanced F1 of only 65.1, and models generally exhibit low true negative rates, suggesting that critical error detection remains a major bottleneck.

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2607.11844 2026-07-14 cs.CV 新提交

Beyond the Single Camera: Agentic Multi-View Reasoning in Sports Video Understanding

超越单摄像头:体育视频理解中的智能多视角推理

Kerui Chen, Jinglu Wang, Xiaoyi Zhang, Yan Lu

发表机构 * Zhejiang University(浙江大学) Microsoft Research Asia(微软亚洲研究院)

AI总结 针对体育视频多视角理解缺乏评估基准及MLLMs难以利用多视角信息的问题,引入SportMV - Bench基准,分析瓶颈所在,并提出SportMV - Agent框架,通过迭代循环实现主动视角选择等,相比最强MLLM基线有显著提升。

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AI中文摘要

近期多模态大语言模型(MLLMs)在单视角视频理解基准测试中表现出色。然而,体育视频存在密集遮挡、快速运动和复杂交互,单视角难以解决。实际中体育赛事由多摄像头记录,可为裁判提供补充证据,但尚无基准测试评估MLLMs对多视角体育视频的理解。为此引入SportMV - Bench基准,含787个多视角视频束和2592个问答对。分析表明当前MLLMs难以有效利用多视角信息,瓶颈在于细粒度视觉感知和视角选择。提出SportMV - Agent框架,实现了14.46%的相对提升。

英文摘要

Recent Multimodal Large Language Models (MLLMs) achieve strong performance on single-view video understanding benchmarks. However, sports videos involve dense occlusion, rapid motion, and complex interactions that are difficult to resolve from a single viewpoint. In practice, sports events are recorded from multiple camera angles, providing complementary evidence used by referees. Yet, no existing benchmark evaluates MLLMs on multi-view sports video understanding. To address this gap, we introduce SportMV-Bench, a comprehensive benchmark built from official match recordings, through a dedicated pipeline combining LLM-based generation, MLLM-based verification, and human filtering to ensure quality and consistency. SportMV-Bench containing 787 multi-view video bundles and 2592 question-answer pairs across three categories: Perception-Aware Recognition (PAR), Rule-aware Event Interpretation (REI), and Adjudicative Decision Reasoning(ADR). Our analysis shows that current MLLMs fail to effectively exploit multi-view information, with the bottlenecks lying in fine-grained visual perception and view selection rather than logical reasoning or domain knowledge. We propose SportMV-Agent, an agentic framework that orchestrates an iterative loop of active view selection, perception tool execution, and evidence-grounded reasoning, achieving a significant 14.46% relative improvement over the strongest MLLM baseline.

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2607.11838 2026-07-14 cs.CV 新提交

HASTE: A Platform for Rapid Post-Disaster Building Damage Assessment

HASTE:一个用于快速灾后建筑物损坏评估的平台

Caleb Robinson, Anthony Ortiz, Simone Fobi Nsutezo, Cameron Birge, Meygha Machado, Marcelo Duarte, Joaquin Rivero Rodriguez, Anthony Cintron Roman, Kevin White, Inbal Becker-Reshef, Juan M. Lavista Ferres

发表机构 * Microsoft AI for Good Research Lab(微软人工智能造福研究实验室)

AI总结 HASTE平台可快速进行灾后建筑物损坏评估。它有两种方法,一种通过用户标记多边形训练语义分割模型,另一种利用预训练视觉模型和逻辑回归。实验表明其能仅用灾后图像区分受损与完好建筑,已支持多次实际灾难应对。

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AI中文摘要

当重大灾难发生时,救援人员需要在数小时内获取受损建筑物的地图。在公共基准测试中表现良好的模型需要匹配的灾前和灾后图像以及来自类似过去事件的训练集,但在新灾难发生的第一天通常都无法获得。我们提出了HASTE(High-speed Assessment and Satellite Tracking for Emergencies),这是一个无代码网络平台,让非机器学习工程师的分析师能够从灾后卫星图像生成每栋建筑物的损坏地图。HASTE实现了两种共享一个接口的方法。第一种方法要求用户在灾后场景上标记多边形,在该单个场景上训练一个小型语义分割模型,在整个图像上运行该模型,并将每个像素的输出与现有的建筑物足迹相结合。第二种方法使用预训练的视觉模型嵌入每个足迹,要求用户标记少数建筑物,并在浏览器中拟合逻辑回归,在几秒钟内对场景的其余部分进行评分。我们描述了该平台、两种方法以及支持它们的工程。我们还报告了在xBD上的初步实验,结果表明仅使用灾后图像,通过在足迹上汇总基础模型嵌入就能将受损建筑物与完好建筑物分开,与使用其五分之一标签的全监督ResNet-50基线相匹配。自2023年以来,HASTE及其前身已经支持了三十多次实际灾难应对,涵盖地震、飓风、气旋、洪水、野火和龙卷风等,在图像可用后的数小时到数天内为人道主义合作伙伴提供结果。我们最后指出了我们认为最有前景的方向,包括视觉语言评估、主动学习以及道路和其他基础设施的损坏模型。HASTE在这个https URL上是开源的。

英文摘要

When a large disaster strikes, responders need a map of which buildings are damaged within hours. The models that do well on public benchmarks assume matched before-and-after imagery and a training set drawn from similar past events, and neither is usually available for a new disaster in its first day. We present HASTE (High-speed Assessment and Satellite Tracking for Emergencies), a no-code web platform that lets analysts who are not machine learning engineers produce per-building damage maps from post-disaster satellite imagery. HASTE implements two methods that share one interface. The first requires the user to label polygons over the post-disaster scene, trains a small semantic segmentation model on that single scene, runs it over the whole image, and joins the per-pixel output to existing building footprints. The second embeds every footprint with a pretrained vision model, requires the user to label a handful of buildings, and fits a logistic regression in the browser that scores the rest of the scene in seconds. We describe the platform, both methods, and the engineering that supports them. We also report preliminary experiments on xBD showing that foundation-model embeddings pooled over footprints separate damaged from intact buildings using post-disaster imagery alone, matching a fully supervised ResNet-50 baseline with a twentieth of its labels. HASTE and its predecessors have supported more than thirty real-world disaster responses since 2023, spanning earthquakes, hurricanes, cyclones, floods, wildfires, and tornadoes, delivering results to humanitarian partners within hours to days of imagery becoming available. We close with the directions we think are most promising, including vision-language assessment, active learning, and damage models for roads and other infrastructure. HASTE is open source at https://github.com/microsoft/haste.

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2607.11836 2026-07-14 cs.CV 新提交

Cycle-World: Mitigating Error Accumulation in Long-term Video World Models via Reverse-Prediction Cycle Consistency

循环世界:通过反向预测循环一致性减轻长期视频世界模型中的误差累积

Zihan Su, Teng Hu, Jiangning Zhang, Ruiyan Wang, Ran Yi, Lizhuang Ma, Dacheng Tao

发表机构 * School of Computer Science, Shanghai Jiao Tong University, Shanghai, China(上海交通大学计算机科学学院) Institute of Cyber-Systems and Control, Zhejiang University, Hangzhou, China(浙江大学控制系统研究所) Nanyang Technological University, Singapore(新加坡南洋理工大学)

AI总结 针对自回归扩散模型在长视频生成中误差累积问题,提出循环世界框架,通过训练和推理阶段的时间可逆性及反向预测模型抑制误差,实验证明其在VBench基准测试中显著减轻误差漂移,提升生成质量和时间一致性。

Comments Accepted by ECCV 2026

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AI中文摘要

自回归扩散模型实现了高质量视频生成,但其序列性质存在误差累积问题。在长视频合成中,微小预测偏差会随时间加剧,导致生成漂移、结构崩溃和视觉退化。为此提出循环世界框架,通过在训练和推理阶段强制严格的时间可逆性来解决误差漂移。理论上,正向生成漂移可由循环一致性目标严格限制。训练时集成高效反向预测模型,推理时将其用作运行时校正器,通过基于梯度的循环引导抑制累积误差。在VBench基准测试上的实验表明,该框架显著减轻误差漂移,在60秒合成中实现了高质量和时间一致性。

英文摘要

Autoregressive diffusion models have enabled high-quality video generation, yet their sequential nature inherently suffers from error accumulation. In long-horizon video synthesis, minor prediction deviations compound over time, inevitably leading to unconstrained generative drift, structural collapse, and severe visual degradation. To address this, we propose Cycle-World, a novel framework designed for stable and temporally consistent long-video generation. Our approach tackles error drift by enforcing strict temporal reversibility across both the training and inference phases. Theoretically, we demonstrate that forward generative drift can be strictly bottlenecked by a cycle-consistency objective. During training, we integrate an efficient reverse-prediction model to implicitly embed causal constraints into the forward generator, compelling it to produce reversible sequences that tightly adhere to the natural video manifold. At inference time, we repurpose this frozen reverse model as a runtime corrector. Through gradient-based cycle guidance, it iteratively refines the generated latent representations, actively suppressing accumulated errors before they are committed to the historical context. Extensive experiments on the VBench benchmark demonstrate that Cycle-World's dual-phase synergy significantly mitigates error drift, achieving state-of-the-art overall generation quality and long-horizon temporal consistency in 60-second synthesis.

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2607.11830 2026-07-14 cs.CV 新提交

MicroCharNet: Less is More for License Plate Character Detection

MicroCharNet:用于车牌字符检测,少即是多

Huy Che, Dinh-Duy Phan, Duc-Lung Vu

发表机构 * University of Information Technology, Ho Chi Minh City, Vietnam(越南胡志明市信息科技大学) Vietnam National University, Ho Chi Minh City, Vietnam(越南国家大学)

AI总结 针对车牌字符检测,提出超轻量级模型MicroCharNet,采用C2f块主干与CoordAtt模块,基于轻量级C3k2的颈部融合特征,单级无锚检测头实现端到端预测,以低参数和计算量达竞争精度,可高效实时部署。

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AI中文摘要

车牌字符检测是智能交通系统的关键部分,实时部署需要高精度和计算效率。尽管基于深度学习的方法提高了检测性能,但许多高精度模型依赖大规模架构,计算开销大,限制了在资源受限设备上的应用。本文提出专为车牌字符检测设计的超轻量级模型MicroCharNet。其架构采用由C2f块组成的紧凑主干,集成CoordAtt模块增强特征提取并保留空间信息。基于轻量级C3k2的颈部融合多级特征,接着是单级无锚检测头实现端到端预测。在UFPR - ALPR数据集上的实验表明,MicroCharNet仅0.08M参数和0.096 GFLOPs就能达到有竞争力的检测精度,优于一些基于YOLO的基线。硬件评估进一步证实其在边缘设备上实时部署的效率。结果表明精心设计的超轻量级架构能有效平衡车牌字符检测的精度和效率。

英文摘要

License plate character detection is a crucial component of intelligent transportation systems, where high accuracy and computational efficiency are required for real-time deployment. Although recent deep learning-based methods have substantially improved detection performance, many high-accuracy models rely on large-scale architectures that incur substantial computational overhead, limiting their applicability to resource-constrained devices. In this paper, we propose MicroCharNet, an ultra-lightweight model specifically designed for license plate character detection. The proposed architecture employs a compact backbone composed of C2f blocks, integrated with CoordAtt module to enhance feature extraction while preserving spatial information. A lightweight C3k2-based neck fuses multi-level features, followed by a single-level anchor-free detection head that enables end-to-end prediction. Experiments conducted on the UFPR-ALPR dataset demonstrate that MicroCharNet achieves competitive detection accuracy with only 0.08M parameters and 0.096 GFLOPs, while outperforming several recent YOLO-based baselines. Hardware-level evaluations further confirm its efficiency for real-time deployment on edge devices. These results indicate that carefully designed ultra-lightweight architectures can effectively balance accuracy and efficiency in license plate character detection. The source code is available at https://github.com/chequanghuy/MicroCharNet.

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2607.11818 2026-07-14 cs.CV cs.AI 新提交

MM-ToolSandBox: A Unified Framework for Evaluating Visual Tool-Calling Agents

MM-ToolSandBox:一个用于评估视觉工具调用智能体的统一框架

Kaixin Ma, Di Feng, Alexander Metz, Jiarui Lu, Eshan Verma, Afshin Dehghan

发表机构 * Apple(苹果公司)

AI总结 介绍MM-ToolSandBox框架,它能支持多图像、多轮任务,通过自动化管道生成场景。评估12个先进模型发现当前模型视觉工具调用能力不足,视觉精度是瓶颈,不同规模模型失败原因不同,该框架和基准已公开。

Comments Benchmark link: https://github.com/apple/ml-mmtoolsandbox

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AI中文摘要

我们介绍了MM-ToolSandBox,这是一个用于视觉基础工具调用智能体的基准测试和评估框架。该框架提供了一个有状态的执行环境,涵盖16个应用领域的500多个工具,支持多图像、多轮任务,智能体必须将逐渐到来的视觉输入转化为可执行的工具调用,同时处理现实的对话现象(目标修订、纠错、状态突变)。一个自动化场景生成管道通过信息流引导的规划和多阶段质量过滤产生多样化的、视觉基础的场景,产生258个人工验证的标称场景和50个针对交互式UI应用的变体。对12个从4B开放权重到前沿专有系统的先进模型进行评估表明,当前模型仍缺乏强大的视觉工具调用能力:即使是最好的模型成功率也低于50%。我们的失败分析进一步表明,视觉精度不仅是规划,也是有能力的模型的主要瓶颈:53%的失败源于从图像中提取信息不正确,尽管任务工作流程其他方面正确。随着规模的扩大,出现了规划到精度的交叉:较小的模型在决定做什么时失败,而较大的模型在感知它们所看到的东西时失败,这表明在不同能力水平上改进模型有根本不同的研究方向。该框架和基准可在这个https网址公开获得

英文摘要

We introduce MM-ToolSandBox, a benchmark and evaluation framework for visually grounded tool-calling agents. The framework provides a stateful execution environment spanning 500+ tools across 16 application domains, supporting multi-image, multi-turn tasks where agents must ground progressively arriving visual inputs into executable tool calls while handling realistic conversational phenomena (goal revisions, error corrections, state mutations). An automated scenario generation pipeline produces diverse, visually grounded scenarios through information-flow-guided planning and multi-stage quality filtering, yielding 258 human-verified nominal scenarios and 50 variants targeting interactive UI applications. Evaluating 12 state-of-the-art models, from 4B open-weight to frontier proprietary systems, shows that current models still lack robust visual tool-calling capability: even the best model achieves below 50% success rate. Our failure analysis further reveals that visual precision, not only planning, is a primary bottleneck for capable models: 53% of failures stem from incorrect information extraction from images despite otherwise correct task workflows. A planning-to-precision crossover emerges with scale: smaller models fail at deciding what to do, while larger models fail at perceiving what they see, suggesting fundamentally different research directions for improving models at different capability levels. The framework and the benchmark are publicly available at https://github.com/apple/ml-mmtoolsandbox

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2607.11816 2026-07-14 cs.LG stat.ML 新提交

Relaxing Faithfulness with Intervention-Only Causal Discovery

通过仅干预因果发现放松忠实性

Bijan Mazaheri, Jiaqi Zhang, Caroline Uhler

发表机构 * Thayer School of Engineering Dartmouth College(达特茅斯学院塞耶工程学院) Broad Institute of MIT and Harvard(麻省理工学院和哈佛大学布罗德研究所) Massachusetts Institute of Technology(麻省理工学院)

AI总结 研究因果发现算法,指出常见流程中第一步的忠实性假设在自然系统中常被违反。提出干预即时忠实性假设,表明其足以用硬干预非参数识别因果结构,将干预作为因果结构信息主要载体,还针对干预范围有限情况指定等价类。

Comments Accepted to UAI 2026

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AI中文摘要

因果发现算法学习描述随机变量间因果依赖关系的网络。常见工作流程先是利用观测数据的条件独立属性确定部分有向因果关系,再通过干预确定未知因果方向。第一步的关键假设是忠实性:因果关联变量呈现统计依赖。许多自然系统有抵消路径以实现系统稳健性,这违反了忠实性,导致算法误删因果依赖。本文认为硬干预包含结构发现第一阶段被忽视的因果关联信息。我们表明一个允许抵消的温和假设——干预即时忠实性——足以用硬干预非参数识别因果结构。这些结果将干预定位为因果结构信息的主要载体,应优先于条件独立测试。为扭转范式,我们还在干预范围有限导致识别标准不满足时指定了等价类。

英文摘要

Causal discovery algorithms learn a network that describes the causal dependencies among random variables. A common workflow involves first utilizing conditional independence properties on observational data to determine partially directed causal relationships, then applying interventions to orient the unknown causal directions. A critical assumption for the first step is faithfulness: a requirement that causally linked variables exhibit statistical dependence. Many natural systems include buffering and stabilizing pathways that cancel out to achieve systemic robustness. This cancellation of pathways violates faithfulness, leading causal discovery algorithms to incorrectly remove causal dependencies. In this paper, we argue that hard interventions contain information about the presence/absence of causal linkage that is overlooked in the first stage of structure discovery. We show that a mild assumption -- called intervention-immediacy faithfulness -- that allows cancellations, is sufficient to nonparametrically identify causal structures with hard interventions. These results position interventions as the primary carriers of information about causal structure, which should take precedence over conditional independence testing. To flip the paradigm, we also specify equivalence classes when the identification criteria are not met due to limitations in the scope of interventions.

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2607.11808 2026-07-14 cs.CL cs.AI 新提交

Introducing Human-Centeredness in AI-Assisted Lexicography

在人工智能辅助词典编纂中引入以人为本的理念

Antonio San Martin, Catherine Trekker

发表机构 * Université du Québec à Trois-Rivières(魁北克三河城大学)

AI总结 本文针对人工智能辅助词典编纂提出以人为本的框架,借鉴相关原则和应用确定四个维度,认为人工智能应增强而非取代词典编纂者,强调保持专业自主性等,为人工智能融入词典编纂工作流程提供基础。

Comments Accepted for publication in the Proceedings of the XXII EURALEX International Congress 2026

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AI中文摘要

本文提出了一个用于人工智能辅助词典编纂的以人为本的人工智能(HCAI)框架。生成式人工智能为提升词典编纂工作带来了重大机遇,但也引发了对词典编纂者未来角色以及语言和文化多样性保护的担忧。借鉴HCAI原则及在其他语言职业中的应用,确定了四个相互关联的维度来理解和审视人工智能在词典编纂中的整合:增强型词典编纂者、人工智能整合的社会技术背景、偏差以及人工智能驱动的词典编纂工具设计。该框架认为人工智能应增强而非取代词典编纂者,将高度自动化与有意义的人工控制相结合。还强调了保持专业自主性、减轻人工智能产生的偏差以及围绕词典编纂者需求设计工具的重要性。这为未来研究及人工智能有益融入词典编纂工作流程奠定了基础。

英文摘要

This paper proposes a human-centered artificial intelligence (HCAI) framework for AI-assisted lexicography. While generative AI offers significant opportunities to enhance lexicographic work, it also raises concerns regarding the future role of lexicographers and the preservation of linguistic and cultural diversity. Drawing on HCAI principles and previous applications in other language professions, the paper identifies four interrelated dimensions through which AI integration in lexicography can be understood and critically examined: the augmented lexicographer, the sociotechnical context of AI integration, bias, and the design of AI-powered lexicographic tools. The framework argues that AI should augment rather than replace lexicographers, combining high levels of automation with meaningful human control. It further emphasizes the importance of preserving professional agency, mitigating AI-generated biases, and designing tools around the needs of lexicographers. By doing so, the paper provides a foundation for future research and the beneficial integration of AI into lexicographic workflows.

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2607.11801 2026-07-14 cs.SD cs.AI 新提交

Encoder-Side Neuron Identification and Amplification for Acoustic Perception in Large Audio-Language Models

大型音频语言模型中用于声学感知的编码器端神经元识别与增强

Yu-Han Huang, Chih-Kai Yang, Ke-Han Lu, An-Yu Cheng, Hung-yi Lee

发表机构 * National Taiwan University(国立台湾大学) Graduate Institute of Communication Engineering(通信工程研究所) NTU Artificial Intelligence Center of Research Excellence(国立交通大学人工智能卓越研究中心) ASUS Open Cloud Infrastructure Software Center(ASUS开放云基础设施软件中心)

AI总结 研究针对大型音频语言模型在语音非语义属性表现不佳的问题,提出IAAN方法,通过对比音频编码器神经元在真实波形与噪声参考上的激活来评分并增强高分神经元,有效提升了模型在多数据集上的声学感知准确率,开辟了新的推理时改进方向。

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AI中文摘要

大型音频语言模型在语音内容方面表现出色,但在语音细粒度、非语义属性(如说话者情感)上往往表现不佳。在不重新训练的情况下改进这一点需要有效的推理时干预,然而大多数现有方法仅在音频编码器之后进行干预,且粒度较粗。编码器本身在很大程度上未被探索,特别是在单个神经元层面。我们引入了IAAN(识别和增强声学神经元),一种无需训练和标签的方法,通过将音频编码器中每个前馈神经元在真实波形上的激活与缺乏真实音频声学信息的噪声参考上的激活进行对比来评分。然后在推理时增强一小部分得分最高的神经元。在十个非语义语音属性上,IAAN在Audio - Flamingo - 3上平均准确率提高25.7分,在Qwen2.5 - Omni上提高21.4分,在Kimi - Audio上提高9.7分。它还能提升已明确微调以优先考虑声学证据的模型。在控制比较中,编码器位置和神经元级选择性对这种提升都很必要。在编码器之后、解码端或语言模型内部进行干预几乎没有改善甚至会降低准确率。改进还取决于增强哪些特定神经元,而非仅仅数量。这些结果表明,在音频编码器内部进行小而精准的干预是加强大型音频语言模型声学理解的有效且未充分利用的方法,为通过神经元级访问编码器来改善声学感知的推理时方法开辟了新方向。

英文摘要

Large audio-language models (LALMs) often underperform on fine-grained, non-semantic attributes of speech, such as a speaker's emotion, despite strong performance on speech content. Improving this without the cost of retraining calls for an effective inference-time intervention, yet most existing methods intervene only after the audio encoder and operate at a relatively coarse granularity. The encoder itself, where acoustic information is first extracted from the waveform, remains largely unexplored, especially at the level of individual neurons. We introduce IAAN, Identifying and Amplifying Acoustic Neurons, a training-free and label-free method that scores each feed-forward neuron in the audio encoder by contrasting its activation on the real waveform with that on a noise reference lacking the real audio's acoustic information. IAAN then amplifies a small set of the highest-scoring neurons at inference. Across ten non-semantic speech attributes, IAAN improves average accuracy by 25.7 points on Audio-Flamingo-3, 21.4 on Qwen2.5-Omni, and 9.7 on Kimi-Audio. It also improves a model already explicitly fine-tuned to prioritize acoustic evidence. In controlled comparisons, both the encoder locus and neuron-level selectivity prove necessary for this gain. Intervening after the encoder, at the decoding side or inside the language model, yields little to no improvement, or even deteriorates accuracy. The improvement also depends on which specific neurons are amplified, not merely on their number, confirming that IAAN's acoustic score succeeds in identifying the neurons that matter. These results show that a small, precisely targeted intervention inside the audio encoder is an effective and largely untapped way to strengthen the acoustic understanding of LALMs, opening a new direction for inference-time methods that improve acoustic perception through neuron-level access to the encoder.

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2607.11798 2026-07-14 cs.CV cs.AI 新提交

StoryTeller: Training-Free Narrative Grounding for Long-Form Audio Description

StoryTeller:用于长格式音频描述的免训练叙事接地

Seung Hyun Hahm, Minh T. Dinh, SouYoung Jin

发表机构 * Dartmouth College(达特茅斯学院)

AI总结 研究针对长格式音频描述问题,提出免训练的StoryTeller框架。它通过维护叙事记忆跨场景传递信息,仅用原始视频和标题,经语义过滤等确保信息准确。引入StoryAD-QA基准测试,实验证明该框架显著提升了叙事相关能力。

Comments Accepted to the European Conference on Computer Vision (ECCV) 2026

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AI中文摘要

长格式音频描述(AD)不仅要描述可见动作,还需保留跨场景的角色、事件、关系和故事情节,以便盲人和低视力(BLV)观众能理解电影。现代视频语言模型(VLMs)在短视频片段上有效,但处理长格式时往往独立对待每个时刻,导致描述缺失关键信息。本文提出StoryTeller,一个免训练的长格式AD框架。它通过维护经过验证的叙事记忆来跨场景传递与故事相关的信息,使后续描述保持连贯、有根据且上下文丰富。该方法无需字幕、脚本等,仅利用原始视频和电影标题,可检索公共电影元数据并通过语义过滤和VLM验证确保信息准确。为评估生成的AD是否保留叙事信息,引入了StoryAD-QA基准测试。实验表明,StoryTeller在自动、基于QA和人工评估中均显著提高了叙事连贯性、事实依据和故事理解能力。

英文摘要

Long-form audio description (AD) requires more than describing visible actions: it must preserve characters, events, relationships, and story context across scenes so that blind and low-vision (BLV) audiences can follow a film. Modern video-language models (VLMs) are effective on short clips, but they often treat each moment independently, producing descriptions that miss who characters are, why events matter, and how the current scene connects to earlier narrative context. We propose StoryTeller, a training-free framework for story-aware long-form AD. Instead of relying only on local visual cues, StoryTeller maintains a verified narrative memory that carries forward story-relevant information across scenes, enabling later descriptions to remain coherent, grounded, and contextually informative. Given only raw video and a movie title, StoryTeller can optionally retrieve public movie metadata to resolve names and story context, while accepting only facts that are supported by the video through semantic filtering and VLM verification. The method requires no subtitles, scripts, AD transcripts, aligned captions, character banks, precomputed face identities, or task-specific fine-tuning. To evaluate whether generated AD preserves narrative information, we introduce StoryAD-QA, a question-answering benchmark that tests whether a language model can answer story-context questions using only the generated descriptions. Experiments on standard AD benchmarks and diverse long-form videos show that StoryTeller consistently improves narrative coherence, factual grounding, and story comprehension over strong baselines in automatic, QA-based, and human evaluations.

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2607.11796 2026-07-14 cs.LG 新提交

An Exact Instrument for State Usage in Selective State-Space Models, and the Input-Driven Migration It Reveals

选择性状态空间模型中状态使用的精确工具及其揭示的输入驱动迁移

Raktim Bhattacharya

发表机构 * Texas A&M University(德克萨斯农工大学)

AI总结 研究选择性状态空间模型中状态使用,给出精确测量工具,能计算丢弃模式子集的输出误差。通过该工具发现模型依输入重分配状态空间,输入调度模式剪枝在各规模表现优,揭示了模型状态使用规律及有效剪枝方法。

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AI中文摘要

选择性状态空间模型,如曼巴模型,通过一组一阶模式路由信息,其输入耦合由学习到的选择机制设置。我们给出了一个精确工具来测量训练模型如何使用这些模式。由于状态矩阵是对角的,每个通道的输出可精确分解为每个模式的贡献,并且一个(层,通道,窗口)的Gram张量可离线计算在任何预算下丢弃任何模式子集的精确输出误差。该工具在曼巴 - 1系列上与参考实现验证,相对误差为$2.3×10^{-7}$,在4464种配置上预测层的部署剪枝误差的中值相对偏差为$5×10^{-7}$。在多个模型上应用该工具发现,训练模型会根据输入重新分配其状态空间,输入调度模式剪枝在各规模上优于其他方法。

英文摘要

Selective state-space models such as Mamba route information through a bank of first-order modes whose input coupling is set by a learned selection mechanism. We give an exact instrument for measuring how a trained model uses these modes. Because the state matrix is diagonal, each channel's output decomposes exactly into per-mode contributions, and a per-(layer, channel, window) Gram tensor yields the exact output error of dropping any subset of modes, offline, at any budget. Validated against the reference implementation to a relative error of $2.3\times10^{-7}$ on the Mamba-1 family where it is exact, the instrument predicts a layer's deployed pruning error to a median relative deviation of $5\times10^{-7}$ over $4{,}464$ configurations, its floor set by the reconstruction. Applying the instrument across the Mamba-1 family (130M--2.8B), the deployed 7B Falcon-Mamba, and Mamba-2, we find that trained models re-allocate their state space with the input: which modes carry the signal migrates across contexts, and at the most affected layers a per-input oracle roughly halves the output error of a fixed mode set. Frozen-signal counterfactuals attribute the migration primarily to the input-dependent write map $B_t$; the timestep usually identified with selectivity carries almost none of it. Input-scheduled mode pruning on this measurement outperforms static, Hankel-based, and layer-adaptive rankings at every scale from 130M to the deployed 7B Falcon-Mamba, and at half the state budget it matches the unpruned model. Because the scheduler reads each window's mode usage from a first pass, this demonstrates realizable headroom; we claim no deployed compute or memory saving.

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2607.11792 2026-07-14 cs.RO eess.AS 新提交

Casting Everything to Online API Services? A Survey of Integrating Localized Speech Recognition Models in Robotic Systems

将所有内容都转换为在线 API 服务?关于在机器人系统中集成本地化语音识别模型的综述

Sheng Li, Jing Li, Felix Schijve, Jun Hu, Emilia Barakova

发表机构 * Institute of Science Tokyo(东京科学研究所) Eindhoven University of Technology(埃因霍温理工大学)

AI总结 综述自动语音识别技术在机器人系统中的集成,涵盖其从传统到深度学习模型的演变、相关数据集与工具包,介绍基于 ASR 模型家族等的部署策略及实际平台,指出挑战与未来方向,助力社交机器人研究人员探索人机交互领域。

Comments accepted in 18th International Conference on Social Robotics (ICSR + ART 2026)

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AI中文摘要

自动语音识别(ASR)已成为现代机器人系统的关键组件,因为它是人类与机器人交互最自然直观的方式之一。常用方法是直接在线使用 API 服务。本文概述了 ASR 技术如何集成到各种智能机器人和机器中。讨论了语音识别从既定方法到诸如 OpenAI 的 Whisper 等深度学习模型的演变。还列出了在工业和学术界广泛使用的大规模数据集和开源工具包。围绕 ASR 模型家族、机器人中的部署策略以及几个实际机器人平台进行综述。最后概述了在机器人中部署强大语音识别的挑战并讨论未来方向,包括在多样动态环境中的多模态交互。本文可帮助社交机器人研究人员更好地探索基于语言的自然人机交互这一新兴领域。

英文摘要

Automatic speech recognition (ASR) has become a critical component of modern robotic systems because it is one of the most natural and intuitive ways for humans to interact with robots. A commonly used method is to directly use API services online. But is that all we can do? This article provides an overview of how ASR technologies are integrated into various intelligent robots and machines. We discuss the evolution of speech recognition from established approaches to state-of-the-art deep learning models, such as OpenAI's Whisper. We also list large-scale datasets and open source toolkits that have been widely used in both industry and academia. We structure the survey around ASR model families, deployment strategies in robotics (especially ROS-based, cloud-based, and hybrid solutions), and several real-world robotic platforms. Finally, we outline the challenges of deploying robust speech recognition in robots and discuss future directions, including multimodal interaction in diverse and dynamic environments. This paper can help social robotics researchers better navigate the emerging domain of language-based natural human-robot interaction.

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2607.11785 2026-07-14 cs.RO cs.SY eess.SY 新提交

MIRA: A Modular Open-Source Micro-UAV for Indoor Research

MIRA:一种用于室内研究的模块化开源微型无人机

Lucas K. de Oliveira, Felipe A. G. Tommaselli, João Aires Marsicano, Marco S. Tayar, Pedro A. R. Saraiva, Ricardo V. Godoy, Marcelo Becker

发表机构 * University of São Paulo (USP)(圣保罗大学)

AI总结 该研究针对室内机器人研究中微型无人机缺乏开放可改特性的问题,提出开源微型无人机MIRA,其采用白盒架构,围绕特定机身和软件包构建,核心子系统可单独更换,经飞行测试验证其通信延迟低、振动能量分布合理,为室内研究提供便利。

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AI中文摘要

室内机器人研究越来越依赖微型无人机,其机身、电子设备和控制软件需完全开放以供修改。现成平台很少能提供此类修改所需的底层访问权限,而定制替代方案通常在飞行测试前需要大量工程工作。我们提出了MIRA(模块化室内研究架构),这是一种用于室内研究的低成本、开源微型无人机,围绕可复制的3D打印PLA机身和通过Micro XRCE-DDS管理从机与自动驾驶仪通信桥接的容器化底层软件包构建。设计为白盒架构,核心子系统无需固件重构即可单独更换,支持本地制造和从现有实验室库存中替换组件。我们通过在光学运动捕捉空间内以位置控制模式进行手动飞行来表征MIRA,通信管道的从机与自动驾驶仪延迟中位数为0.02毫秒,功率谱密度分析证实结构振动能量集中在90至110赫兹的窄带内。

英文摘要

Indoor robotics research increasingly relies on micro-UAVs whose airframe, electronics, and control software are fully open to modification. Off-the-shelf platforms rarely expose the low-level access required for such modifications, while building a custom alternative typically requires substantial engineering effort before flight testing can begin, leaving many laboratories to work within constraints that limit the scope of their research. We present MIRA (Modular Indoor Research Architecture), a low-cost, open-source micro-UAV for indoor research built around a replicable 3D-printed PLA airframe and a containerized low-level software package managing the companion-to-autopilot communication bridge via Micro XRCE-DDS. Designed as a white-box architecture, core subsystems are individually replaceable without firmware refactoring, supporting local fabrication and component substitution from existing lab inventory. We characterize MIRA through manual flight in position-control mode within an optical motion-capture volume, where the communication pipeline sustains a median companion-to-autopilot latency of 0.02 ms and power spectral density analysis confirms the structural vibration energy stays concentrated in a narrow 90 to 110 Hz band, isolated from the sub-20 Hz control bandwidth and within the autopilot safety thresholds.

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2607.11783 2026-07-14 cs.CL 新提交

How Temperature Shapes Ideological Discourse in Retrieval-Augmented Generation?

温度如何塑造检索增强生成中的意识形态话语?

Elmira Salari, Hazem Amamou, José Victor de Souza, Shruti Kshirsagar, Maria Nunes Delfino, Anderson Avila

发表机构 * Wichita State University(威斯康星州立大学) São Paulo Catholic University(圣保罗天主教大学)

AI总结 研究探讨温度对检索增强生成中意识形态话语的影响,通过对新冠治疗文章语料库应用词汇多维分析,让模型在不同温度下回答意识形态问题并评估,发现RAG框架易转移意识形态话语,中等温度下话语对齐最高,低温时下降。

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AI中文摘要

检索增强生成(RAG)越来越多地被用于减少大语言模型(LLM)的幻觉并加强其事实基础。尽管已经探讨了对检索过程中错误的鲁棒性,但意识形态偏差对LLM输出的影响却被忽视。例如,若检索到的材料包含意识形态立场,RAG可能在其输出中传递、放大或抑制此类意识形态话语。在本研究中,我们通过检查包含意识形态话语的RAG框架在LLM生成答案中的影响来解决此问题。为此,我们对1117篇新冠治疗文章的语料库应用词汇多维分析(LMDA),识别出三种意识形态话语。该语料库随后用作RAG的外部知识源。我们通过让模型在不同采样温度下回答意识形态问题来评估多个LLM。根据生成文本与意识形态参考文本的相似性对其进行语义和词汇评估。我们的发现表明,RAG框架容易将意识形态话语转移到LLM响应中,采样温度对这种转移的强度有可测量的影响。生成答案与参考文本之间的话语对齐在中等温度下最高,此时模型在随机性与检索基础之间取得平衡,而在低温下下降,表明过度确定性采样会抑制话语转移。

英文摘要

Retrieval-Augmented Generation (RAG) has been increasingly adopted to reduce hallucinations and strengthen the factual grounding of large language models (LLMs). While robustness to errors in the retrieval process has been explored, the impact of ideological bias on LLM outputs has been overlooked. For instance, if the retrieved material contains ideological positions, the RAG may transmit, amplify, or suppress such ideological discourses in its outputs. In this study, we address this issue by examining the influence of the RAG framework, comprising ideological discourses, in LLM-generated answers. To this end, we applied Lexical Multidimensional Analysis (LMDA) on a corpus of 1,117 COVID-19 treatment articles, identifying three ideological discourses. This corpus is then used as the external knowledge source for the RAG. We assessed several LLMs by having the models answer ideological questions at different sampling temperatures. The generated texts were assessed semantically and lexically based on their similarities with ideological reference texts. Our findings show that the RAG framework is prone to transferring ideological discourses into LLM responses, with sampling temperature having a measurable impact on the strength of this transfer. Discoursive alignment between generated answers and the reference text is highest at moderate temperatures, where models balance stochasticity with retrieval grounding, and drops at low temperatures, indicating that overly deterministic sampling suppresses discourse transfer.

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2607.11779 2026-07-14 cs.RO 新提交

A Compact Top-Loading Robot for Endovascular Interventions: Design, Control and Evaluation

一种用于血管内介入的紧凑型顶部加载机器人:设计、控制与评估

Jonas Fischer, Lennart Karstensen, Franziska Mathis-Ullrich

发表机构 * Laboratory for Surgical Planning and Robot Cognition (SPARC)(外科规划与机器人认知实验室)

AI总结 针对血管内介入现有系统问题,提出紧凑型顶部加载机器人系统,通过主从控制策略实现连续运动,经实验评估其运动轮廓平滑,在体外条件下具技术可行性,紧凑设计利于临床整合,未来将改进相关性能。

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AI中文摘要

机器人辅助血管内介入可减少辐射暴露、改善外科医生人体工程学等,但现有系统存在程序覆盖受限问题。本文提出一种紧凑型机器人系统,由两个带气动膜夹爪的交替推车组成,采用顶部加载设计便于器械快速更换,通过主从控制策略实现连续运动。经运动跟踪实验和体外血管模型评估,结果表明该系统运动轮廓平滑,在体外条件下具有技术可行性,紧凑设计利于器械更换和临床工作流程整合,未来将聚焦改进抓握性能等。

英文摘要

Robot-assisted endovascular intervention can potentially reduce radiation exposure, improve surgeon ergonomics, enable telesurgery, support active assistance and autonomy, and enhance procedural precision. However, existing systems often suffer from limited procedural coverage because constrained patient-side setups, restricted flexibility, and complex instrument exchange hinder clinical workflow integration. This work presents a compact robotic system for endovascular interventions that enables continuous translational and rotational manipulation of standard endovascular instruments. The system consists of two alternating carts with pneumatically actuated membrane grippers integrated into rotating gripper gears. Its top-loading design allows rapid exchange of instruments such as guidewires and catheters without changing the robotic setup. A leader-follower control strategy enables continuous motion despite the finite stroke of each cart. The system was evaluated in motion-tracking experiments with guidewires and catheters and in an in vitro vascular phantom. The motion-tracking experiments showed generally smooth translational and rotational motion profiles. Across all tested guidewire and catheter experiments, the mean relative tracking errors were 3.6% for translational motion and 4.1% for rotational motion. In the vascular phantom, robot-assisted navigation reached the target in most trials, demonstrating the feasibility of the proposed manipulation concept under in vitro conditions. The presented robotic system demonstrates technical feasibility for continuous manipulation of standard endovascular instruments in bench-top and in vitro experiments. The compact top-loading design may ease instrument exchange and clinical workflow integration. Future work will focus on improving gripping performance, actuation speed, force feedback, and evaluation in more clinically realistic settings.

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2607.11760 2026-07-14 cs.LG cs.CL 新提交

From Expressivity to Sample Complexity: Narrow Teachers for Transformers via C-RASP

从表达能力到样本复杂度:通过C-RASP为Transformer构建窄教师模型

Michael Rizvi-Martel, Satwik Bhattamishra, Guillaume Rabusseau, Michael Hahn

发表机构 * Mila & Université de Montréal(米拉与蒙特利尔大学) University of Oxford(牛津大学) Saarland University(萨尔兰大学)

AI总结 研究Transformer的理论理解,通过提出手工权重等分析其表达能力。针对其可学习性研究少的问题,受损失景观分析启发,为用Transformer学习C-RASP结构提出初步样本复杂度界限。

Comments 9 pages total

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AI中文摘要

对Transformer的理论理解对于更好地理解大语言模型的能力和局限性至关重要。许多工作分析了基于注意力模型的表达能力。过去大量理论工作通过提出手工权重或使用计算复杂度论证来刻画哪些任务属于Transformer模型的假设类。然而,很少有工作研究此类解决方案的可学习性。在本工作中,受近期损失景观分析工作启发,我们朝着这一目标取得了进展,为用Transformer学习C-RASP结构提出了初步的样本复杂度界限。

英文摘要

A theoretical understanding of Transformers is crucial to better understand the capacities and limitations of large language models (LLMs). There is much work analyzing the expressivity of attention-based models. By proposing handcrafted weights or using computational complexity arguments, a large amount of past theoretical works have sought to characterize which tasks are and which are not in the hypothesis class of Transformer models. However, little work investigates the learnability of such solutions. In this work, we make progress towards this goal. Inspired by recent loss landscape analysis work, we propose preliminary sample complexity bounds for learning C-RASP constructions with Transformers.

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2607.11758 2026-07-14 cs.LG 新提交

From Global to Factor-Wise Expert Composition in Discrete Diffusion Models

从离散扩散模型中的全局专家组合到因子级专家组合

Haozhe Huang, Yudong Xu, Abhijoy Mandal, Alán Aspuru-Guzik

发表机构 * University of Toronto(多伦多大学) Vector Institute for Artificial Intelligence(向量人工智能研究所) Mechanical & Industrial Engineering, University of Toronto(多伦多大学机械与工业工程系) Canadian Institute for Advanced Research (CIFAR)(加拿大高级研究所)

AI总结 研究针对离散扩散模型中专家组合方法的局限性,提出因子级组合框架FactorDiff,将样本分解为更小因子,通过动态路由使因子与相关专家匹配,在ARC - AGI基准测试中表现优于全局标量加权方案。

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AI中文摘要

离散扩散模型为解决复杂推理任务提供了强大框架,特别是通过组合生成,将多个预训练专家结合以超越其各自训练数据进行泛化。近期理论修正引入了随时间变化的混合权重,以更好地使组合扩散动力学与预期目标对齐。然而,这些方法基于逐个样本工作,整体处理每个生成状态,忽略了不同专家潜在的空间或功能专业化。在本文中,我们提出了FactorDiff——一种用于扩散模型的因子级组合框架,以解决此限制。我们认为样本可进一步分解为更小因子,并提出一种采样过程,将每个因子动态路由到最相关专家。我们用空间/像素级组合实例化此框架,并在ARC - AGI基准上进行验证,表明在需要逻辑一致性和空间解缠的任务上,简单的因子特定路由始终优于复杂的全局标量加权方案。

英文摘要

Discrete diffusion models offer a powerful framework for solving complex reasoning tasks, particularly through compositional generation, which combines multiple pre-trained experts to generalize beyond their individual training data. Recent theoretical corrections introduce time-dependent mixing weights to better align composed diffusion dynamics with the intended target. However, these methods are fundamentally limited by working on a per-sample basis, treating each generated state monolithically and ignoring the potential spatial or functional specializations of different experts. In this work, we address this limitation by proposing FactorDiff - a factor-wise composition framework for diffusion models. We posit that samples can be further decomposed into smaller factors, and propose a sampling process that dynamically routes each factor to the most relevant expert. We instantiate this framework with spatial/pixel-level compositions and validate it on the ARC-AGI benchmark, demonstrating that simple factor-specific routing consistently outperforms complex global scalar weighting schemes on tasks that require logical consistency and spatial disentanglement.

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2607.11754 2026-07-14 cs.CV 新提交

Higher-Order Cell Tracking Transformer

高阶细胞追踪变换器

Jordão Bragantini, Ilan Theodoro, Loïc A. Royer

发表机构 * Biohub San Francisco(旧金山生物中心)

AI总结 研究如何从实时成像显微镜重建细胞谱系,提出高阶细胞追踪变换器(HOCT),以边为中心架构,借助3D几何先验解决现有方法问题,在相关测试中取得最优结果且易于微调,大幅降低跟踪误差。

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AI中文摘要

从实时成像显微镜重建细胞谱系需要跨时间链接细胞检测,包括通过细胞分裂。常见方法是构建候选图并关联跨帧的细胞分割(节点)。然而,现有方法忽略了候选跟踪图中的两个结构障碍:细胞分裂在节点嵌入空间中纠缠不同谱系路径;共享节点的边标签一致性近乎随机。我们提出了高阶细胞追踪变换器(HOCT),一种以边为中心的架构,其中候选细胞链接在3D几何先验下相互关注,解决了这两个问题。在细胞追踪挑战赛和细菌分裂基准测试中评估,HOCT在没有深度预训练图像编码器的情况下取得了最优结果。此外,该方法更易于微调,在人工参与设置下,用400个注释可使跟踪误差迅速降低59%,优于竞争变压器基线的LoRA微调(提高6.75%)。

英文摘要

Reconstructing lineages from live-imaging microscopy requires linking cell detections across time, including through cell divisions. A common approach is to construct a candidate graph and associate cell segmentations (nodes) across frames. However, these and other existing methods overlook two structural obstacles in candidate tracking graphs: (i) cell divisions entangle distinct lineage paths in the node embedding space, and (ii) edges sharing a node have near-random label agreement, so the candidate-graph topology carries no useful information for graph neural networks to aggregate. We propose the \textbf{Higher-Order Cell Tracking Transformer} (HOCT), an edge-centric architecture in which candidate cell links attend to one another under a 3D geometric prior, resolving both issues. Evaluated on the Cell Tracking Challenge and a bacteria division benchmark, HOCT achieves state-of-the-art results without deep pre-trained image encoders. Moreover, the proposed approach is easier to fine-tune, quickly reducing tracking errors by 59% with 400 annotations in a human-in-the-loop setting, outperforming LoRA fine-tuning of competing transformer baselines (6.75% improvement).

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2607.11746 2026-07-14 cs.LG cs.AR 新提交

HiFi-LLP: High-Fidelity, Low-Cost Latency Predictors with Confidence for Robust HW-NAS

HiFi-LLP:用于稳健硬件神经网络架构搜索的具有置信度的高保真、低成本延迟预测器

Shambhavi Balamuthu Sampath, Behzad Shomali, Nael Fasfous, Moritz Thoma, Judeson Anthony Fernando, Lukas Frickenstein, Pierpaolo Mori, Manoj Rohit Vemparala, Alexander Frickenstein, Walter Stechele

发表机构 * Technical University of Munich(慕尼黑工业大学) BMW Group(宝马集团) University of Bonn(波恩大学)

AI总结 研究针对硬件感知神经网络架构搜索中硬件在环延迟测量瓶颈及预测不准确问题,提出基于图注意力网络的HiFi-LLP延迟预测器,增加置信度度量,性能优于现有预测器,并构建混合NAS框架,实现加速且保持竞争力。

Comments Published in the Proceedings of the 2025 IEEE 38th International System-on-Chip Conference (SOCC)

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AI中文摘要

随着深度神经网络(DNN)越来越多地部署在边缘设备上,硬件感知优化技术,如硬件感知压缩和硬件感知神经网络架构搜索(HW-NAS)变得至关重要。这些方法依赖目标硬件的真实反馈来定制DNN架构以实现高效部署。虽然搜索可并行化,但通过硬件在环(HIL)进行延迟测量因其顺序性仍是瓶颈。近期方法用延迟预测器取代昂贵的HIL反馈,但存在挑战。为此引入HiFi-LLP,一种基于图注意力网络的高保真、低成本延迟预测器,并增加了置信度度量。HiFi-LLP在10%准确率界限上比先前特定平台预测器高出9个百分点,在LatBench数据集中六个设备上Spearman等级相关性高达0.996。还提出混合NAS框架,将低置信度预测路由到HIL,与典型NAS相比实现高达8.6倍加速,同时保持有竞争力的帕累托前沿。

英文摘要

With deep neural networks (DNNs) increasingly deployed on edge devices, hardware (HW)-aware optimization techniques--such as HW-aware compression and HW-aware neural architecture search (HW-NAS)--have become essential. These methods rely on real feedback from the target hardware to tailor DNN architectures for efficient deployment. While the search can be parallelized, latency measurements via hardware-in-the-loop (HIL) remain a bottleneck due to their sequential nature. Recent approaches use latency predictors to replace costly HIL feedback, but challenges persist: (1) platform-specific predictors often require tens of thousands of samples, and (2) inaccurate predictions can mislead the NAS process. To address this, we introduce HiFi-LLP, a high-fidelity, low-cost latency predictor based on graph attention networks, augmented with a confidence metric. HiFi-LLP outperforms prior platform-specific predictors by up to 9 percentage points (p.p.) in the 10% accuracy bound and achieves a Spearman's rank correlation of up to 0.996 across six devices in the LatBench dataset. We further propose a hybrid NAS framework that routes low-confidence predictions to HIL, achieving up to 8.6$\times$ speedup compared to typical NAS while maintaining a competitive Pareto front.

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