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Discover cutting-edge research papers in AI and machine learning. Stay ahead with the latest breakthroughs, insights, and discoveries from top researchers worldwide.

4,092 Research Papers
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ArXivJun 4, 2025

Estimation of the reduced density matrix and entanglement entropies using autoregressive networks

Piotr Białas, Piotr Korcyl et al.

TLDR: This paper introduces a method using autoregressive neural networks to estimate entanglement entropies in quantum spin chains via Monte Carlo simulations.

00
arXivJun 4, 2025

Plant Bioelectric Early Warning Systems: A Five-Year Investigation into Human-Plant Electromagnetic Communication

Peter A. Gloor

TLDR: This study shows that plants can detect and respond to human presence and emotions through bioelectric signals, achieving high accuracy in emotional state classification using deep learning models.

01
arXivJun 4, 2025

Adapting Rule Representation With Four-Parameter Beta Distribution for Learning Classifier Systems

Hiroki Shiraishi, Yohei Hayamizu et al.

TLDR: This paper introduces a flexible rule representation using a four-parameter beta distribution to improve the adaptability and performance of Learning Classifier Systems (LCSs) in classification tasks.

01
arXivJun 4, 2025

Facial Appearance Capture at Home with Patch-Level Reflectance Prior

Yuxuan Han, Junfeng Lyu et al.

TLDR: The paper presents a method to enhance facial reflectance capture using smartphones, achieving studio-like quality by employing a patch-level diffusion prior trained on high-resolution Light Stage scans.

01
arXivJun 4, 2025

CORE: Constraint-Aware One-Step Reinforcement Learning for Simulation-Guided Neural Network Accelerator Design

Yifeng Xiao, Yurong Xu et al.

TLDR: CORE is a novel one-step RL method for efficient design space exploration, improving sample efficiency in neural network accelerator design by using a constraint-aware approach without a value function.

00
ArXivJun 4, 2025

VCDiag: Classifying Erroneous Waveforms for Failure Triage Acceleration

Minh Luu, Surya Jasper et al.

TLDR: VCDiag is a tool that uses VCD data to classify failing waveforms in RTL-level simulations, achieving over 94% accuracy in identifying likely failure modules and significantly reducing data size for analysis.

00
arXivJun 4, 2025

Voyager: Long-Range and World-Consistent Video Diffusion for Explorable 3D Scene Generation

Tianyu Huang, Wangguandong Zheng et al.

TLDR: Voyager is a novel video diffusion framework that generates consistent 3D point-cloud sequences from a single image for explorable scenes, improving visual quality and geometric accuracy without manual 3D reconstruction pipelines.

01
arXivJun 4, 2025

Tone recognition in low-resource languages of North-East India: peeling the layers of SSL-based speech models

Parismita Gogoi, Sishir Kalita et al.

TLDR: The study evaluates SSL models for tone recognition in three low-resource North-East Indian languages, finding that Mizo tones are recognized best and highlighting the importance of middle layers in SSL models.

00
arXivJun 4, 2025

ViTSGMM: A Robust Semi-Supervised Image Recognition Network Using Sparse Labels

Rui Yann, Xianglei Xing

TLDR: ViTSGMM is a robust semi-supervised image recognition network that excels with minimal labeled data and addresses data leakage issues in the STL-10 dataset.

00
arXivJun 4, 2025

AgentMisalignment: Measuring the Propensity for Misaligned Behaviour in LLM-Based Agents

Akshat Naik, Patrick Quinn et al.

TLDR: The paper introduces AgentMisalignment, a benchmark for assessing the propensity of LLM-based agents to exhibit misaligned behaviors in real-world scenarios, revealing that both model capability and system prompts significantly influence misalignment tendencies.

01
arXivJun 4, 2025

TextAtari: 100K Frames Game Playing with Language Agents

Wenhao Li, Wenwu Li et al.

TLDR: TextAtari is a benchmark for testing language agents on long-horizon decision-making tasks using textual descriptions of Atari games, revealing significant performance gaps compared to human players.

00
arXivJun 4, 2025

How PARTs assemble into wholes: Learning the relative composition of images

Melika Ayoughi, Samira Abnar et al.

TLDR: PART is a self-supervised learning approach that improves image composition understanding by learning continuous relative transformations between image patches, outperforming grid-based methods in spatial tasks.

00
ArXivJun 4, 2025

Learning-at-Criticality in Large Language Models for Quantum Field Theory and Beyond

Xiansheng Cai, Sihan Hu et al.

TLDR: Learning at criticality allows large language models to generalize from minimal data, enhancing their performance in complex symbolic tasks like quantum field theory.

00
ArXivJun 4, 2025

STAR: Learning Diverse Robot Skill Abstractions through Rotation-Augmented Vector Quantization

Hao Li, Qi Lv et al.

TLDR: STAR is a framework that improves robotic skill learning and composition using rotation-augmented vector quantization to prevent codebook collapse and a causal skill transformer for modeling dependencies between skills, showing a 12% improvement over baselines.

00
arXivJun 4, 2025

RewardAnything: Generalizable Principle-Following Reward Models

Zhuohao Yu, Jiali Zeng et al.

TLDR: RewardAnything introduces a novel reward model that follows natural language principles, enabling better adaptability to diverse tasks without retraining.

00
arXivJun 4, 2025

Mitigating Hallucinations in Large Vision-Language Models via Entity-Centric Multimodal Preference Optimization

Jiulong Wu, Zhengliang Shi et al.

TLDR: The paper introduces Entity-centric Multimodal Preference Optimization (EMPO) to reduce hallucinations in Large Vision-Language Models by improving modality alignment and utilizing automatically constructed high-quality preference data.

00
arXivJun 4, 2025

Towards Better Disentanglement in Non-Autoregressive Zero-Shot Expressive Voice Conversion

Seymanur Akti, Tuan Nam Nguyen et al.

TLDR: The study improves expressive voice conversion by enhancing style transfer and reducing source timbre leakage using a non-autoregressive framework with a conditional variational autoencoder.

01
arXivJun 4, 2025

Object-centric 3D Motion Field for Robot Learning from Human Videos

Zhao-Heng Yin, Sherry Yang et al.

TLDR: The paper introduces an object-centric 3D motion field representation for extracting actionable insights from human videos to improve robot learning, achieving significantly better performance in real-world tasks compared to prior methods.

00
arXivJun 4, 2025

TransClean: Finding False Positives in Multi-Source Entity Matching under Real-World Conditions via Transitive Consistency

Fernando de Meer Pardo, Branka Hadji Misheva et al.

TLDR: TransClean improves entity matching accuracy by detecting false positives using transitive consistency, achieving significant F1 score improvements in multi-source datasets.

00
arXivJun 4, 2025

MS-YOLO: A Multi-Scale Model for Accurate and Efficient Blood Cell Detection

Guohua Wu, Shengqi Chen et al.

TLDR: MS-YOLO is a new blood cell detection model that achieves high accuracy and efficiency by enhancing the YOLOv11 framework with innovative modules, outperforming existing models in detecting overlapping and multi-scale cells.

02
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