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  • All (21181) +146
  • AI (3169) +10
  • DevOps (940) +5
  • Software (11185) +102
  • IT (5838) +28
  • Education (48)
  • Notice
  • All (21181) +146
    • AI (3169) +10
    • DevOps (940) +5
    • Software (11185) +102
    • IT (5838) +28
    • Education (48)
  • Notice
  • All (21181) +146
  • AI (3169) +10
  • DevOps (940) +5
  • Software (11185) +102
  • IT (5838) +28
  • Education (48)
  • Notice
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  • 1 month ago · ai

    [Paper] Whatever Remains Must Be True: Filtering Drives Reasoning in LLMs, Shaping Diversity

    Reinforcement Learning (RL) has become the de facto standard for tuning LLMs to solve tasks involving reasoning. However, growing evidence shows that models tra...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] AQUA-Net: Adaptive Frequency Fusion and Illumination Aware Network for Underwater Image Enhancement

    Underwater images often suffer from severe color distortion, low contrast, and a hazy appearance due to wavelength-dependent light absorption and scattering. Si...

    #research #paper #ai #machine-learning #computer-vision
  • 1 month ago · ai

    [Paper] M4-RAG: A Massive-Scale Multilingual Multi-Cultural Multimodal RAG

    Vision-language models (VLMs) have achieved strong performance in visual question answering (VQA), yet they remain constrained by static training data. Retrieva...

    #research #paper #ai #machine-learning #nlp #computer-vision
  • 1 month ago · ai

    [Paper] MaxShapley: Towards Incentive-compatible Generative Search with Fair Context Attribution

    Generative search engines based on large language models (LLMs) are replacing traditional search, fundamentally changing how information providers are compensat...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] Consequences of Kernel Regularity for Bandit Optimization

    In this work we investigate the relationship between kernel regularity and algorithmic performance in the bandit optimization of RKHS functions. While reproduci...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] SymPyBench: A Dynamic Benchmark for Scientific Reasoning with Executable Python Code

    We introduce, a large-scale synthetic benchmark of 15,045 university-level physics problems (90/10% train/test split). Each problem is fully parameterized, supp...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] Trusted AI Agents in the Cloud

    AI agents powered by large language models are increasingly deployed as cloud services that autonomously access sensitive data, invoke external tools, and inter...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] Impugan: Learning Conditional Generative Models for Robust Data Imputation

    Incomplete data are common in real-world applications. Sensors fail, records are inconsistent, and datasets collected from different sources often differ in sca...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] Developing synthetic microdata through machine learning for firm-level business surveys

    Public-use microdata samples (PUMS) from the United States (US) Census Bureau on individuals have been available for decades. However, large increases in comput...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] Variational Quantum Rainbow Deep Q-Network for Optimizing Resource Allocation Problem

    Resource allocation remains NP-hard due to combinatorial complexity. While deep reinforcement learning (DRL) methods, such as the Rainbow Deep Q-Network (DQN), ...

    #research #paper #ai #machine-learning
  • 1 month ago · ai

    [Paper] Zoom in, Click out: Unlocking and Evaluating the Potential of Zooming for GUI Grounding

    Grounding is a fundamental capability for building graphical user interface (GUI) agents. Although existing approaches rely on large-scale bounding box supervis...

    #research #paper #ai #machine-learning #nlp #computer-vision
  • 1 month ago · ai

    [Paper] Designing an Optimal Sensor Network via Minimizing Information Loss

    Optimal experimental design is a classic topic in statistics, with many well-studied problems, applications, and solutions. The design problem we study is the p...

    #research #paper #ai #machine-learning

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