550 Episodio

  1. Provably Learning from Language Feedback

    Pubblicato: 09/07/2025
  2. Markets with Heterogeneous Agents: Dynamics and Survival of Bayesian vs. No-Regret Learners

    Pubblicato: 05/07/2025
  3. Why Neural Network Can Discover Symbolic Structures with Gradient-based Training: An Algebraic and Geometric Foundation

    Pubblicato: 05/07/2025
  4. Causal Abstraction with Lossy Representations

    Pubblicato: 04/07/2025
  5. The Winner's Curse in Data-Driven Decisions

    Pubblicato: 04/07/2025
  6. Embodied AI Agents: Modeling the World

    Pubblicato: 04/07/2025
  7. Beyond Statistical Learning: Exact Learning Is Essential for General Intelligence

    Pubblicato: 04/07/2025
  8. What Has a Foundation Model Found? Inductive Bias Reveals World Models

    Pubblicato: 04/07/2025
  9. Language Bottleneck Models: A Framework for Interpretable Knowledge Tracing and Beyond

    Pubblicato: 03/07/2025
  10. Learning to Explore: An In-Context Learning Approach for Pure Exploration

    Pubblicato: 03/07/2025
  11. Human-AI Matching: The Limits of Algorithmic Search

    Pubblicato: 25/06/2025
  12. Uncertainty Quantification Needs Reassessment for Large-language Model Agents

    Pubblicato: 25/06/2025
  13. Bayesian Meta-Reasoning for Robust LLM Generalization

    Pubblicato: 25/06/2025
  14. General Intelligence Requires Reward-based Pretraining

    Pubblicato: 25/06/2025
  15. Deep Learning is Not So Mysterious or Different

    Pubblicato: 25/06/2025
  16. AI Agents Need Authenticated Delegation

    Pubblicato: 25/06/2025
  17. Probabilistic Modelling is Sufficient for Causal Inference

    Pubblicato: 25/06/2025
  18. Not All Explanations for Deep Learning Phenomena Are Equally Valuable

    Pubblicato: 25/06/2025
  19. e3: Learning to Explore Enables Extrapolation of Test-Time Compute for LLMs

    Pubblicato: 17/06/2025
  20. Extrapolation by Association: Length Generalization Transfer in Transformers

    Pubblicato: 17/06/2025

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