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Home / Proceedings / AAAI Workshop Papers 1993 /

Learning Action Models

Contents

  • Learning Planning Operators by Exploration and Experimentation

    Yolanda Gil

    1

    PDF
  • A Synthetic Architecture for Action and Learning

    58

    PDF
  • Learning Action Models by Observing Other Agents

    Xuemei Wang

    10

    PDF
  • PAGODA: An Integrated Architecture for Autonomous Agents

    Marie desJardins

    15

    PDF
  • Learning Continous Perception-action Models

    Ashwin Ram, Juan Carlos Santamaria

    20

    PDF
  • Experimentation Guided by a Knowledge Graph

    Jan M. Zytkow, Jieming Zhu

    23

    PDF
  • Exploration With and Without a Map

    Sven Koenig, Reid G. Simmons

    28

    PDF
  • Learning Monitoring Strategies to Compensate for Model Uncertainty

    Eric A. Hansen, Paul R. Cohen

    33

    PDF
  • Genetic Programming to Learn an Agent’s Monitoring Strategy

    Marc Atkin, Paul R. Cohen

    36

    PDF
  • Successive Refinement of Empirical Models

    Ralph E. Gonzalez

    42

    PDF
  • Towards a Robot Learning Architecture

    Joseph O'Sullivan

    47

    PDF
  • Talking about the World: Cooperative Robots that Learn to Communicate

    Holly Yanco

    52

    PDF
  • Combining Experience with Quantitive Models

    John J. Grefenstette, Connie Loggia Ramsey

    57

    PDF
  • Learning Action Models as Reactive Behaviors

    Alan C. Schultz, John J. Grefenstette

    61

    PDF

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