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Home / Proceedings / Papers from the 2000 AAAI Fall Symposium /

fall-2000-02

Contents

  • Learners as Modellers of Complex Systems: What Can Be Automated?

    Manuel Marques and Helen Pain

    PDF
  • Learning Domain Knowledge for Teaching Procedural Tasks

    Andrew Scholer, Jeff Rickel, Richard Angros, Jr., and W. Lewis Johnson

    PDF
  • Constructivism, Self-Directed Learning and Case-Based Reasoners: A Winning Combination

    P. Boylan, A. Micarelli, V. Pirrottina, and F. Sciarrone

    PDF
  • A Mixed-Initiative Approach to Teaching Agents to Do Things

    Mihai Boicu, Dorin Marcu, Michael Bowman, and Gheorghe Tecuci

    PDF
  • Learning Task Models for Collagen

    Andrew Garland, Neal Lesh, Charles Rich, and Candace L. Sidner

    PDF
  • Learning How to Edit Text

    Tessa Lau, Pedro Domingos, and Daniel S. Weld

    PDF
  • Acquiring Procedural Knowledge in EXPECT

    Yolanda Gil, Jim Blythe, Jihie Kim, and Surya Ramachandran

    PDF
  • Extracting Procedural Knowledge from a Groupware for Planning System

    Joshua Introne and Rick Alterman

    PDF
  • Learning How to Do Things with Imitation

    Aris Alissandrakis, Chrystopher L. Nehaniv, and Kerstin Dautenhahn

    PDF
  • Communication between Trainer and Agent in Programming by Demonstration

    Mathias Bauer, Dietmar Dengler, and Gabriele Paul

    PDF
  • Knowledge Acquisition for Adaptive Collaborative Learning Environments

    Amy Soller and Alan Lesgold

    PDF

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