The Computational Gauntlet of Human-Like Learning

Pat Langley

[AAAI-22] Senior Member Presentation Track - Blue Sky
Abstract: In this paper, I pose a major challenge for AI researchers: to develop

systems that learn in a human-like manner. I briefly review the

history of machine learning, noting that early work made close contact

with results from cognitive psychology but that this is no longer the

case. I identify seven characteristics of human behavior that, if

reproduced, would offer better ways to acquire expertise than

statistical induction over massive training sets. I illustrate these

points with two domains - mathematics and driving - where people

are effective learners and review systems that address them. In

closing, I suggest ways to encourage more research on human-like

learning.

Sessions where this paper appears

  • Poster Session 4

    Fri, February 25 5:00 PM - 6:45 PM (+00:00)
    Blue 1
    Add to Calendar

  • Poster Session 11

    Mon, February 28 12:45 AM - 2:30 AM (+00:00)
    Blue 1
    Add to Calendar

  • Oral Session 4

    Fri, February 25 6:45 PM - 8:00 PM (+00:00)
    Blue 1
    Add to Calendar