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HOST:
Laboratory for Information and Decision Systems



SERIES:
Where Does Syntax Come From? Have We All Been Wrong?


More videos in this series


Human Simulations of Language Learning
October 19, 2007
9:30 AM

LOCATION:
Wong Auditorium

SPONSOR INFO:
This is part one of nine from the full-day symposium, Where Does Syntax Come From? Have We All Been Wrong? The entire symposium will be published on MIT World during December 2007, and early 2008.


   
Video Time Index
Human Simulations of Language Learning

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SPEAKER:
Michael Coen ,‘91, SM ‘94, SMD ‘06
Assistant Professor, School of Medicine and Public Health, Department of Biostatistics and Medical Informatics, Department of Computer Sciences,
University of Wisconsin-Madison
SPEAKER:
Lila Gleitman
Professor Emerita, Department of Psychology, University of Pennsylvania


SPEAKERS:
Michael Coen ,‘91, SM ‘94, SMD ‘06: Assistant Professor, School of Medicine and Public Health, Department of Biostatistics and Medical Informatics, Department of Computer Sciences,
University of Wisconsin-Madison
Coen's UWisc. web page

Lila Gleitman: Professor Emerita, Department of Psychology, University of Pennsylvania
Gleitman's Penn. website

ABOUT THE LECTURE:
This workshop, explains Michael Coen, is an effort to engender temperate, collaborative discussion of a matter that inspires hot dispute: whether machine learning helps explain how humans acquire language. In particular, says Coen, machine learning advocates believe they have evidence against Noam Chomsky’s “poverty of stimulus argument,” which in essence states that language is built into us, that “children don’t receive enough linguistic inputs to explain linguistic outputs.”

Coen, who doesn’t think much of such claims, worries about a deeper problem, that scientists have “begun to discuss engineering at the expense of science.” He describes 13-year-old Bobby Fischer’s astonishing match with a world chessmaster, where Fischer managed to look 16 moves ahead -- eliminating about 10 to the 30th board positions. We had no way to represent his thinking process then, and we don’t today, although scientists have built a machine, Deep Blue, that can topple any human chess champion. It seems there’s nothing left to say about chess, yet we know absolutely nothing about how humans play chess, says Coen. “If you’re an engineer, this may be fine, but if you’re a scientist, that’s deeply troubling.”

One problem with machine models, says Lila Gleitman, is that “they don’t try to learn what the human already knows,” and we really aren’t sure “how big a piece of the pie that is in the first place.” Gleitman distinguishes between acquiring language, and acquiring *a* language, like French or German. In her years of researching how children learn language, and specifically children who have been deprived of linguistic input entirely, Gleitman does not find a blank slate: “Children don’t just sit there; they start to make gestures.” Gleitman reviews various studies that describe a basic sequence in language acquisition that holds true regardless of specific ‘inputs.’ If researchers make models that are to be “of any interest, they ought to take into account the fact that you may not have to learn some of this.”

Gleitman has conducted simulations with adults, giving them incomplete scenes on video or paper (dropping words or substituting Lewis Carroll type doggerel) to see how we acquire the meaning of common nouns and verbs through contextual clues and inference. The more sources of evidence people get in these tests, the better they do. But such language acquisition “doesn’t scale up” to higher level categories of words,” such as “think.” Says Gleitman, “It’s crazy…to suppose there’s no biological given in a language learning situation. There’s plenty. Some of it is maybe the substance of language and some of that is about the sophisticated learning procedures themselves.” So any kind of “informative statistical modeling requires a matrix of conspiring cues, intrinsically ordered in time of appearance…Realistic models of incremental learning will incorporate what the learner brings to the task.”

NOTES ON THE VIDEO (Time Index):
Video length is 1:07:22.

Robert Berwick, Professor of Computational Linguistics, Department of Electrical Engineering and Computer Science, introduces the lecture series.

At 2:01, Michael Coen sets the stage for the workshop.

At 25:19, Lila Gleitman begins.

At 59:00, Gleitman takes questions.

The information on this page was accurate as of the day the video was added to MIT World. This video was added to MIT World on 2007-12-11.
       

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