Islamabad, Jan 21: Although we're
convinced that baby is brilliant when she mutters her first words, cognitive
scientists have been conducting a decades-long debate about whether or not human
beings actually "learn" language.
Most theoretical linguists, including
the noted researcher Noam Chomsky, argue that people have little more than a
"language organ" -- an inherent capacity for language that's activated during
early childhood. On the other hand, researchers like Dr. Roni Katzir of Tel Aviv
University's Department of Linguistics insist that what humans can actually
learn is still an open question -- and he has built a computer program to try
and find an answer.
"I have built a computer program that learns basic
grammar using only the bare minimum of cognitive machinery -- the bare minimum
that children might have -- to test the hypothesis that language can indeed be
learned," says Dr. Katzir, a graduate of the Massachusetts Institute of
Technology (where he took classes taught by Chomsky) and a former faculty member
at Cornell University. His early results suggest that the process of language
acquisition might be much more active than the majority of linguists have
assumed up until now.
Dr. Katzir's work was recently presented at a
Cornell University workshop, where researchers from fields in linguistics,
psychology, and computer science gathered to discuss learning
processes.
Able to learn basic grammar, the computer program relies on no
preconceived assumptions about language or how it might be learned. Still in its
early stages of development, the program helps Dr. Katzir explore the limits of
learning -- what kinds of information can a complex cognitive system like the
human mind acquire and then store at the unconscious level? Do people "learn"
language, and if so, can a computer be made to learn the same way?
Using
a type of machine learning known as "unsupervised learning," Dr. Katzir has
programmed his computer to "learn" simple grammar on its own. The program sees
raw data and conducts a random search to find the best way to characterize what
it sees.
The computer looks for the simplest description of the data
using a criterion known as Minimum Description Length. "The process of human
learning is similar to the way computers compress files: it searches for
recognizable patterns in the data. Let's say, for instance, that you want to
describe a string of 1,000 letters. You can be very naïve and list all the
letters in order, or you can start to notice patterns -- maybe every other
character is a vowel -- and use that information to give a more compact
description. Once you understand something better, you can describe it more
efficiently," he says.
His early results point to the conclusion that the
computer, modeling the human mind, is indeed able to "learn" -- that language
acquisition need not be limited to choosing from a finite series of
possibilities.
While it's primarily theoretical, Dr. Katzir's research
may have applications in technologies such as voice dialogue systems: a computer
that, on its own, can better understand what callers are looking for. A more
advanced version of Dr. Katzir's program might learn natural language grammar
and be able to process data received in a realistic setting, reflecting the
manner in which humans actually talk.
The results of the research might
also be applied to study how we learn to "read" visual images, and may be able
to teach a robot how to reconstruct a three-dimensional space from a
two-dimensional image and describe what it sees. Dr. Katzir plans to pursue this
line of research with engineering colleagues at Tel Aviv University and
abroad.
"Many linguists today assume that there are severe limits on what
is learnable," Dr. Katzir says. "I take a much more optimistic view about those
limitations and the capacity of humans to
learn."
Ends
SA/EN
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» Challenging the limits of learning: Linguist measures the human mind against the yardstick of a machine
Challenging the limits of learning: Linguist measures the human mind against the yardstick of a machine
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