http://cogprints.org/3331/
Information Theory and Representation in Associative Word Learning
A significant portion of early language learning
can be viewed as an associative learning
problem. We investigate the use of associative
language learning based on the principle that
words convey Shannon information about the
environment. We discuss the shortcomings
in representation used by previous associative
word learners and propose a functional representation
that not only denotes environmental
categories, but serves as the basis for activities
and interaction with the environment.
We present experimental results with an autonomous
agent acquiring language.
Burns, Brendan
Sutton, Charles
Morrison, Clayton
Cohen, Paul
Machine Learning
Artificial Intelligence
Robotics
Brendan
Burns
Charles
Sutton
Clayton
Morrison
Paul
Cohen