Decentralized language learning through acting
Claudia V. Goldman
Martin Allen
Shlomo Zilberstein
Abstract
This paper presents an algorithm for learning the meaning of messages communicated
between agents that interact while
acting optimally towards a cooperative goal.
Our reinforcement-learning method is
based on Bayesian filtering and has been adapted for a decentralized control
process. Empirical results shed light on the complexity of the learning problem,
and on factors affecting the speed of convergence.
Designing intelligent agents able to
adapt their mutual interpretation of messages exchanged, in order to
improve overall task-oriented performance, introduces an essential cognitive capability that can
upgrade the current state of the art in multi-agent and human-machine systems
to the next level. Learning to communicate while acting will add to the
robustness and flexibility of these systems and hence to a more efficient and
productive performance.
@InProceedings{Goldman04,
author = {Claudia V.~Goldman and Martin Allen and Shlomo Zilberstein},
title = {Decentralized Language Learning through Acting},
booktitle = {Proceedings of the Third International Joint Conference on
Autonomous Agents and Multiagent Systems ({AAMAS}-04)},
pages = {1006--1013},
year = 2004,
address = {New York City, NY}
}
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