Learning to communicate in a decentralized environment
C. V. Goldman
M. Allen
S. Zilberstein
Abstract
Learning to communicate is an emerging challenge in AI research. It is known that
agents interacting in decentralized, stochastic environments can benefit from exchanging
information. Multiagent planning generally assumes that agents share a common means of
communication; however, in building robust distributed systems it is important to address
potential miscoordination resulting from misinterpretation of messages exchanged. This
paper lays foundations for studying this problem, examining its properties analytically and
empirically in a decision-theoretic context. We establish a formal framework for the problem,
and identify a collection of necessary and sufficient properties for decision problems that
allow agents to employ probabilistic updating schemes in order to learn how to interpret
what others are communicating. Solving the problem optimally is often intractable, but our
approach enables agents using different languages to converge upon coordination over time.
Our experimental work establishes how these methods perform when applied to problems
of varying complexity.
@TechReport{Goldman06,
author = {Claudia V. Goldman and Martin Allen and Shlomo Zilberstein},
title = {Learning to Communicate in a Decentralized Environment},
institution = {University of Massachusetts, Department of Computer Science},
year = 2006,
number = {UM-CS-2006-16},
}
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