Abstract: The creation of mathematical,
as well as qualitative (or rule-based), models is difficult, time-consuming,
and expensive. Recent developments in evolutionary computation
hold out the prospect that, for many problems of practical import,
machine learning techniques can be used to discover useful models
automatically. The prospects are particularly bright, we believe,
for such automated discoveries in the context of game programming
regime to discover high-quality negotiation policies. The game-theoretic
context in which we conducted these experiments - a three-player
coalitions game with sidepayments - is considerably more complex
and subtle than any reported in the previous literature on machine
learning applied to game theory. Key words and phrases
:
automatic model discovery
, game theory
, genetic programming
, machine learning
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