Buro, M. (1995)
"Statistical Feature Combination for the Evaluation of Game Positions",
Volume 3, pages 373-382.
Abstract: This article describes an application of three well-known
statistical methods in the field of game-tree search: using a large
number of classified Othello positions, feature weights for evaluation
functions with a game-phase-independent meaning are estimated by means
of logistic regression, Fisher's linear discriminant, and the
quadratic discriminant function for normally distributed
features. Thereafter, the playing strengths are compared by means of
tournaments between the resulting versions of a world-class Othello
program. In this application, logistic regression - which is used here
for the first time in the context of game playing - leads to better
results than the other approaches.
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