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Voting Power Index Analysis×샤플리 값×
분야Political Science게임이론
계열MCDMMachine learning
기원 연도19541953
창시자Lloyd Shapley & Martin Shubik; John F. Banzhaf IIILloyd Shapley
유형Cooperative game-theoretic measure of a priori voting poweralgorithm
원전Shapley, L. S., & Shubik, M. (1954). A Method for Evaluating the Distribution of Power in a Committee System. American Political Science Review, 48(3), 787-792. DOI ↗Shapley, L. S. (1953). A value for n-person games. In H. W. Kuhn & A. W. Tucker (Eds.), Contributions to the Theory of Games II (pp. 307-317). Princeton University Press. DOI ↗
별칭Voting Power Index, Shapley-Shubik Index, Banzhaf Power Index, A Priori Voting Power AnalysisFair Division, Cooperative Game Solution, Dividend Vector
관련44
요약Voting power index analysis measures the a priori capacity of each member of a weighted voting body to influence collective decisions, defined as the probability that the member is pivotal — that their vote turns a losing coalition into a winning one. The two canonical indices are the Shapley-Shubik index, introduced by Lloyd Shapley and Martin Shubik in 1954 as a specialization of the Shapley value to simple voting games, and the Banzhaf index, formalized by John Banzhaf in 1965. Both reveal that a player's share of power generally differs sharply from its share of votes.The Shapley Value is a solution concept for coalition games that distributes total payoff fairly among players based on their marginal contributions to coalitions. Introduced by Lloyd Shapley in 1953, the Shapley Value is the unique payoff distribution that satisfies four intuitive axioms: efficiency (total payoff is distributed), symmetry (identical players receive equal payoff), null player (players contributing nothing receive nothing), and additivity across games.
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