The Geometry of Cooperative Game Solutions: Stratified Egalitarian Shapley Values

Abstract

The space L of linear value maps on a finite-player cooperative game GN is finite-dimensional, and admits a canonical inner product induced by the Harsanyi-dividend decomposition of GN. We show that this inner product is intrinsic: the same value arises from any orthonormal basis of GN with respect to the Harsanyi inner product. Within this geometry, the subspace LESL of efficient, symmetric, linear value maps admits a clean structure theorem. The induced orthogonal stratification of L by coalition size yields a canonical linear isomorphism LESL = Rn-1, under which every efficient symmetric linear value map decomposes uniquely into n-1 stratified epsilons, one per coalition size. The classical egalitarian Shapley family of Joosten (1996) is precisely the diagonal slice of this Rn-1. The orthogonal projection of any Psi in LESL onto this diagonal yields an optimal parameter eps*(Psi) equal to the weighted mean of the stratified epsilons under an explicit probability distribution wa over coalition sizes, and the goodness-of-fit R2(Psi) equals one minus the relative weighted variance of those epsilons. The framework is a literal regression-statistics analogue of the coefficient of determination. At n=4 it produces a clean three-way classification of the standard alternatives to the Shapley value: the Banzhaf value is nearly orthogonal to the egalitarian Shapley axis (R2 ~ 1%); the equal-surplus-division value is moderately aligned (R2 ~ 38%); the solidarity value is almost entirely aligned (R2 ~ 99.6%). Asymptotically R2(ESD) -> 1, R2(So) -> 1, and R2(Bz) -> 1/2, the last reflecting a structural identity between the efficiency defect and the egalitarian-Shapley deviation of the Banzhaf value at every coalition size.

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