Complementary cooperation, minimal winning coalitions, and power indices
Zhigang Cao, Xiaoguang Yang

TL;DR
This paper introduces the two-dimensional complementary weighted multiple majority game (C-WMMG), a new simple game model that is more computationally manageable than weighted majority games and applicable to team sports and voting mechanisms.
Contribution
It presents the C-WMMG model, proves polynomial computability of key power indices, and explores properties like local monotonicity, offering new tools for cooperation and competition analysis.
Findings
At most n+1 minimal winning coalitions in 2D C-WMMG
All four main power indices are polynomially computable in 2D C-WMMG
Local monotonicity holds for all four power indices in 2D C-WMMG
Abstract
We introduce a new simple game, which is referred to as the complementary weighted multiple majority game (C-WMMG for short). C-WMMG models a basic cooperation rule, the complementary cooperation rule, and can be taken as a sister model of the famous weighted majority game (WMG for short). In this paper, we concentrate on the two dimensional C-WMMG. An interesting property of this case is that there are at most minimal winning coalitions (MWC for short), and they can be enumerated in time , where is the number of players. This property guarantees that the two dimensional C-WMMG is more handleable than WMG. In particular, we prove that the main power indices, i.e. the Shapley-Shubik index, the Penrose-Banzhaf index, the Holler-Packel index, and the Deegan-Packel index, are all polynomially computable. To make a comparison with WMG, we know that it may have…
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