Fast Algorithms for Game-Theoretic Centrality Measures
Piotr Lech Szczepa\'nski

TL;DR
This paper develops polynomial-time algorithms for computing game-theoretic centrality measures, especially those based on the Shapley value, addressing computational challenges in network analysis.
Contribution
It demonstrates polynomial algorithms for various game-theoretic centralities and introduces a new representation for order-sensitive cooperative games.
Findings
Polynomial algorithms for Shapley value-based centralities
Proved #P-hardness for connectivity games
Introduced generalized marginal contribution networks
Abstract
In this dissertation, we analyze the computational properties of game-theoretic centrality measures. The key idea behind game-theoretic approach to network analysis is to treat nodes as players in a cooperative game, where the value of each coalition of nodes is determined by certain graph properties. Next, the centrality of any individual node is determined by a chosen game-theoretic solution concept (notably, the Shapley value) in the same way as the payoff of a player in a cooperative game. On one hand, the advantage of game-theoretic centrality measures is that nodes are ranked not only according to their individual roles but also according to how they contribute to the role played by all possible subsets of nodes. On the other hand, the disadvantage is that the game-theoretic solution concepts are typically computationally challenging. The main contribution of this dissertation is…
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Taxonomy
TopicsGame Theory and Applications · Complex Network Analysis Techniques · Advanced Graph Theory Research
