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首页> 外文期刊>The Journal of Artificial Intelligence Research >Efficient Computation of the Shapley Value for Game-Theoretic Network Centrality
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Efficient Computation of the Shapley Value for Game-Theoretic Network Centrality

机译:博弈论网络中心度的Shapley值的有效计算

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摘要

The Shapley value-probably the most important normative payoff division scheme in coalitional games-has recently been advocated as a useful measure of centrality in networks. However, although this approach has a variety of real-world applications (including social and organisational networks, biological networks and communication networks), its computational properties have not been widely studied. To date, the only practicable approach to compute Shapley value-based centrality has been via Monte Carlo simulations which are computationally expensive and not guaranteed to give an exact answer. Against this background, this paper presents the first study of the computational aspects of the Shapley value for network centralities. Specifically, we develop exact analytical formulae for Shapley value-based centrality in both weighted and unweighted networks and develop efficient (polynomial time) and exact algorithms based on them. We empirically evaluate these algorithms on two real-life examples (an infrastructure network representing the topology of the Western States Power Grid and a collaboration network from the field of astrophysics) and demonstrate that they deliver significant speedups over the Monte Carlo approach. For instance, in the case of unweighted networks our algorithms are able to return the exact solution about 1600 times faster than the Monte Carlo approximation, even if we allow for a generous 10% error margin for the latter method.
机译:Shapley值(可能是联盟博弈中最重要的规范收益划分方案)最近被提倡为网络中心性的一种有用措施。但是,尽管此方法具有多种实际应用(包括社会和组织网络,生物网络和通信网络),但其计算属性尚未得到广泛研究。迄今为止,唯一可行的方法是通过蒙特卡洛模拟来计算基于Shapley值的中心度,这在计算上是昂贵的,并且不能保证给出确切的答案。在此背景下,本文提出了针对网络中心性的Shapley值的计算方面的首次研究。具体来说,我们为加权和非加权网络中基于Shapley值的中心度开发了精确的解析公式,并基于它们开发了有效的(多项式时间)和精确算法。我们通过两个实际示例(代表西方国家电网拓扑的基础结构网络和来自天体物理学领域的协作网络)对这些算法进行经验评估,并证明它们比蒙特卡洛方法具有明显的提速效果。例如,在非加权网络的情况下,即使我们为后一种方法留出了10%的误差裕度,我们的算法也能够以比Monte Carlo近似快1600倍的速度返回精确解。

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