The Shapley value is a well recognised method for dividing the value of joint effort in cooperative games. However, computing the Shapley value is known to be computationally hard, so stratified sample-based estimation is sometimes used. For this task, we provide two contributions to the state of the art. First, we derive a novel concentration inequality that is tailored to stratified Shapley value estimation using sample variance information. Second, by sequentially choosing samples to minimize our inequality, we develop a new and more efficient method of sampling to estimate the Shapley value. We evaluate our sampling method on a suite of test cooperative games, and our results demonstrate that it outperforms or is competitive with existing stratified sample-based estimation approaches to computing the Shapley value.
CITATION STYLE
Burgess, M. A., & Chapman, A. C. (2021). Approximating the Shapley Value Using Stratified Empirical Bernstein Sampling. In IJCAI International Joint Conference on Artificial Intelligence (pp. 73–81). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2021/11
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