Applied Sciences (Jun 2023)

Shapley Values as a Strategy for Ensemble Weights Estimation

  • Vaidotas Drungilas,
  • Evaldas Vaičiukynas,
  • Linas Ablonskis,
  • Lina Čeponienė

DOI
https://doi.org/10.3390/app13127010
Journal volume & issue
Vol. 13, no. 12
p. 7010

Abstract

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This study introduces a novel performance-based weighting scheme for ensemble learning using the Shapley value. The weighting uses the reciprocal of binary cross-entropy as a base learner’s performance metric and estimates its Shapley value to measure the overall contribution of a learner to an equally weighted ensemble of various sizes. Two variants of this strategy were empirically compared with a single monolith model and other static weighting strategies using two large banking-related datasets. A variant that discards learners with a negative Shapley value was ranked as first or at least second when constructing homogeneous ensembles, whereas for heterogeneous ensembles this strategy resulted in a better or at least similar detection performance to other weighting strategies tested. The main limitation being the computational complexity of Shapley calculations, the explored weighting strategy could be considered as a generalization of performance-based weighting.

Keywords