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Beyond TreeSHAP: Efficient Computation of Any-Order Shapley Interactions for Tree Ensembles

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While shallow decision trees may be interpretable, larger ensemble models like gradient-boosted trees, which often set the state of the art in machine learning problems involving tabular data, still remain black box models. As a remedy, the Shapley value (SV) is a well-known concept in explainable artificial intelligence (XAI) research for quantifying additive feature attributions of predictions. The model-specific TreeSHAP methodology solves the exponential complexity for retrieving exact SVs from tree-based models. Expanding beyond individual feature attribution, Shapley interactions reveal the impact of intricate feature interactions of any order. In this work, we present TreeSHAP-IQ, an efficient method to compute any-order additive Shapley interactions for predictions of tree-based models. TreeSHAP-IQ is supported by a mathematical framework that exploits polynomial arithmetic to compute the interaction scores in a single recursive traversal of the tree, akin to Linear TreeSHAP. We apply TreeSHAP-IQ on state-of-the-art tree ensembles and explore interactions on well-established benchmark datasets.

Maximilian Muschalik, Fabian Fumagalli, Barbara Hammer, Eyke H\"ullermeier• 2024

Related benchmarks

TaskDatasetResultRank
Third-order Shapley interaction calculationCalHousing small
Runtime0.253
2
Third-order Shapley interaction calculationCalHousing sparse
Runtime30.027
2
Third-order Shapley interaction calculationCovType small
Runtime0.182
2
Third-order Shapley interaction calculationCovType large
Runtime25.489
2
Third-order Shapley interaction calculationCovType sparse
Runtime3.685
2
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