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Learning Performance Maximizing Ensembles with Explainability Guarantees

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In this paper we propose a method for the optimal allocation of observations between an intrinsically explainable glass box model and a black box model. An optimal allocation being defined as one which, for any given explainability level (i.e. the proportion of observations for which the explainable model is the prediction function), maximizes the performance of the ensemble on the underlying task, and maximizes performance of the explainable model on the observations allocated to it, subject to the maximal ensemble performance condition. The proposed method is shown to produce such explainability optimal allocations on a benchmark suite of tabular datasets across a variety of explainable and black box model types. These learned allocations are found to consistently maintain ensemble performance at very high explainability levels (explaining $74\%$ of observations on average), and in some cases even outperforming both the component explainable and black box models while improving explainability.

Vincent Pisztora, Jia Li• 2023

Related benchmarks

TaskDatasetResultRank
Model AllocationHousesR
AUC78
2
Model AllocationWine
AUC79
1
Model Allocationphoneme
AUC87
1
Model AllocationKDDIPUMS
AUC88
1
Model AllocationEyeMovements
AUC66
1
Model AllocationPOL
AUC98
1
Model AllocationBank
AUC76
1
Model AllocationMagicTelescope
AUC86
1
Model AllocationHouse16H
AUC89
1
Model AllocationCredit
AUC78
1
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