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On the price of explainability for some clustering problems

5 January 2021
E. Laber
Lucas Murtinho
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Abstract

The price of explainability for a clustering task can be defined as the unavoidable loss,in terms of the objective function, if we force the final partition to be explainable. Here, we study this price for the following clustering problems: kkk-means, kkk-medians, kkk-centers and maximum-spacing. We provide upper and lower bounds for a natural model where explainability is achieved via decision trees. For the kkk-means and kkk-medians problems our upper bounds improve those obtained by [Moshkovitz et. al, ICML 20] for low dimensions. Another contribution is a simple and efficient algorithm for building explainable clusterings for the kkk-means problem. We provide empirical evidence that its performance is better than the current state of the art for decision-tree based explainable clustering.

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