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Loss Functions for Classification using Structured Entropy

2022-06-14 19:25:14
Brian Lucena

Abstract

Cross-entropy loss is the standard metric used to train classification models in deep learning and gradient boosting. It is well-known that this loss function fails to account for similarities between the different values of the target. We propose a generalization of entropy called {\em structured entropy} which uses a random partition to incorporate the structure of the target variable in a manner which retains many theoretical properties of standard entropy. We show that a structured cross-entropy loss yields better results on several classification problems where the target variable has an a priori known structure. The approach is simple, flexible, easily computable, and does not rely on a hierarchically defined notion of structure.

Abstract (translated)

URL

https://arxiv.org/abs/2206.07122

PDF

https://arxiv.org/pdf/2206.07122.pdf


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