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Main Authors: Wang, Yutong, Scott, Clayton
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2311.17778
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author Wang, Yutong
Scott, Clayton
author_facet Wang, Yutong
Scott, Clayton
contents The notion of margin loss has been central to the development and analysis of algorithms for binary classification. To date, however, there remains no consensus as to the analogue of the margin loss for multiclass classification. In this work, we show that a broad range of multiclass loss functions, including many popular ones, can be expressed in the relative margin form, a generalization of the margin form of binary losses. The relative margin form is broadly useful for understanding and analyzing multiclass losses as shown by our prior work (Wang and Scott, 2020, 2021). To further demonstrate the utility of this way of expressing multiclass losses, we use it to extend the seminal result of Bartlett et al. (2006) on classification-calibration of binary margin losses to multiclass. We then analyze the class of Fenchel-Young losses, and expand the set of these losses that are known to be classification-calibrated.
format Preprint
id arxiv_https___arxiv_org_abs_2311_17778
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Unified Binary and Multiclass Margin-Based Classification
Wang, Yutong
Scott, Clayton
Machine Learning
The notion of margin loss has been central to the development and analysis of algorithms for binary classification. To date, however, there remains no consensus as to the analogue of the margin loss for multiclass classification. In this work, we show that a broad range of multiclass loss functions, including many popular ones, can be expressed in the relative margin form, a generalization of the margin form of binary losses. The relative margin form is broadly useful for understanding and analyzing multiclass losses as shown by our prior work (Wang and Scott, 2020, 2021). To further demonstrate the utility of this way of expressing multiclass losses, we use it to extend the seminal result of Bartlett et al. (2006) on classification-calibration of binary margin losses to multiclass. We then analyze the class of Fenchel-Young losses, and expand the set of these losses that are known to be classification-calibrated.
title Unified Binary and Multiclass Margin-Based Classification
topic Machine Learning
url https://arxiv.org/abs/2311.17778