Multi-Label Learning with Stronger Consistency Guarantees
Anqi Mao, Mehryar Mohri, Yutao Zhong

TL;DR
This paper introduces a new surrogate loss for multi-label learning that accounts for label correlations and provides strong theoretical consistency guarantees, improving upon existing methods.
Contribution
The paper proposes a novel multi-label logistic loss with label correlation awareness and broadens the analysis to a family of losses with $H$-consistency bounds, enhancing theoretical guarantees.
Findings
The new surrogate loss accounts for label correlations.
It provides label-independent $H$-consistency bounds.
It extends to a family of multi-label losses with strong theoretical guarantees.
Abstract
We present a detailed study of surrogate losses and algorithms for multi-label learning, supported by -consistency bounds. We first show that, for the simplest form of multi-label loss (the popular Hamming loss), the well-known consistent binary relevance surrogate suffers from a sub-optimal dependency on the number of labels in terms of -consistency bounds, when using smooth losses such as logistic losses. Furthermore, this loss function fails to account for label correlations. To address these drawbacks, we introduce a novel surrogate loss, multi-label logistic loss, that accounts for label correlations and benefits from label-independent -consistency bounds. We then broaden our analysis to cover a more extensive family of multi-label losses, including all common ones and a new extension defined based on linear-fractional functions with respect to the confusion matrix. We…
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Taxonomy
TopicsText and Document Classification Technologies
