Generalized test utilities for long-tail performance in extreme multi-label classification
November 09, 2023 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Erik Schultheis, Marek Wydmuch, Wojciech Kotลowski, Rohit Babbar, Krzysztof Dembczyลski
arXiv ID
2311.05081
Category
cs.LG: Machine Learning
Citations
5
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Extreme multi-label classification (XMLC) is the task of selecting a small subset of relevant labels from a very large set of possible labels. As such, it is characterized by long-tail labels, i.e., most labels have very few positive instances. With standard performance measures such as precision@k, a classifier can ignore tail labels and still report good performance. However, it is often argued that correct predictions in the tail are more "interesting" or "rewarding," but the community has not yet settled on a metric capturing this intuitive concept. The existing propensity-scored metrics fall short on this goal by confounding the problems of long-tail and missing labels. In this paper, we analyze generalized metrics budgeted "at k" as an alternative solution. To tackle the challenging problem of optimizing these metrics, we formulate it in the expected test utility (ETU) framework, which aims to optimize the expected performance on a fixed test set. We derive optimal prediction rules and construct computationally efficient approximations with provable regret guarantees and robustness against model misspecification. Our algorithm, based on block coordinate ascent, scales effortlessly to XMLC problems and obtains promising results in terms of long-tail performance.
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