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Cardinality-Aware Set Prediction and Top-kkk Classification

9 July 2024
Corinna Cortes
Anqi Mao
Christopher Mohri
M. Mohri
Yutao Zhong
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Abstract

We present a detailed study of cardinality-aware top-kkk classification, a novel approach that aims to learn an accurate top-kkk set predictor while maintaining a low cardinality. We introduce a new target loss function tailored to this setting that accounts for both the classification error and the cardinality of the set predicted. To optimize this loss function, we propose two families of surrogate losses: cost-sensitive comp-sum losses and cost-sensitive constrained losses. Minimizing these loss functions leads to new cardinality-aware algorithms that we describe in detail in the case of both top-kkk and threshold-based classifiers. We establish HHH-consistency bounds for our cardinality-aware surrogate loss functions, thereby providing a strong theoretical foundation for our algorithms. We report the results of extensive experiments on CIFAR-10, CIFAR-100, ImageNet, and SVHN datasets demonstrating the effectiveness and benefits of our cardinality-aware algorithms.

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