Jan. 31, 2024, 3:46 p.m. | Erik Schultheis Wojciech Kot{\l}owski Marek Wydmuch Rohit Babbar Strom Borman Krzysztof Dembczy\'nski

cs.LG updates on arXiv.org arxiv.org

We consider the optimization of complex performance metrics in multi-label classification under the population utility framework. We mainly focus on metrics linearly decomposable into a sum of binary classification utilities applied separately to each label with an additional requirement of exactly $k$ labels predicted for each instance. These "macro-at-$k$" metrics possess desired properties for extreme classification problems with long tail labels. Unfortunately, the at-$k$ constraint couples the otherwise independent binary classification tasks, leading to a much more challenging optimization problem …

algorithms binary classification consistent cs.lg focus framework instance labels macro metrics optimization performance population utilities utility

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