JSAI2024

Presentation information

General Session

General Session » GS-2 Machine learning

[2B6-GS-2] Machine learning: Basics / Theory

Wed. May 29, 2024 5:30 PM - 7:10 PM Room B (Concert hall)

座長:中口 悠輝(NEC)

6:10 PM - 6:30 PM

[2B6-GS-2-03] A Simple but Effective Closed-form Solution for Extreme Multi-label Learning

〇Kazuma Onishi1, Katsuhiko Hayashi1 (1. Hokkaido university)

Keywords:Extreme Multi-label Learning, ridge regression

Extreme multi-label learning (XML) is a task of assigning multiple labels from an extremely large set of labels to each data instance. Many of the current high performance models for XML are composed of a lot of hyperparameters which causes issues with reproducibility. Additionally, the models themselves are adapted specifically to XML, which complicates their reimplementation. To remedy this problem, we propose a simple method based on ridge regression for XML. The proposed method not only has a closed-form solution but also is composed of a single hyperparameter. Since there are no precedents on applying ridge regression to XML, this paper verified the performance of the method by using various XML benchmark datasets. Experimental results revealed that it can achieve levels of performance comparable to, or even exceeding, those of models with numerous hyperparameters.

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