Stochastic Online AUC Maximization
Ying, Yiming, Wen, Longyin, Lyu, Siwei
–Neural Information Processing Systems
Area under ROC (AUC) is a metric which is widely used for measuring the classification performance for imbalanced data. It is of theoretical and practical interest to develop online learning algorithms that maximizes AUC for large-scale data. A specific challenge in developing online AUC maximization algorithm is that the learning objective function is usually defined over a pair of training examples of opposite classes, and existing methods achieves on-line processing with higher space and time complexity. In this work, we propose a new stochastic online algorithm for AUC maximization. In particular, we show that AUC optimization can be equivalently formulated as a convex-concave saddle point problem.
Neural Information Processing Systems
Feb-14-2020, 05:56:07 GMT
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