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arxiv: 1902.04639 · v2 · pith:VQRRIDUCnew · submitted 2019-02-12 · 💻 cs.LG · cs.IT· math.IT· stat.ML

A Tunable Loss Function for Binary Classification

classification 💻 cs.LG cs.ITmath.ITstat.ML
keywords lossalphaclassificationempiricalfunctionriskbinaryinfty
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We present $\alpha$-loss, $\alpha \in [1,\infty]$, a tunable loss function for binary classification that bridges log-loss ($\alpha=1$) and $0$-$1$ loss ($\alpha = \infty$). We prove that $\alpha$-loss has an equivalent margin-based form and is classification-calibrated, two desirable properties for a good surrogate loss function for the ideal yet intractable $0$-$1$ loss. For logistic regression-based classification, we provide an upper bound on the difference between the empirical and expected risk at the empirical risk minimizers for $\alpha$-loss by exploiting its Lipschitzianity along with recent results on the landscape features of empirical risk functions. Finally, we show that $\alpha$-loss with $\alpha = 2$ performs better than log-loss on MNIST for logistic regression.

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