Consistent Robust Adversarial Prediction for General Multiclass Classification
We propose a robust adversarial prediction framework for general multiclass classification. Our method seeks predictive distributions that robustly optimize non-convex and non-continuous multiclass loss metrics against the worst-case conditional label distributions (the adversarial distributions) th...
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Zusammenfassung: | We propose a robust adversarial prediction framework for general multiclass
classification. Our method seeks predictive distributions that robustly
optimize non-convex and non-continuous multiclass loss metrics against the
worst-case conditional label distributions (the adversarial distributions) that
(approximately) match the statistics of the training data. Although the
optimized loss metrics are non-convex and non-continuous, the dual formulation
of the framework is a convex optimization problem that can be recast as a risk
minimization model with a prescribed convex surrogate loss we call the
adversarial surrogate loss. We show that the adversarial surrogate losses fill
an existing gap in surrogate loss construction for general multiclass
classification problems, by simultaneously aligning better with the original
multiclass loss, guaranteeing Fisher consistency, enabling a way to incorporate
rich feature spaces via the kernel trick, and providing competitive performance
in practice. |
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DOI: | 10.48550/arxiv.1812.07526 |