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Consistent Algorithms for Multiclass Classification with a Reject Option

Abstract

We consider the problem of nn-class classification (n2n\geq 2), where the classifier can choose to abstain from making predictions at a given cost, say, a factor α\alpha of the cost of misclassification. Designing consistent algorithms for such nn-class classification problems with a `reject option' is the main goal of this paper, thereby extending and generalizing previously known results for n=2n=2. We show that the Crammer-Singer surrogate and the one vs all hinge loss, albeit with a different predictor than the standard argmax, yield consistent algorithms for this problem when α=12\alpha=\frac{1}{2}. More interestingly, we design a new convex surrogate that is also consistent for this problem when α=12\alpha=\frac{1}{2} and operates on a much lower dimensional space (log(n)\log(n) as opposed to nn). We also generalize all three surrogates to be consistent for any α[0,12]\alpha\in[0, \frac{1}{2}].

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