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arxiv: 1206.3072 · v1 · pith:O5F5LL5Snew · submitted 2012-06-14 · 💻 cs.LG · stat.ML

Statistical Consistency of Finite-dimensional Unregularized Linear Classification

classification 💻 cs.LG stat.ML
keywords finite-dimensionalclassclassificationconsistencyfinitelearninglinearlogistic
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This manuscript studies statistical properties of linear classifiers obtained through minimization of an unregularized convex risk over a finite sample. Although the results are explicitly finite-dimensional, inputs may be passed through feature maps; in this way, in addition to treating the consistency of logistic regression, this analysis also handles boosting over a finite weak learning class with, for instance, the exponential, logistic, and hinge losses. In this finite-dimensional setting, it is still possible to fit arbitrary decision boundaries: scaling the complexity of the weak learning class with the sample size leads to the optimal classification risk almost surely.

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