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Fast learning rates for plug-in classifiers under the margin condition

统计理论 2011-06-01 v3 统计理论

摘要

It has been recently shown that, under the margin (or low noise) assumption, there exist classifiers attaining fast rates of convergence of the excess Bayes risk, i.e., the rates faster than n1/2n^{-1/2}. The works on this subject suggested the following two conjectures: (i) the best achievable fast rate is of the order n1n^{-1}, and (ii) the plug-in classifiers generally converge slower than the classifiers based on empirical risk minimization. We show that both conjectures are not correct. In particular, we construct plug-in classifiers that can achieve not only the fast, but also the {\it super-fast} rates, i.e., the rates faster than n1n^{-1}. We establish minimax lower bounds showing that the obtained rates cannot be improved.

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引用

@article{arxiv.math/0507180,
  title  = {Fast learning rates for plug-in classifiers under the margin condition},
  author = {Jean-Yves Audibert and Alexandre B. Tsybakov},
  journal= {arXiv preprint arXiv:math/0507180},
  year   = {2011}
}

备注

36 pages