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Second-Order Asymptotically Optimal Statistical Classification

Information Theory 2018-12-07 v3 Machine Learning math.IT

Abstract

Motivated by real-world machine learning applications, we analyze approximations to the non-asymptotic fundamental limits of statistical classification. In the binary version of this problem, given two training sequences generated according to two {\em unknown} distributions P1P_1 and P2P_2, one is tasked to classify a test sequence which is known to be generated according to either P1P_1 or P2P_2. This problem can be thought of as an analogue of the binary hypothesis testing problem but in the present setting, the generating distributions are unknown. Due to finite sample considerations, we consider the second-order asymptotics (or dispersion-type) tradeoff between type-I and type-II error probabilities for tests which ensure that (i) the type-I error probability for {\em all} pairs of distributions decays exponentially fast and (ii) the type-II error probability for a {\em particular} pair of distributions is non-vanishing. We generalize our results to classification of multiple hypotheses with the rejection option.

Keywords

Cite

@article{arxiv.1806.00739,
  title  = {Second-Order Asymptotically Optimal Statistical Classification},
  author = {Lin Zhou and Vincent Y. F. Tan and Mehul Motani},
  journal= {arXiv preprint arXiv:1806.00739},
  year   = {2018}
}

Comments

To appear in Information and Inference: A Journal of the IMA (https://academic.oup.com/imaiai)