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Three Rates of Convergence or Separation via U-Statistics in a Dependent Framework

  • Université Gustave Eiffel
  • LTDS UMR 5513 - Ecole Centrale de Lyon

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

Despite the ubiquity of U-statistics in modern Probability and Statistics, their nonasymptotic analysis in a dependent framework may have been overlooked. In a recent work, a new concentration inequality for U-statistics of order two for uniformly ergodic discrete time Markov chains has been proved. In this paper, we put this theoretical breakthrough into action by pushing further the current state of knowledge in three different active fields of research. First, we establish a new exponential inequality for the estimation of spectra of integral operators with MCMC methods. The novelty is that this result holds for kernels with positive and negative eigenvalues, which is new as far as we know. In addition, we investigate generalization performance of online algorithms working with pairwise loss functions and Markov chain samples. We provide an online-to-batch conversion result by showing how we can extract a low risk hypothesis from the sequence of hypotheses generated by any online learner. We finally give a non-asymptotic analysis of a goodness-of-fit test on the density of the stationary measure of a Markov chain. We identify some classes of alternatives over which our test based on the L2 distance has a prescribed power.

langue originaleAnglais
Numéro d'article201
journalJournal of Machine Learning Research
Volume23
étatPublié - 1 juin 2022
Modification externeOui

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