Electronic Research Archive (Jan 2023)

Learning capability of the rescaled pure greedy algorithm with non-iid sampling

  • Qin Guo,
  • Binlei Cai

DOI
https://doi.org/10.3934/era.2023071
Journal volume & issue
Vol. 31, no. 3
pp. 1387 – 1404

Abstract

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We consider the rescaled pure greedy learning algorithm (RPGLA) with the dependent samples drawn according to a non-identical sequence of probability distributions. The generalization performance is provided by applying the independent-blocks technique and adding the drift error. We derive the satisfactory learning rate for the algorithm under the assumption that the process satisfies stationary $ \beta $-mixing, and also find that the optimal rate $ O(n^{-1}) $ can be obtained for i.i.d. processes.

Keywords