Anytime valid and asymptotically optimal statistical inference driven by predictive recursion

Abstract

Distinguishing two classes of candidate models is a fundamental and practically important problem in statistical inference. Error rate control is crucial to the logic but, in complex nonparametric settings, such guarantees can be difficult to achieve, especially when the stopping rule that determines the data collection process is not available. In this paper we develop a novel e-process construction that leverages the so-called predictive recursion (PR) algorithm designed to rapidly and recursively fit nonparametric mixture models. The resulting PRe-process affords anytime valid inference uniformly over stopping rules and is shown to be efficient in the sense that it achieves the maximal growth rate under the alternative relative to the mixture model being fit by PR. In the special case of testing for a log-concave density, the PRe-process test is computationally simpler and faster, more stable, and no less efficient compared to a recently proposed anytime valid test.

Versions

➤  Version 3 (2023-10-11)

Citations

Vaidehi Dixit and Ryan Martin (2023). Anytime valid and asymptotically optimal statistical inference driven by predictive recursion. Researchers.One. https://researchers.one/articles/23.09.00006v3

    Reviews & Substantive Comments

    1 Comment

  1. Ryan MartinOctober 11th, 2023 at 12:10 pm

    Thanks to Aaditya Ramdas for comments/corrections on the first version of the manuscript. His feedback has been incorporated into the 2nd and 3rd versions.

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