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Autori principali: Zhu, Lina, Zhou, Lin
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.21799
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author Zhu, Lina
Zhou, Lin
author_facet Zhu, Lina
Zhou, Lin
contents In multiple classification, one aims to determine whether a testing sequence is generated from the same distribution as one of the M training sequences or not. Unlike most of existing studies that focus on discrete-valued sequences with perfect distribution match, we study multiple classification for continuous sequences with distribution uncertainty, where the generating distributions of the testing and training sequences deviate even under the true hypothesis. In particular, we propose distribution free tests and prove that the error probabilities of our tests decay exponentially fast for three different test designs: fixed-length, sequential, and two-phase tests. We first consider the simple case without the null hypothesis, where the testing sequence is known to be generated from a distribution close to the generating distribution of one of the training sequences. Subsequently, we generalize our results to a more general case with the null hypothesis by allowing the testing sequence to be generated from a distribution that is vastly different from the generating distributions of all training sequences.
format Preprint
id arxiv_https___arxiv_org_abs_2410_21799
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Exponentially Consistent Statistical Classification of Continuous Sequences with Distribution Uncertainty
Zhu, Lina
Zhou, Lin
Machine Learning
Signal Processing
In multiple classification, one aims to determine whether a testing sequence is generated from the same distribution as one of the M training sequences or not. Unlike most of existing studies that focus on discrete-valued sequences with perfect distribution match, we study multiple classification for continuous sequences with distribution uncertainty, where the generating distributions of the testing and training sequences deviate even under the true hypothesis. In particular, we propose distribution free tests and prove that the error probabilities of our tests decay exponentially fast for three different test designs: fixed-length, sequential, and two-phase tests. We first consider the simple case without the null hypothesis, where the testing sequence is known to be generated from a distribution close to the generating distribution of one of the training sequences. Subsequently, we generalize our results to a more general case with the null hypothesis by allowing the testing sequence to be generated from a distribution that is vastly different from the generating distributions of all training sequences.
title Exponentially Consistent Statistical Classification of Continuous Sequences with Distribution Uncertainty
topic Machine Learning
Signal Processing
url https://arxiv.org/abs/2410.21799