High-dimensional variable clustering based on sub-asymptotic maxima of a weakly dependent random process

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Publication:6425180

arXiv2302.00934MaRDI QIDQ6425180

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Publication date: 2 February 2023

Abstract: We propose a new class of models for variable clustering called Asymptotic Independent block (AI-block) models, which defines population-level clusters based on the independence of the maxima of a multivariate stationary mixing random process among clusters. This class of models is identifiable, meaning that there exists a maximal element with a partial order between partitions, allowing for statistical inference. We also present an algorithm for recovering the clusters of variables without specifying the number of clusters emph{a priori}. Our work provides some theoritical insights into the consistency of our algorithm, demonstrating that under certain conditions it can effectively identify clusters in the data with a computational complexity that is polynomial in the dimension. This implies that groups can be learned nonparametrically in which block maxima of a dependent process are only sub-asymptotic.




Has companion code repository: https://github.com/Aleboul/ai_block_model

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