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Information-theoretic limits and approximate message-passing for high-dimensional time series

Authors :
Tieplova, Daria
Lahiry, Samriddha
Barbier, Jean
Publication Year :
2025

Abstract

High-dimensional time series appear in many scientific setups, demanding a nuanced approach to model and analyze the underlying dependence structure. However, theoretical advancements so far often rely on stringent assumptions regarding the sparsity of the underlying signals. In this contribution, we expand the scope by investigating a high-dimensional time series model wherein the number of features grows proportionally to the number of sampling points, without assuming sparsity in the signal. Specifically, we consider the stochastic regression model and derive a single-letter formula for the normalized mutual information between observations and the signal. We also empirically study the vector approximate message passing (VAMP) algorithm and show that, despite a lack of theoretical guarantees, its performance for inference in our time series model is robust and often statistically optimal.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.13625
Document Type :
Working Paper