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Long-Context Linear System Identification

Authors :
Yüksel, Oğuz Kaan
Even, Mathieu
Flammarion, Nicolas
Publication Year :
2024

Abstract

This paper addresses the problem of long-context linear system identification, where the state $x_t$ of a dynamical system at time $t$ depends linearly on previous states $x_s$ over a fixed context window of length $p$. We establish a sample complexity bound that matches the i.i.d. parametric rate up to logarithmic factors for a broad class of systems, extending previous works that considered only first-order dependencies. Our findings reveal a learning-without-mixing phenomenon, indicating that learning long-context linear autoregressive models is not hindered by slow mixing properties potentially associated with extended context windows. Additionally, we extend these results to (i) shared low-rank representations, where rank-regularized estimators improve rates with respect to dimensionality, and (ii) misspecified context lengths in strictly stable systems, where shorter contexts offer statistical advantages.<br />Comment: 30 pages, 4 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.05690
Document Type :
Working Paper