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Estimation of Models with Limited Data by Leveraging Shared Structure

Authors :
Rui, Maryann
Horel, Thibaut
Dahleh, Munther
Publication Year :
2023

Abstract

Modern data sets, such as those in healthcare and e-commerce, are often derived from many individuals or systems but have insufficient data from each source alone to separately estimate individual, often high-dimensional, model parameters. If there is shared structure among systems however, it may be possible to leverage data from other systems to help estimate individual parameters, which could otherwise be non-identifiable. In this paper, we assume systems share a latent low-dimensional parameter space and propose a method for recovering $d$-dimensional parameters for $N$ different linear systems, even when there are only $T<d$ observations per system. To do so, we develop a three-step algorithm which estimates the low-dimensional subspace spanned by the systems' parameters and produces refined parameter estimates within the subspace. We provide finite sample subspace estimation error guarantees for our proposed method. Finally, we experimentally validate our method on simulations with i.i.d. regression data and as well as correlated time series data.<br />Comment: Accepted to IEEE Conference on Decision and Control (CDC) 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.02864
Document Type :
Working Paper