SOTAVerified

Lag selection and estimation of stable parameters for multiple autoregressive processes through convex programming

2023-03-03Unverified0· sign in to hype

Somnath Chakraborty, Johannes Lederer, Rainer von Sachs

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Motivated by a variety of applications, high-dimensional time series have become an active topic of research. In particular, several methods and finite-sample theories for individual stable autoregressive processes with known lag have become available very recently. We, instead, consider multiple stable autoregressive processes that share an unknown lag. We use information across the different processes to simultaneously select the lag and estimate the parameters. We prove that the estimated process is stable, and we establish rates for the forecasting error that can outmatch the known rate in our setting. Our insights on the lag selection and the stability are also of interest for the case of individual autoregressive processes.

Tasks

Reproductions