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Main Authors: Lin, Yuchang, Zhu, Qianqian, Li, Guodong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.25236
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author Lin, Yuchang
Zhu, Qianqian
Li, Guodong
author_facet Lin, Yuchang
Zhu, Qianqian
Li, Guodong
contents There are many time series in the literature with high dimension yet limited sample sizes, such as macroeconomic variables, and it is almost impossible to obtain efficient estimation and accurate prediction by using the corresponding datasets themselves. This paper fills the gap by introducing a novel representation-based transfer learning framework for vector autoregressive models, and information from related source datasets with rich observations can be leveraged to enhance estimation efficiency through representation learning. A two-stage regularized estimation procedure is proposed with well established non-asymptotic properties, and algorithms with alternating updates are suggested to search for the estimates. Our transfer learning framework can handle time series with varying sample sizes and asynchronous starting and/or ending time points, thereby offering remarkable flexibility in integrating information from diverse datasets. Simulation experiments are conducted to evaluate the finite-sample performance of the proposed methodology, and its usefulness is demonstrated by an empirical analysis on 20 macroeconomic variables from Japan and another nine countries.
format Preprint
id arxiv_https___arxiv_org_abs_2510_25236
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Improving time series estimation and prediction via transfer learning
Lin, Yuchang
Zhu, Qianqian
Li, Guodong
Methodology
There are many time series in the literature with high dimension yet limited sample sizes, such as macroeconomic variables, and it is almost impossible to obtain efficient estimation and accurate prediction by using the corresponding datasets themselves. This paper fills the gap by introducing a novel representation-based transfer learning framework for vector autoregressive models, and information from related source datasets with rich observations can be leveraged to enhance estimation efficiency through representation learning. A two-stage regularized estimation procedure is proposed with well established non-asymptotic properties, and algorithms with alternating updates are suggested to search for the estimates. Our transfer learning framework can handle time series with varying sample sizes and asynchronous starting and/or ending time points, thereby offering remarkable flexibility in integrating information from diverse datasets. Simulation experiments are conducted to evaluate the finite-sample performance of the proposed methodology, and its usefulness is demonstrated by an empirical analysis on 20 macroeconomic variables from Japan and another nine countries.
title Improving time series estimation and prediction via transfer learning
topic Methodology
url https://arxiv.org/abs/2510.25236