VC - A Method for Estimating Time-Varying Coefficients in Linear Models

47 Pages Posted: 28 Jan 2020

See all articles by Ekkehart Schlicht

Ekkehart Schlicht

University of Munich - Department of Economics; IZA Institute of Labor Economics

Abstract

This paper describes a moments estimator for a standard state-space model with coefficients generated by a random walk. A penalized least squares estimation is linked to the GLS (Aitken) estimates of the corresponding linear model with time-invariant parameters. The VC estimates are moments estimates. They do not require the disturbances to be Gaussian, but if they are, the estimates are asymptotically equivalent to maximum likelihood estimates. In contrast to Kalman filtering, no specification of an initial state or an initial covariance matrix is required. While the Kalman filter is one sided, the VC filter is two sided and therefore uses more of the available information for estimating intermediate states.. Further, the VC filter has a clear descriptive interpretation.

Keywords: time-series analysis, linear model, state-space estimation, time-varying coefficients, moments estimation, Kalman filtering, penalized least squares

JEL Classification: C2, C22, C32, C51, C52

Suggested Citation

Schlicht, Ekkehart, VC - A Method for Estimating Time-Varying Coefficients in Linear Models. IZA Discussion Paper No. 12920, Available at SSRN: https://ssrn.com/abstract=3525248 or http://dx.doi.org/10.2139/ssrn.3525248

Ekkehart Schlicht (Contact Author)

University of Munich - Department of Economics ( email )

Ludwigstrasse 28
Munich, D-80539
Germany

IZA Institute of Labor Economics

P.O. Box 7240
Bonn, D-53072
Germany

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