Nonparametric Time-Varying Vector Moving Average (infinity) Models

59 Pages Posted: 23 Jan 2021

See all articles by Yayi Yan

Yayi Yan

Shanghai University of Finance and Economics

Jiti Gao

Monash University - Department of Econometrics & Business Statistics

Bin Peng

Monash University - Department of Econometrics and Business Statistics

Date Written: November 5, 2020

Abstract

Multivariate dynamic time series models are widely encountered in practical studies, e.g., modelling policy transmission mechanism and measuring connectedness between economic agents. To better capture the dynamics, this paper proposes a wide class of multivariate dynamic models with time — varying coefficients, which have a general time — varying vector moving average (VMA) representation, and nest, for instance, time — varying vector autoregression (VAR), time — varying vector autoregression moving--average (VARMA), and so forth as special cases. The paper then develops a unified estimation method for the unknown quantities before an asymptotic theory for the proposed estimators is established. In the empirical study, we investigate the transmission mechanism of monetary policy using U.S. data, and uncover a fall in the volatilities of exogenous shocks. In addition, we find that (i) monetary policy shocks have less influence on inflation before and during the so — called Great Moderation, (ii) inflation is more anchored recently, and (iii) the long — run level of inflation is below, but quite close to the Federal Reserve's target of two percent after the beginning of the Great Moderation period.

Keywords: Multivariate Time Series; Nonparametric Kernel Estimation; Nonstationary Time Series; Time-Varying Beveridge-Nelson Decomposition

JEL Classification: C14, C32, E52

Suggested Citation

Yan, Yayi and Gao, Jiti and Peng, Bin, Nonparametric Time-Varying Vector Moving Average (infinity) Models (November 5, 2020). Available at SSRN: https://ssrn.com/abstract=3729872 or http://dx.doi.org/10.2139/ssrn.3729872

Yayi Yan

Shanghai University of Finance and Economics ( email )

China

Jiti Gao (Contact Author)

Monash University - Department of Econometrics & Business Statistics ( email )

900 Dandenong Road
Caulfield East, Victoria 3145
Australia
61399031675 (Phone)
61399032007 (Fax)

HOME PAGE: http://www.jitigao.com

Bin Peng

Monash University - Department of Econometrics and Business Statistics ( email )

900 Dandenong Road
Caulfield East, VIC 3145
Australia

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