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Time-Varying Window Length for Correlation...
Journal article

Time-Varying Window Length for Correlation Forecasts

Abstract

Forecasting correlations between stocks and commodities is important for diversification across asset classes and other risk management decisions. Correlation forecasts are affected by model uncertainty, the sources of which can include uncertainty about changing fundamentals and associated parameters (model instability), structural breaks and nonlinearities due, for example, to regime switching. We use approaches that weight historical data according to their predictive content. Specifically, we estimate two alternative models, ‘time-varying weights’ and ‘time-varying window’, in order to maximize the value of past data for forecasting. Our empirical analyses reveal that these approaches provide superior forecasts to several benchmark models for forecasting correlations.

Authors

Jeon Y; McCurdy TH

Journal

Econometrics, Vol. 5, No. 4,

Publisher

MDPI

Publication Date

December 11, 2017

DOI

10.3390/econometrics5040054

ISSN

2225-1146

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