Forecasting Equity Index Volatility by Measuring the Linkage among Component Stocks*

Author:

Qiu Yue1,Xie Tian2,Yu Jun3,Zhou Qiankun4

Affiliation:

1. Shanghai University of International Business and Economics

2. Shanghai University of Finance and Economics

3. Singapore Management University

4. Louisiana State University

Abstract

Abstract The linkage among the realized volatilities of component stocks is important when modeling and forecasting the relevant index volatility. In this article, the linkage is measured via an extended Common Correlated Effects (CCEs) approach under a panel heterogeneous autoregression model where unobserved common factors in errors are assumed. Consistency of the CCE estimator is obtained. The common factors are extracted using the principal component analysis. Empirical studies show that realized volatility models exploiting the linkage effects lead to significantly better out-of-sample forecast performance, for example, an up to 32% increase in the pseudo R2. We also conduct various forecasting exercises on the linkage variables that compare conventional regression methods with popular machine learning techniques.

Funder

Natural Science Foundation of China

Chinese Ministry of Education Project of Humanities and Social Sciences

Fundamental Research Funds for the Central Universities

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics,Finance

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5. The Distribution of Realized Exchange Rate Volatility;Andersen;Journal of the American Statistical Association,2001

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