Long Memory In Stock Market Volatility And The Volatility-in-mean Effect: The Fiegarch-m Model

QED Working Paper Number
1207

We extend the fractionally integrated exponential GARCH (FIEGARCH) model for daily stock return data with long memory in return volatility of Bollerslev and Mikkelsen (1996) by introducing a possible volatility-in-mean effect. To avoid that the long memory property of volatility carries over to returns, we consider a filtered FIEGARCH-in-mean (FIEGARCH-M) effect in the return equation. The filtering of the volatility-in-mean component thus allows the co-existence of long memory in volatility and short memory in returns. We present an application to the daily CRSP value-weighted cum-dividend stock index return series from 1926 through 2006 which documents the empirical relevance of our model. The volatility-in-mean effect is significant, and the FIEGARCH-M model outperforms the original FIEGARCH model and alternative GARCH-type specifications according to standard criteria.

Author(s)

Bent Jesper Christensen
Jie Zhu

JEL Codes

Keywords

FIEGARCH
financial leverage
GARCH
long memory
risk-return tradeoff
stock returns
volatility feedback

Working Paper

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