Asymmetric effects and long memory in the volatility of Dow Jones stocks
Scharth, M.
, Medeiros, M.C.
Pages 304-327
AbstractDoes volatility reflect a continuous reaction to past shocks or do
changes in the markets induce shifts in the volatility dynamics? In this
paper, we provide empirical evidence that cumulated price variations convey
meaningful information about multiple regimes in the realized volatility of
stocks, where large falls (rises) in prices are linked to persistent
regimes of high (low) variance in stock returns. Incorporating past
cumulated daily returns as an explanatory variable in a flexible and
systematic nonlinear framework, we estimate that falls of different
magnitudes over less than two months are associated with volatility levels
20% and 60% higher than the average of periods with stable or rising
prices. We show that this effect accounts for large empirical values of
long memory parameter estimates. Finally, we show that, while introducing
more realistic dynamics for volatility, the model is able to overall
improve or at least retain out-of-sample performance in forecasting when
compared to standard methods. Most importantly, the model is more robust to
periods of financial crises, when it attains significantly better
forecasts.
Keywords: Realized volatility
, Long memory
, Asymmetric effects
, Regime switching
, Regression trees
, Smooth transition
, Forecasting
, Empirical finance