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Volatility forecasts using stochastic volatility models with nonlinear leverage effects
Authors:Kenichiro McAlinn  Asahi Ushio  Teruo Nakatsuma
Institution:1. Fox School of Business, Temple University;2. Cogent Labs;3. Faculty of Economics, Keio University
Abstract:The leverage effect—the correlation between an asset's return and its volatility—has played a key role in forecasting and understanding volatility and risk. While it is a long standing consensus that leverage effects exist and improve forecasts, empirical evidence puzzlingly does not show that this effect exists for many individual stocks, mischaracterizing risk, and therefore leading to poor predictive performance. We examine this puzzle, with the goal to improve density forecasts, by relaxing the assumption of linearity of the leverage effect. Nonlinear generalizations of the leverage effect are proposed within the Bayesian stochastic volatility framework in order to capture flexible leverage structures. Efficient Bayesian sequential computation is developed and implemented to estimate this effect in a practical, on-line manner. Examining 615 stocks that comprise the S&P500 and Nikkei 225, we find that our proposed nonlinear leverage effect model improves predictive performances for 89% of all stocks compared to the conventional stochastic volatility model.
Keywords:Bayesian analysis  leverage effect  particle learning  stochastic volatility  volatility forecasting
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