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Modeling Financial Return Dynamics via Decomposition
68
Citations
45
References
2010
Year
Volatility ModelingFinancial Return DynamicsExcess Stock ReturnsFinancial MathematicsDecomposition ModelEconomic ForecastingComputational FinanceAsset PricingEconomic AnalysisFinancial EconometricsFinancial ModelingExcess Return DynamicsEconomicsAccountingForecastingFinanceFinancial EconomicsBusinessEconometricsStock Market PredictionFinancial ForecastFinancial Engineering
Abstract While the predictability of excess stock returns is detected by traditional predictive regressions as statistically small, the direction-of-change and volatility of returns exhibit a substantially larger degree of dependence over time. We capitalize on this observation and decompose the returns into a product of sign and absolute value components whose joint distribution is obtained by combining a multiplicative error model for absolute values, a dynamic binary choice model for signs, and a copula for their interaction. Our decomposition model is able to incorporate important nonlinearities in excess return dynamics that cannot be captured in the standard predictive regression setup. The empirical analysis of U.S. stock return data shows statistically and economically significant forecasting gains of the decomposition model over the conventional predictive regression. Keywords: : Absolute returnsCopulasDirectional forecastingJoint predictive distributionStock returns predictability
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