The Analysis of Stochastic Volatility in the Presence of Daily Realized Measures
We develop a systematic framework for the joint modeling of returns and multiple daily realized measures. We assume a linear state space representation for the log realized measures, which are noisy and biased estimates of the log daily integrated variance, at least due to Jensen's inequality. We incorporate filtering methods for the estimation of the latent log-volatility process. The dependence between daily returns and realized measurement errors leads us to develop a two-step estimation method for all parameters in our model specification. The estimation method is computationally straightforward even when the stochastic volatility model has non-Gaussian return innovations and leverage effects. Our extensive empirical study for nine Dow Jones stock return series reveals that measurement errors become significantly smaller after filtering and that the forecasts from our model outperforms those from a set of recently developed alternatives. Copyright The Author, 2012. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions@oxfordjournals.org, Oxford University Press.
Year of publication: |
2012
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Authors: | Koopman, Siem Jan ; Scharth, Marcel |
Published in: |
Journal of Financial Econometrics. - Society for Financial Econometrics - SoFiE, ISSN 1479-8409. - Vol. 11.2012, 1, p. 76-115
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Publisher: |
Society for Financial Econometrics - SoFiE |
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