Forecasting realized volatility using a long-memory stochastic volatility model: estimation, prediction and seasonal adjustment [An article from: Journal of Econometrics]
Book Details
Author(s)R. Deo, C. Hurvich, Y. Lu
PublisherElsevier
ISBN / ASINB000RR7QJ4
ISBN-13978B000RR7QJ1
MarketplaceIndia 🇮🇳
Description
This digital document is a journal article from Journal of Econometrics, published by Elsevier in . The article is delivered in HTML format and is available in your Amazon.com Media Library immediately after purchase. You can view it with any web browser.
Description:
We study the modeling of large data sets of high-frequency returns using a long-memory stochastic volatility (LMSV) model. Issues pertaining to estimation and forecasting of large data sets using the LMSV model are studied in detail. Furthermore, a new method of de-seasonalizing the volatility in high-frequency data is proposed, that allows for slowly varying seasonality. Using both simulated as well as real data, we compare the forecasting performance of the LMSV model for forecasting realized volatility (RV) to that of a linear long-memory model fit to the logRV. The performance of the new seasonal adjustment is also compared to a recently proposed procedure using real data.
Description:
We study the modeling of large data sets of high-frequency returns using a long-memory stochastic volatility (LMSV) model. Issues pertaining to estimation and forecasting of large data sets using the LMSV model are studied in detail. Furthermore, a new method of de-seasonalizing the volatility in high-frequency data is proposed, that allows for slowly varying seasonality. Using both simulated as well as real data, we compare the forecasting performance of the LMSV model for forecasting realized volatility (RV) to that of a linear long-memory model fit to the logRV. The performance of the new seasonal adjustment is also compared to a recently proposed procedure using real data.
