This paper examines the benefits to forecasters of decomposing close-to-close return volatility into close-to-open (nighttime) and open-to-close (daytime) return volatility. Specifically, we consider whether close-to-close volatility forecasts based on the former type of (temporally aggregated) data are less accurate than corresponding forecasts based on the latter (temporally disaggregated) data. Results obtained from seven different US index futures markets reveal that significant increases in forecast accuracy are possible when using temporally disaggregated volatility data. This result is primarily driven by the fact that forecasts based on such data can be updated as more information becomes available (e.g., information flow from the p...
While much research related to forecasting return volatility does so in a univariate setting, this p...
(preliminary and incomplete) We examine the relative information content of monthly volatility forec...
While much research related to forecasting return volatility does so in a univariate setting, this p...
This paper examines the benefits to forecasters of decomposing close-to-close return volatility into...
This paper examines the benefits to forecasters of decomposing close-to-close return volatility into...
This paper examines the benefits to forecasters of decomposing close-to-close return volatility into...
By decomposing close to close returns into close to open returns (overnight returns) and open to clo...
By decomposing close to close returns into close to open returns (overnight returns) and open to clo...
This dissertation examines the impact of high frequency data in volatility measurement on the distri...
This dissertation examines the impact of high frequency data in volatility measurement on the distri...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This study examined the behavior of return volatility in relation to the timing of information flow ...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This study examined the behavior of return volatility in relation to the timing of information flow ...
We use realized volatilities based on after-hours high frequency stock returns to predict next day s...
While much research related to forecasting return volatility does so in a univariate setting, this p...
(preliminary and incomplete) We examine the relative information content of monthly volatility forec...
While much research related to forecasting return volatility does so in a univariate setting, this p...
This paper examines the benefits to forecasters of decomposing close-to-close return volatility into...
This paper examines the benefits to forecasters of decomposing close-to-close return volatility into...
This paper examines the benefits to forecasters of decomposing close-to-close return volatility into...
By decomposing close to close returns into close to open returns (overnight returns) and open to clo...
By decomposing close to close returns into close to open returns (overnight returns) and open to clo...
This dissertation examines the impact of high frequency data in volatility measurement on the distri...
This dissertation examines the impact of high frequency data in volatility measurement on the distri...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This study examined the behavior of return volatility in relation to the timing of information flow ...
This paper provides a comprehensive evaluation of the predictive ability of information accumulated ...
This study examined the behavior of return volatility in relation to the timing of information flow ...
We use realized volatilities based on after-hours high frequency stock returns to predict next day s...
While much research related to forecasting return volatility does so in a univariate setting, this p...
(preliminary and incomplete) We examine the relative information content of monthly volatility forec...
While much research related to forecasting return volatility does so in a univariate setting, this p...