Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new class of models featuring periodicity in conditional heteroscedasticity explicitly designed to cap-ture the repetitive seasonal time variation in the second-order moments. This new class of peri-odic autoregressive conditional heteroscedasticity, or P-ARCH, models is directly related to the class of periodic autoregressive moving average (ARMA) models for the mean. The implicit re-lation between periodic generalized ARCH (P-GARCH) structures and time-invariant seasonal weak GARCH processes documents how neglected autoregressive conditional heteroscedastic pe-riodicity may give rise to a loss in forecast efficiency. The importance and magnitud...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
During the last few years there has been an increasing interest in modelling time-varying volatiliti...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
vii, 94 leaves : ill. (some col.); 30 cm.PolyU Library Call No.: [THS] LG51 .H577M AMA 1999 LauThe e...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
We discuss the empirical importance of long term cyclical effects in the volatility of financial ret...
We discuss the empirical importance of long term cyclical effects in the volatility of financial ret...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
Dans cette étude, nous proposons une classe de processus ARCH périodiques. Cette structure est sembl...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance ...
This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance ...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
During the last few years there has been an increasing interest in modelling time-varying volatiliti...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
vii, 94 leaves : ill. (some col.); 30 cm.PolyU Library Call No.: [THS] LG51 .H577M AMA 1999 LauThe e...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
We discuss the empirical importance of long term cyclical effects in the volatility of financial ret...
We discuss the empirical importance of long term cyclical effects in the volatility of financial ret...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
Dans cette étude, nous proposons une classe de processus ARCH périodiques. Cette structure est sembl...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance ...
This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance ...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
During the last few years there has been an increasing interest in modelling time-varying volatiliti...