vii, 94 leaves : ill. (some col.); 30 cm.PolyU Library Call No.: [THS] LG51 .H577M AMA 1999 LauThe earlier research in time series mainly concentrated on models that assume a constant one-period forecast variance. In reality, however, the assumption may not be met in all cases, especially in economics and finance. Therefore, much recent work has been directed towards the relaxation of the constant conditional variance assumption, namely allowing the conditional variance to change over time and keeping the unconditional variance constant. Tsay (1987) proposed the conditional heteroscedastic autoregressive moving average (CHARMA) model. One of the advantages of the model is that it includes the autoregressive conditional heteroscedastic (ARCH...
In his seminal 1982 paper, Robert F. Engle described a time series model with a time-varying volatil...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
The goal of this work is to develop a nonparametric regression model that not only account for possi...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
A vast amount of econometrical and statistical research deals with modeling financial time series an...
Over the last fifteen years, the interest in nonlinear time series models has been steadily increasi...
Over the last fifteen years, the interest in nonlinear time series models has been steadily increasi...
Many economic and financial time series have been found to exhibit dynamics in variance; that is, th...
Seasonal heteroskedasticity refers to regular changes in variability over the calendar year. Models ...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
In his seminal 1982 paper, Robert F. Engle described a time series model with a time-varying volatil...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
The goal of this work is to develop a nonparametric regression model that not only account for possi...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
Most high-frequency asset returns exhibit seasonal volatility patterns. This article proposes a new ...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
A vast amount of econometrical and statistical research deals with modeling financial time series an...
Over the last fifteen years, the interest in nonlinear time series models has been steadily increasi...
Over the last fifteen years, the interest in nonlinear time series models has been steadily increasi...
Many economic and financial time series have been found to exhibit dynamics in variance; that is, th...
Seasonal heteroskedasticity refers to regular changes in variability over the calendar year. Models ...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
The current study examines the turn of the month effect on stock returns in 20 countries. This will ...
In his seminal 1982 paper, Robert F. Engle described a time series model with a time-varying volatil...
It is argued that the predictability of meteorological variables is not constant but shows regular v...
The goal of this work is to develop a nonparametric regression model that not only account for possi...