This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance and conditional heteroskedasticity in high-frequency nancial returns. A new approach, called a seasonal SEMIGARCH model, is proposed to perform this by introducing multiplicative seasonal and trend components into the GARCH model. A data-driven semiparametric algorithm is developed for estimat-ing the model. Asymptotic properties of the proposed estimators are investigated brie y. An approximate signicance test of seasonality and the use of Monte Carlo con dence bounds for the trend are proposed. Practical performance of the pro-posal is investigated in detail using some German stock price returns. The approach proposed here provides a useful...
In this paper, we study non-linear dynamics in the CAC 40 stock index. Our empirical results, sugges...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance ...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
We propose a multiplicative component model for intraday volatility. The model consists of a seasona...
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 ...
We introduce a model for the analysis of intra-day volatility based on unobserved components. The st...
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 ...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
In this paper, we study non-linear dynamics in the CAC 40 stock index. Our empirical results, sugges...
In this paper, we study non-linear dynamics in the CAC 40 stock index. Our empirical results, sugges...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
This paper considers simultaneous modelling of seasonality, slowly changing un-conditional variance ...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
This paper considers simultaneous modelling of seasonality, slowly changing un- conditional variance...
A seasonal conditional heteroscedastic model is proposed. The identification, estimation, and diagno...
We propose a multiplicative component model for intraday volatility. The model consists of a seasona...
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 ...
We introduce a model for the analysis of intra-day volatility based on unobserved components. The st...
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 ...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
In this paper, we study non-linear dynamics in the CAC 40 stock index. Our empirical results, sugges...
In this paper, we study non-linear dynamics in the CAC 40 stock index. Our empirical results, sugges...
Volatility in financial markets has both low and high–frequency components which determine its dynam...
Volatility in financial markets has both low and high–frequency components which determine its dynam...