The prime goal of this research is to model the long-range dependency and volatility factors fitting in fractionally differenced ARMA (ARFIMA) and Gegenbauer ARMA processes (GARMA) in financial time series. This extends the efficiency in computing the exact maximum likelihood established by Sowell through conditional quasi maximum likelihood (QMLE) for ARFIMA and GARMA with conditional heteroscedastic errors. In particular, an extended algorithm together with corresponding asymptotic results of QMLE estimators are presented. The Monte Carlo simulation methods are used to study asymptotic properties and report the convergence rate for parameter estimates. Portmanteau test statistics are employed to check the model adequacy. As an application...
ABSTRACT: This study is an attempt to review the theory and applications of autoregressive fractiona...
This paper investigates the persistence of the long memory property in the daily stock index EGX30. ...
Distributional theory for Quasi-Maximum Likelihood estimators in long memory conditional heteroskeda...
This article considers fractionally integrated autoregressive moving-average time series models with...
This article considers fractionally integrated autoregressive moving-average time series models with...
This article examines the power of two well-known procedures of fractional integration in the contex...
In recent years, fractionally-differenced processes have received a great deal of attention due to t...
The estimation and diagnostic checking of the fractional autoregressive integrated moving average wi...
Processes with correlated errors have been widely used in economic time series. The fractionally int...
Purpose – Financial returns are often modeled as stationary time series with innovations having hete...
Abstract: We introduce ARFIMA-ARCH models which simultaneously incorporate fractional differencing a...
This article considers the fractionally autoregressive integrated moving average [ARFIMA(p, d, q)] m...
This paper considers estimation of the parameters for fractionally integrated processes with infinit...
A class of semiparametric fractional autoregressive GARCH models (SEMIFARGARCH), which includes dete...
This paper considers the maximum likelihood estimation (MLE) of a class of stationary and invert-ibl...
ABSTRACT: This study is an attempt to review the theory and applications of autoregressive fractiona...
This paper investigates the persistence of the long memory property in the daily stock index EGX30. ...
Distributional theory for Quasi-Maximum Likelihood estimators in long memory conditional heteroskeda...
This article considers fractionally integrated autoregressive moving-average time series models with...
This article considers fractionally integrated autoregressive moving-average time series models with...
This article examines the power of two well-known procedures of fractional integration in the contex...
In recent years, fractionally-differenced processes have received a great deal of attention due to t...
The estimation and diagnostic checking of the fractional autoregressive integrated moving average wi...
Processes with correlated errors have been widely used in economic time series. The fractionally int...
Purpose – Financial returns are often modeled as stationary time series with innovations having hete...
Abstract: We introduce ARFIMA-ARCH models which simultaneously incorporate fractional differencing a...
This article considers the fractionally autoregressive integrated moving average [ARFIMA(p, d, q)] m...
This paper considers estimation of the parameters for fractionally integrated processes with infinit...
A class of semiparametric fractional autoregressive GARCH models (SEMIFARGARCH), which includes dete...
This paper considers the maximum likelihood estimation (MLE) of a class of stationary and invert-ibl...
ABSTRACT: This study is an attempt to review the theory and applications of autoregressive fractiona...
This paper investigates the persistence of the long memory property in the daily stock index EGX30. ...
Distributional theory for Quasi-Maximum Likelihood estimators in long memory conditional heteroskeda...