GARCH models have been commonly used to capture volatility dynamics in financial time series. A key assumption utilized is that the series is stationary as this allows for model identifiability. This however violates the volatility clustering property exhibited by financial returns series. Existing methods attribute this phenomenon to parameter change. However, the assumption of fixed model order is too restrictive for long time series. This paper proposes a change-point estimator based on Manhattan distance. The estimator is applicable to GARCH model order change-point detection. Procedures are based on the sample autocorrelation function of squared series. The asymptotic consistency of the estimator is proven theoretically
We tested different GARCH models in modeling the volatility of stock returns in London Stock Exchang...
The purpose of this paper is to examine and model data from several years of foreign currency tradin...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
The limit theory of a change-point process which is based on the Manhattan distance of the sample au...
Generalized Auto-regressive Conditional Heteroskedastic (GARCH) models with fixed parameters are typ...
One of the essential features of financial time series data is volatility. It is often the case that...
The instability of volatility parameters in GARCH models is an important issue for analyzing financi...
Many econometric time series data sets, such as log returns of stocks, exhibit evidence of the so ca...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
Most asset return series, especially those in high frequency, show high excess kurtosis and persiste...
We present an estimation and forecasting method, based on a differential evolution MCMC method, for ...
This article shows that the relationship between kurtosis, persistence of shocks to volatility, and ...
[[abstract]]This paper shows how the parameters of a stable GARCH(1, 1) model can be estimated from ...
In this paper, we demonstrate that most of Tokyo stock return data sets have volatility persistence ...
We tested different GARCH models in modeling the volatility of stock returns in London Stock Exchang...
The purpose of this paper is to examine and model data from several years of foreign currency tradin...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
The limit theory of a change-point process which is based on the Manhattan distance of the sample au...
Generalized Auto-regressive Conditional Heteroskedastic (GARCH) models with fixed parameters are typ...
One of the essential features of financial time series data is volatility. It is often the case that...
The instability of volatility parameters in GARCH models is an important issue for analyzing financi...
Many econometric time series data sets, such as log returns of stocks, exhibit evidence of the so ca...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
The GARCH (p, q) model is a very interesting stochastic process with widespread applications and a c...
Most asset return series, especially those in high frequency, show high excess kurtosis and persiste...
We present an estimation and forecasting method, based on a differential evolution MCMC method, for ...
This article shows that the relationship between kurtosis, persistence of shocks to volatility, and ...
[[abstract]]This paper shows how the parameters of a stable GARCH(1, 1) model can be estimated from ...
In this paper, we demonstrate that most of Tokyo stock return data sets have volatility persistence ...
We tested different GARCH models in modeling the volatility of stock returns in London Stock Exchang...
The purpose of this paper is to examine and model data from several years of foreign currency tradin...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...