In the financial market, the volatility of financial assets plays a key role in the problem of measuring market risk in many investment decisions. Insights into economic forces that may contribute to or amplify volatility are thus important. The financial market is characterized by regime switching between phases of low volatility and phases of high volatility. Nonlinearity and long memory are two salient features of volatility. To jointly capture the features of long memory and nonlinearity, a new threshold time series model with hyperbolic generalized autoregressive conditional heteroscedasticity is considered in this article. A goodness of fit test is derived to check the adequacy of the fitted model. Simulation and empirical results pro...
We propose a new class of conditional heteroskedasticity in the volatility (CHV) models which allows...
We propose in this paper a threshold nonlinearity test for financial time series. Our approach adopt...
In this paper we propose a flexible model to capture nonlinearities and long-range dependence in tim...
In the financial market, the volatility of financial assets plays a key role in the problem of measu...
This paper proposes a test for threshold nonlinearity in a time series with generalized autoregressi...
Autoregressive Conditional Heteroskedasticity (ARCH) models have been applied in modeling the relati...
Pre-print dated April 2003This article analyses the statistical properties of that general class of ...
Financial Econometrics and Risk Management — Topic Contributed Papers ; IMS, Section on Risk Analysi...
Most asset prices are subject to significant volatility. The arrival of new information is viewed as...
WOS:000256408100003 (Nº de Acesso Web of Science)Long memory and volatility clustering are two styli...
In the presented paper GARCH class models were considered for describing and forecasting market vola...
We introduce a new model to measure unconditional volatility, the Spline-GARCH. The model is applied...
One of the main implications of the efficient market hypothesis (EMH) is that expected future return...
This paper introduces a new model called the buffered autoregressive model with generalized autoregr...
This paper illustrates how to specify and test a Double Threshold EGARCH Model for some important ex...
We propose a new class of conditional heteroskedasticity in the volatility (CHV) models which allows...
We propose in this paper a threshold nonlinearity test for financial time series. Our approach adopt...
In this paper we propose a flexible model to capture nonlinearities and long-range dependence in tim...
In the financial market, the volatility of financial assets plays a key role in the problem of measu...
This paper proposes a test for threshold nonlinearity in a time series with generalized autoregressi...
Autoregressive Conditional Heteroskedasticity (ARCH) models have been applied in modeling the relati...
Pre-print dated April 2003This article analyses the statistical properties of that general class of ...
Financial Econometrics and Risk Management — Topic Contributed Papers ; IMS, Section on Risk Analysi...
Most asset prices are subject to significant volatility. The arrival of new information is viewed as...
WOS:000256408100003 (Nº de Acesso Web of Science)Long memory and volatility clustering are two styli...
In the presented paper GARCH class models were considered for describing and forecasting market vola...
We introduce a new model to measure unconditional volatility, the Spline-GARCH. The model is applied...
One of the main implications of the efficient market hypothesis (EMH) is that expected future return...
This paper introduces a new model called the buffered autoregressive model with generalized autoregr...
This paper illustrates how to specify and test a Double Threshold EGARCH Model for some important ex...
We propose a new class of conditional heteroskedasticity in the volatility (CHV) models which allows...
We propose in this paper a threshold nonlinearity test for financial time series. Our approach adopt...
In this paper we propose a flexible model to capture nonlinearities and long-range dependence in tim...