Statistical tests routinely adopted for detecting nonlinear components in time series rely on the auxiliary regression of ARMA lagged residuals, and the Lagrange multiplier test to detect ARCH components is an example. The size distortion of such test suggests adopting a weighted test, where the weights are computed through a forward search algorithm. Simulations show that the forward weighted robust test is preferable to the classical Lagrange test and to existing robust tests, which are based on backward weighted regression or on estimated autocorrelation function. The forward weighted robust test is applied to daily financial and quarterly macroeconomic time series, showing its usefulness in detecting ARCH effects, even when outliers are...
Squared residual autocorrelations have been found useful in detecting departures from linearity in t...
AbstractA combined Lagrange multiplier (LM) test for autoregressive conditional heteroskedastic (ARC...
A simple test for heteroscedastic disturbances in a linear regression model is developed using the f...
Statistical tests routinely adopted for detecting nonlinear components in time series rely on the au...
Statistical tests routinely adopted for detecting nonlinear components in time series rely on the au...
Statistical tests routinely adopted for detecting nonlinear components in time series rely on the au...
The Lagrange multiplier test, often adopted to detect heteroscedasticity, suffers from severe size d...
We review the Lagrange Multiplier (LM) test for detection of non-linear features through a robust an...
Macroeconomic and financial time series are often tested for the presence of non-linearity effects. ...
Macroeconomic and financial time series are often tested for the presence of non linearity effects....
In this paper we propose a combined Lagrange multiplier (LM) test for autoregressive conditional het...
Since the introduction of autoregressive conditional heteroscedasticity (ARCH) by Engle, there has b...
Since the introduction of autoregressive conditional heteroscedasticity (ARCH) by Engle, there has b...
In the 2011 SAS ® Global Forum, two weighted portmanteau tests were introduced for goodness-of-fit o...
In this paper we investigate the properties of the Lagrange Multiplier (LM) test for autoregressive ...
Squared residual autocorrelations have been found useful in detecting departures from linearity in t...
AbstractA combined Lagrange multiplier (LM) test for autoregressive conditional heteroskedastic (ARC...
A simple test for heteroscedastic disturbances in a linear regression model is developed using the f...
Statistical tests routinely adopted for detecting nonlinear components in time series rely on the au...
Statistical tests routinely adopted for detecting nonlinear components in time series rely on the au...
Statistical tests routinely adopted for detecting nonlinear components in time series rely on the au...
The Lagrange multiplier test, often adopted to detect heteroscedasticity, suffers from severe size d...
We review the Lagrange Multiplier (LM) test for detection of non-linear features through a robust an...
Macroeconomic and financial time series are often tested for the presence of non-linearity effects. ...
Macroeconomic and financial time series are often tested for the presence of non linearity effects....
In this paper we propose a combined Lagrange multiplier (LM) test for autoregressive conditional het...
Since the introduction of autoregressive conditional heteroscedasticity (ARCH) by Engle, there has b...
Since the introduction of autoregressive conditional heteroscedasticity (ARCH) by Engle, there has b...
In the 2011 SAS ® Global Forum, two weighted portmanteau tests were introduced for goodness-of-fit o...
In this paper we investigate the properties of the Lagrange Multiplier (LM) test for autoregressive ...
Squared residual autocorrelations have been found useful in detecting departures from linearity in t...
AbstractA combined Lagrange multiplier (LM) test for autoregressive conditional heteroskedastic (ARC...
A simple test for heteroscedastic disturbances in a linear regression model is developed using the f...