This paper proposes a nonparametric simultaneous test for parametric specification of the conditional mean and variance functions in a time series regression model. The test is based on an empirical likelihood (EL) statistic that measures the goodness of fit between the parametric estimates and the nonparametric kernel estimates of the mean and variance functions. A unique feature of the test is its ability to distribute natural weights automatically between the mean and the variance components of the goodness-of-fit measure. To reduce the dependence of the test on a single pair of smoothing bandwidths, we construct an adaptive test by maximizing a standardized version of the empirical likelihood test statistic over a set of smoothing bandw...
This paper considers a nonparametric time series regression model with a nonstationary regressor. We...
We introduce tests of linearity for time series based on nonparametric estimates of the conditional ...
We consider three nonparametric tests for functional form, varying parameters, and omitted variables...
This paper proposes a nonparametric simultaneous test for parametric specification of the conditiona...
In this article, we propose a new joint portmanteau test for checking the specification of parametri...
This article proposes a general class of joint diagnostic tests for parametric conditional mean and ...
In this paper we consider a regression model with errors that are martingale differences. This model...
Standard goodness-of-fit tests for a parametric regression model against a series of nonparametric a...
This paper develops a testing procedure to simultaneously check (i) the independence between the err...
In the common non-parametric regression model the problem of testing for the parametric form of the ...
We propose a new model adequacy test for parametric conditional distributions in nonlinear time seri...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We extend the adaptive and rate-optimal test of Horowitz and Spokoiny (2001) for specification of pa...
Many statistical techniques devoted to stationary time series analysis assume a constant conditional...
This paper considers a nonparametric time series regression model with a nonstationary regressor. We...
We introduce tests of linearity for time series based on nonparametric estimates of the conditional ...
We consider three nonparametric tests for functional form, varying parameters, and omitted variables...
This paper proposes a nonparametric simultaneous test for parametric specification of the conditiona...
In this article, we propose a new joint portmanteau test for checking the specification of parametri...
This article proposes a general class of joint diagnostic tests for parametric conditional mean and ...
In this paper we consider a regression model with errors that are martingale differences. This model...
Standard goodness-of-fit tests for a parametric regression model against a series of nonparametric a...
This paper develops a testing procedure to simultaneously check (i) the independence between the err...
In the common non-parametric regression model the problem of testing for the parametric form of the ...
We propose a new model adequacy test for parametric conditional distributions in nonlinear time seri...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
We extend the adaptive and rate-optimal test of Horowitz and Spokoiny (2001) for specification of pa...
Many statistical techniques devoted to stationary time series analysis assume a constant conditional...
This paper considers a nonparametric time series regression model with a nonstationary regressor. We...
We introduce tests of linearity for time series based on nonparametric estimates of the conditional ...
We consider three nonparametric tests for functional form, varying parameters, and omitted variables...