This paper proposes an improved likelihood-based method to test for first-order moving average in the disturbances of nonlinear regression models. The proposed method has a third-order distributional accuracy which makes it particularly attractive for inference in small sample sizes models. Compared to the commonly used first-order methods such as likelihood ratio and Wald tests which rely on large samples and asymptotic properties of the maximum likelihood estimation, the proposed method has remarkable accuracy. Monte Carlo simulations are provided to show how the proposed method outperforms the existing ones. Two empirical examples including a power regression model of aggregate consumption and a Gompertz growth model of mobile cellular u...
Likelihood ratio tests can be substantially size distorted in small- and moderate-sized samples. In ...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
This paper considers the Bayesian analysis of threshold regression models. It shows that this analys...
The article presents information on exact maximum likelihood estimation of regression models with fi...
This paper extends the classical Chow (1960) test for structural change in linear regress ion models...
We propose a Bayesian test for nonlinearity of threshold moving average (TMA) models. First, we obta...
This paper considers the issue of testing for varying dispersion in exponential family nonlinear mod...
International audienceIn this correspondence, we propose two hypothesis testing (HT) for nonlinearit...
Lagrange multiplier (LM) test statistics are derived for testing a linear moving average model again...
The paper develops a novel testing procedure for hypotheses on deterministic trends in a multivariat...
ratio test for the threshold in moving average models with i.i.d. errors. This article generalizes t...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
The paper develops a novel testing procedure for hypotheses on deterministic trends in a multivariat...
A new approach to nonlinear modeling is presented which, by incorporating the global behavior of the...
This paper considers an important practical problem in testing time-series data for nonlinearity in ...
Likelihood ratio tests can be substantially size distorted in small- and moderate-sized samples. In ...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
This paper considers the Bayesian analysis of threshold regression models. It shows that this analys...
The article presents information on exact maximum likelihood estimation of regression models with fi...
This paper extends the classical Chow (1960) test for structural change in linear regress ion models...
We propose a Bayesian test for nonlinearity of threshold moving average (TMA) models. First, we obta...
This paper considers the issue of testing for varying dispersion in exponential family nonlinear mod...
International audienceIn this correspondence, we propose two hypothesis testing (HT) for nonlinearit...
Lagrange multiplier (LM) test statistics are derived for testing a linear moving average model again...
The paper develops a novel testing procedure for hypotheses on deterministic trends in a multivariat...
ratio test for the threshold in moving average models with i.i.d. errors. This article generalizes t...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
The paper develops a novel testing procedure for hypotheses on deterministic trends in a multivariat...
A new approach to nonlinear modeling is presented which, by incorporating the global behavior of the...
This paper considers an important practical problem in testing time-series data for nonlinearity in ...
Likelihood ratio tests can be substantially size distorted in small- and moderate-sized samples. In ...
Nonlinear heteroscedastic regression models are a widely used class of models in applied statistics,...
This paper considers the Bayesian analysis of threshold regression models. It shows that this analys...