We provide a methodology for testing a polynomial model hypothesis by extending the approach and results of Baek, Cho, and Phillips (2015; Journal of Econometrics; BCP) that tests for neglected nonlinearity using power transforms of regressors against arbitrary nonlinearity. We examine and generalize the BCP quasi-likelihood ratio test dealing with the multifold identification problem that arises under the null of the polynomial model. The approach leads to convenient asymptotic theory for inference, has omnibus power against general nonlinear alternatives, and allows estimation of an unknown polynomial degree in a model by way of sequential testing, a technique that is useful in the application of sieve approximations. Simulations show good...
Information systems (IS) studies regularly assume linearity of the variables and often disregard the...
This thesis studies parameter estimation and inference in systems of seemingly unrelated cointegrat...
Low-order polynomial models often do not fit curvilinear relationships well. Even if these models pr...
We provide a methodology for testing a polynomial model hypothesis by extending the approach and res...
We develop a method of testing linearity using power transforms of regressors, allowing for stationa...
Typescript (photocopy).In regression analysis, it is always important to test the validity of the as...
The paper considers estimation and inference in cointegrating polynomial regressions, i. e., regress...
Abstract. For the regression model yi =f(ti) + el (e's lid N(0,a2)), it is proposed to test the...
Procedures for assessing model adequacy have been investigated. Since any detection of model misspec...
Starting from a method suggested by T.W. Anderson (1971) stagewise rejective test procedures for det...
We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coeff...
Applied interest in considering nonlinear structural equation models has increased in recent years. ...
The polynomial regression (PR) technique is used to estimate the parameters of the dependent variabl...
We develop unit root tests using additional stationary covariates as suggested in Hansen (1995). How...
Model inference for dynamical systems aims to estimate the future behaviour of a system from observa...
Information systems (IS) studies regularly assume linearity of the variables and often disregard the...
This thesis studies parameter estimation and inference in systems of seemingly unrelated cointegrat...
Low-order polynomial models often do not fit curvilinear relationships well. Even if these models pr...
We provide a methodology for testing a polynomial model hypothesis by extending the approach and res...
We develop a method of testing linearity using power transforms of regressors, allowing for stationa...
Typescript (photocopy).In regression analysis, it is always important to test the validity of the as...
The paper considers estimation and inference in cointegrating polynomial regressions, i. e., regress...
Abstract. For the regression model yi =f(ti) + el (e's lid N(0,a2)), it is proposed to test the...
Procedures for assessing model adequacy have been investigated. Since any detection of model misspec...
Starting from a method suggested by T.W. Anderson (1971) stagewise rejective test procedures for det...
We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coeff...
Applied interest in considering nonlinear structural equation models has increased in recent years. ...
The polynomial regression (PR) technique is used to estimate the parameters of the dependent variabl...
We develop unit root tests using additional stationary covariates as suggested in Hansen (1995). How...
Model inference for dynamical systems aims to estimate the future behaviour of a system from observa...
Information systems (IS) studies regularly assume linearity of the variables and often disregard the...
This thesis studies parameter estimation and inference in systems of seemingly unrelated cointegrat...
Low-order polynomial models often do not fit curvilinear relationships well. Even if these models pr...