Doctor of PhilosophyDepartment of StatisticsWeixing SongThe regression model has been given a considerable amount of attention and played a significant role in data analysis. The usual assumption in regression analysis is that the variances of the error terms are constant across the data. Occasionally, this assumption of homoscedasticity on the variance is violated; and the data generated from real world applications exhibit heteroscedasticity. The practical importance of detecting heteroscedasticity in regression analysis is widely recognized in many applications because efficient inference for the regression function requires unequal variance to be taken into account. The goal of this thesis is to propose new testing procedures to ...
We consider the problem of testing for a parametric form of the variance function in a partial line...
In this paper we consider a heteroscedastic transformation model of the form Λϑ(Y ) = m(X) + σ(X)ε, ...
For the heteroscedastic nonparametric regression model Yni = m(xni)+σ(xni)Є ni; i = 1; ...; n; we pr...
Doctor of PhilosophyDepartment of StatisticsWeixing SongThe regression model has been given a consid...
The regression model has been given a considerable amount of attention and played a significant role...
Doctor of PhilosophyDepartment of StatisticsWeixing SongCorrectly specifying the parametric form of ...
Heteroscedastic data arise in many applications. In a heteroscedastic regression model, the variance...
In this paper a new test for the parametric form of the variance function in the common nonparametri...
Heteroskedastic errors can lead to inaccurate statistical conclusions if they are not properly hand...
In this paper we are interested in checking whether the conditional variances are equal in k ≥ 2 lo...
In the common nonparametric regression model the problem of testing for the parametric form of the c...
Heteroskedasticity testing in nonparametric regression is a classic statistical problem with importa...
Consider a heteroscedastic regression model Y = m(X) + σ(X)ε, where m(X) = E(Y|X) and σ2 (X) = Var(Y...
We consider a k-nearest neighbor-based nonparametric lack-of-fit test of constant regression in pres...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangIt is essential to test the adequacy of a spe...
We consider the problem of testing for a parametric form of the variance function in a partial line...
In this paper we consider a heteroscedastic transformation model of the form Λϑ(Y ) = m(X) + σ(X)ε, ...
For the heteroscedastic nonparametric regression model Yni = m(xni)+σ(xni)Є ni; i = 1; ...; n; we pr...
Doctor of PhilosophyDepartment of StatisticsWeixing SongThe regression model has been given a consid...
The regression model has been given a considerable amount of attention and played a significant role...
Doctor of PhilosophyDepartment of StatisticsWeixing SongCorrectly specifying the parametric form of ...
Heteroscedastic data arise in many applications. In a heteroscedastic regression model, the variance...
In this paper a new test for the parametric form of the variance function in the common nonparametri...
Heteroskedastic errors can lead to inaccurate statistical conclusions if they are not properly hand...
In this paper we are interested in checking whether the conditional variances are equal in k ≥ 2 lo...
In the common nonparametric regression model the problem of testing for the parametric form of the c...
Heteroskedasticity testing in nonparametric regression is a classic statistical problem with importa...
Consider a heteroscedastic regression model Y = m(X) + σ(X)ε, where m(X) = E(Y|X) and σ2 (X) = Var(Y...
We consider a k-nearest neighbor-based nonparametric lack-of-fit test of constant regression in pres...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangIt is essential to test the adequacy of a spe...
We consider the problem of testing for a parametric form of the variance function in a partial line...
In this paper we consider a heteroscedastic transformation model of the form Λϑ(Y ) = m(X) + σ(X)ε, ...
For the heteroscedastic nonparametric regression model Yni = m(xni)+σ(xni)Є ni; i = 1; ...; n; we pr...