Statistical tools to detect nonlinear relationship between variables are commonly needed in various practices. The first part of the dissertation presents a test of independence between a response variable, either discrete or continuous, and a continuous covariate after adjusting for heteroscedastic treatment effects. The method first involves augmenting each pair of the data for all treatments with a fixed number of nearest neighbors as pseudo-replicates. A test statistic is then constructed by taking the difference of two quadratic forms. Using such differences eliminate the need to estimate any nonlinear regression function, reducing the computational time. Although using a fixed number of nearest neighbors poses significant difficulty i...
A large part of the recent literature on program evaluation has focused on estimation of the average...
Consider a nonparametric regression model Y = m(X)+✏, where m is an unknown regression function, Y i...
Consider an observed response Y which, following a certain transformation Yϑ by := Tϑ (Y ), can be e...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangStatistical tools to detect nonlinear relatio...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangStatistical tools to detect nonlinear relatio...
In this paper,we present a test of independence between the response variable, which can be discrete...
This paper develops a testing procedure to simultaneously check (i) the independence between the err...
The adherence to classical parametric research methods continues, in part, because of the misconcept...
AbstractWe propose a new test for independence of error and covariate in a nonparametric regression ...
AbstractConsistent procedures are constructed for testing independence between the regressor and the...
We propose a nonparametric test for conditional uncorrelatedness in multiple-equation models such as...
Key words and phrases: Constant variance; health care costs; heteroscedastic errors; nearest-neighbo...
We consider a k-nearest neighbor-based nonparametric lack-of-fit test of constant regression in pres...
New test statistics are proposed for testing whether two random vectors are independent. Gieser and ...
Consider the nonparametric regression model Y = m(X) + E, where the function m is smooth, but unknow...
A large part of the recent literature on program evaluation has focused on estimation of the average...
Consider a nonparametric regression model Y = m(X)+✏, where m is an unknown regression function, Y i...
Consider an observed response Y which, following a certain transformation Yϑ by := Tϑ (Y ), can be e...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangStatistical tools to detect nonlinear relatio...
Doctor of PhilosophyDepartment of StatisticsHaiyan WangStatistical tools to detect nonlinear relatio...
In this paper,we present a test of independence between the response variable, which can be discrete...
This paper develops a testing procedure to simultaneously check (i) the independence between the err...
The adherence to classical parametric research methods continues, in part, because of the misconcept...
AbstractWe propose a new test for independence of error and covariate in a nonparametric regression ...
AbstractConsistent procedures are constructed for testing independence between the regressor and the...
We propose a nonparametric test for conditional uncorrelatedness in multiple-equation models such as...
Key words and phrases: Constant variance; health care costs; heteroscedastic errors; nearest-neighbo...
We consider a k-nearest neighbor-based nonparametric lack-of-fit test of constant regression in pres...
New test statistics are proposed for testing whether two random vectors are independent. Gieser and ...
Consider the nonparametric regression model Y = m(X) + E, where the function m is smooth, but unknow...
A large part of the recent literature on program evaluation has focused on estimation of the average...
Consider a nonparametric regression model Y = m(X)+✏, where m is an unknown regression function, Y i...
Consider an observed response Y which, following a certain transformation Yϑ by := Tϑ (Y ), can be e...