AbstractWe present methods to handle error-in-variables models. Kernel-based likelihood score estimating equation methods are developed for estimating conditional density parameters. In particular, a semiparametric likelihood method is proposed for sufficiently using the information in the data. The asymptotic distribution theory is derived. Small sample simulations and a real data set are used to illustrate the proposed estimation methods
Data from multivariate weighted distributions appear in such cases as missing data, damaged data, so...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
Abstract. We consider kernel density estimation in the multivariate case, focusing on the use of som...
AbstractWe present methods to handle error-in-variables models. Kernel-based likelihood score estima...
This paper develops non-parametric techniques for dynamic models whose data have unknown probability...
Abstract: In this paper we estimate density functions for positive multivariate data. We propose a s...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
Consider the semiparametric transformation model Λθo(Y ) = m(X) + ε, where θo is an unknown finite d...
There are various methods for estimating a density. A group of methods which estimate the density as...
AbstractConsider the linear models of the form Y=Xτβ+ε with the response Y censored randomly on the ...
In this paper we estimate density functions for positive multivariate data. We propose a semiparamet...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
We propose and study a class of regression models, in which the mean function is specified parametri...
We consider kernel density estimation in the multivariate case, focusing on the use of some elements...
Given uncertainty in the input model and parameters of a simulation study, the goal of the simulatio...
Data from multivariate weighted distributions appear in such cases as missing data, damaged data, so...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
Abstract. We consider kernel density estimation in the multivariate case, focusing on the use of som...
AbstractWe present methods to handle error-in-variables models. Kernel-based likelihood score estima...
This paper develops non-parametric techniques for dynamic models whose data have unknown probability...
Abstract: In this paper we estimate density functions for positive multivariate data. We propose a s...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
Consider the semiparametric transformation model Λθo(Y ) = m(X) + ε, where θo is an unknown finite d...
There are various methods for estimating a density. A group of methods which estimate the density as...
AbstractConsider the linear models of the form Y=Xτβ+ε with the response Y censored randomly on the ...
In this paper we estimate density functions for positive multivariate data. We propose a semiparamet...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
We propose and study a class of regression models, in which the mean function is specified parametri...
We consider kernel density estimation in the multivariate case, focusing on the use of some elements...
Given uncertainty in the input model and parameters of a simulation study, the goal of the simulatio...
Data from multivariate weighted distributions appear in such cases as missing data, damaged data, so...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
Abstract. We consider kernel density estimation in the multivariate case, focusing on the use of som...