This work develops an estimator for the bivariate density given a sample of data truncated to a non-rectangular region. Such inference problems occur in various fields; the motivating application here was a problem in astronomy. The approach is semiparametric, combining a nonparametric local likelihood density estimator with a simple parametric form to account for the dependence of the two random variables. Large sample theory for M-estimators is utilized to approximate the distribution for the estimator. A method is described for approximating the integrated mean squared error of the estimator; smoothing parameters can be selected to minimize this quantity. Results are described from the analysis of data from the measurements of quasars. A...
In this work we introduce and compare several bandwidth selection procedures for kernel density esti...
Several bandwidth selection procedures for kernel density estimation of a random variable that is sa...
Penalized B-splines combined with the composite link model are used to estimate a bivariate density ...
AbstractIn this study bivariate kernel density estimators are considered when a component is subject...
Cataloged from PDF version of article.In this study bivariate kernel density estimators are consider...
The observational limitations of astronomical surveys lead to significant statistical inference chal...
In some applications with astronomical and survival data, doubly truncated data are sometimes encoun...
Typescript (photocopy).A technique for modeling bivariate data that is based on the theory of orthog...
In this work, three extensions of univariate nonparametric probability density estimators into two d...
We propose a semiparametric method to estimate spectral densities of isotropic Gaussian processes wi...
This thesis advocates the use of shrinkage and penalty techniques for estimating the parameters of a...
Scatter plots of multivariate data sets motivate modeling of star-shaped distributions beyond ellipt...
In random truncation models one observes the i.i.d. pairs (Ti≤Yi), i=1, ..., n. If Y is the variable...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
Cataloged from PDF version of article.In random truncation models one observes the i.i.d. pairs (Ti≤...
In this work we introduce and compare several bandwidth selection procedures for kernel density esti...
Several bandwidth selection procedures for kernel density estimation of a random variable that is sa...
Penalized B-splines combined with the composite link model are used to estimate a bivariate density ...
AbstractIn this study bivariate kernel density estimators are considered when a component is subject...
Cataloged from PDF version of article.In this study bivariate kernel density estimators are consider...
The observational limitations of astronomical surveys lead to significant statistical inference chal...
In some applications with astronomical and survival data, doubly truncated data are sometimes encoun...
Typescript (photocopy).A technique for modeling bivariate data that is based on the theory of orthog...
In this work, three extensions of univariate nonparametric probability density estimators into two d...
We propose a semiparametric method to estimate spectral densities of isotropic Gaussian processes wi...
This thesis advocates the use of shrinkage and penalty techniques for estimating the parameters of a...
Scatter plots of multivariate data sets motivate modeling of star-shaped distributions beyond ellipt...
In random truncation models one observes the i.i.d. pairs (Ti≤Yi), i=1, ..., n. If Y is the variable...
This paper develops a nonparametric density estimator with parametric overtones. Suppose f(x, θ) is ...
Cataloged from PDF version of article.In random truncation models one observes the i.i.d. pairs (Ti≤...
In this work we introduce and compare several bandwidth selection procedures for kernel density esti...
Several bandwidth selection procedures for kernel density estimation of a random variable that is sa...
Penalized B-splines combined with the composite link model are used to estimate a bivariate density ...