The paper is concerned with data from a collection of different, but related, regression curves (m(j))(j = 1,...,N), N much greater than 1. In statistical practice, analysis of such data is most frequently based on low-dimensional linear models. It is then assumed that each regression curve mj is a linear combination of a small number L much less than N of common functions g(1),...,g(L). For example, if all m(j)'s are straight lines, this holds with L = 2, g(1) = 1 and g(2)(x) = x. In this paper the assumption of a prespecified model is dropped. A nonparametric method is presented which allows estimation of the smallest L and corresponding functions g(1),...,g(L) from the data. The procedure combines smoothing techniques with ideas related ...
In the paper the procedure for selecting the best nonparametric model for a given problem of regress...
Many people who do data analysis take only a few classes in statistics and hence, in general, get in...
Data-analytic approaches to regression problems, arising from many scientific disciplines are descri...
SIGLEAvailable from Bibliothek des Instituts fuer Weltwirtschaft, ZBW, Duesternbrook Weg 120, D-2410...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
This paper presents and discusses procedures for estimating regression curves when regressors are di...
In daily life, mixed data patterns are often found, namely, those that change at a certain sub-inter...
By using prior information about the regression curve we propose new nonparametric regression estima...
This paper proposes a test for the equality of nonparametric regression curves that does not depend ...
Given data from a sample of noisy curves, we consider a nonlinear parametric regression model with u...
This paper is an overview of nonparemetric curve estimation, especially oriented to applications in ...
We propose a method of analyzing collections of related curves in which the individual curves are mo...
This paper proposes a new nonparametric test for the hypothesis that the regression functions in two...
A nonparametric function estimation method called SUPPORT ("Smoo- thed and Unsmoothed Piecewise-Poly...
We consider nonparametric estimation of a regression curve when the data are observed with multiplic...
In the paper the procedure for selecting the best nonparametric model for a given problem of regress...
Many people who do data analysis take only a few classes in statistics and hence, in general, get in...
Data-analytic approaches to regression problems, arising from many scientific disciplines are descri...
SIGLEAvailable from Bibliothek des Instituts fuer Weltwirtschaft, ZBW, Duesternbrook Weg 120, D-2410...
In this paper a new estimator for nonparametric regression is suggested. It is a smoothing-splines-l...
This paper presents and discusses procedures for estimating regression curves when regressors are di...
In daily life, mixed data patterns are often found, namely, those that change at a certain sub-inter...
By using prior information about the regression curve we propose new nonparametric regression estima...
This paper proposes a test for the equality of nonparametric regression curves that does not depend ...
Given data from a sample of noisy curves, we consider a nonlinear parametric regression model with u...
This paper is an overview of nonparemetric curve estimation, especially oriented to applications in ...
We propose a method of analyzing collections of related curves in which the individual curves are mo...
This paper proposes a new nonparametric test for the hypothesis that the regression functions in two...
A nonparametric function estimation method called SUPPORT ("Smoo- thed and Unsmoothed Piecewise-Poly...
We consider nonparametric estimation of a regression curve when the data are observed with multiplic...
In the paper the procedure for selecting the best nonparametric model for a given problem of regress...
Many people who do data analysis take only a few classes in statistics and hence, in general, get in...
Data-analytic approaches to regression problems, arising from many scientific disciplines are descri...