In this study, we examined the relationship between the independent x and dependent y variables, and the axis of this thesis is focused on the method of how we can estimate the regression function, m(x), where m(x) = E(Y │ X = x). We used nonparametric estimation methods, using the local linear (LL) and the NadarayaWatson (NW) kernel estimators, to estimate the regression function, we derived the strong consistency and the asymptotic normality. Also, the optimal problem of bandwidth selection is studied for the two estimators. A theoretical comparison between the two estimators was given. The performance of the two estimators in estimating the regression function was tested using two simulated data. Finally the comparison results proved tha...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
dth: 0px; "> Given a data set (xi , yi ) and connecting between xi and yi be assumed to follownon...
This paper is devoted to two important kernel-based tools of nonlinear regression: the Nadaraya-Wats...
In this paper we propose a variable bandwidth kernel regression estimator for i.i.d. observations in...
We present a rather thorough investigation of the use of kernel-based nonparametric estimators of th...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
The conditional probability density function plays an important role in statistics. It describes the...
Automated bandwidth selection methods for nonparametric regression break down in the presence of cor...
In a regression problem the relationship between an explanatory variable X and a response variable Y...
Regression analysis is one of statistical analysis usually used to investigate the pattern of functi...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
Abstract—We consider a random design model based on independent and identically distributed pairs of...
This paper presents the bandwidth selection methods for local polynomial regression with Normal, Epa...
In this paper, the proposed estimator for the unknown nonparametric regression function is a Nadarya...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
dth: 0px; "> Given a data set (xi , yi ) and connecting between xi and yi be assumed to follownon...
This paper is devoted to two important kernel-based tools of nonlinear regression: the Nadaraya-Wats...
In this paper we propose a variable bandwidth kernel regression estimator for i.i.d. observations in...
We present a rather thorough investigation of the use of kernel-based nonparametric estimators of th...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
The conditional probability density function plays an important role in statistics. It describes the...
Automated bandwidth selection methods for nonparametric regression break down in the presence of cor...
In a regression problem the relationship between an explanatory variable X and a response variable Y...
Regression analysis is one of statistical analysis usually used to investigate the pattern of functi...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
Traditionally, non-parametric regression research has been centered on the mean estimation problem. ...
Abstract—We consider a random design model based on independent and identically distributed pairs of...
This paper presents the bandwidth selection methods for local polynomial regression with Normal, Epa...
In this paper, the proposed estimator for the unknown nonparametric regression function is a Nadarya...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
dth: 0px; "> Given a data set (xi , yi ) and connecting between xi and yi be assumed to follownon...
This paper is devoted to two important kernel-based tools of nonlinear regression: the Nadaraya-Wats...