Consider the problem of estimating the mean function underlying a set of noisy data. Least squares is appropriate if the error distribution of the noise is Gaussian, and if there is good reason to believe that the underlying function has some particular form. But what if the previous two assumptions fail to hold? In this regression setting, a robust method is one that is resistant against outliers, while a nonparametric method is one that allows the data to dictate the shape of the curve (rather than choosing the best parameters for a fit from a particular family). Although it is easy to find estimators that are either robust or nonparametric, the literature reveals very few that are both. In this thesis, a new method is proposed that uses ...
Abstract—Nonparametric methods are widely applicable to statistical inference problems, since they r...
Thesis title: Flexibility, Robustness and Discontinuity in Nonparametric Regression Approaches Autho...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
Nonparametric methods are widely applicable to statistical learn-ing problems, since they rely on a ...
Nonparametric regression methods provide an alternative approach to parametric estimation that requi...
In the present work, we evaluate the performance of the classical parametric estimation method "ordi...
In this paper we define a robust conditional location functional without requiring any moment condit...
Abstract: Robust methods are little applied (although much studied by statisticians). We monitor ver...
This dissertation examines the robust regression methods. The primary purpose of this work is to pro...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
Regression analysis is one of the most extensively used statistical tools applied across different f...
The variability and accuracy of two recently published semiparametric model-robust regression techni...
Confidence intervals are developed and assessed to study the variability and accuracy of two recentl...
In this paper we describe two approaches to nonparametric regression. First, we consider the nearest...
The present study investigates parameter estimation under the simple linear regression model for sit...
Abstract—Nonparametric methods are widely applicable to statistical inference problems, since they r...
Thesis title: Flexibility, Robustness and Discontinuity in Nonparametric Regression Approaches Autho...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
Nonparametric methods are widely applicable to statistical learn-ing problems, since they rely on a ...
Nonparametric regression methods provide an alternative approach to parametric estimation that requi...
In the present work, we evaluate the performance of the classical parametric estimation method "ordi...
In this paper we define a robust conditional location functional without requiring any moment condit...
Abstract: Robust methods are little applied (although much studied by statisticians). We monitor ver...
This dissertation examines the robust regression methods. The primary purpose of this work is to pro...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
Regression analysis is one of the most extensively used statistical tools applied across different f...
The variability and accuracy of two recently published semiparametric model-robust regression techni...
Confidence intervals are developed and assessed to study the variability and accuracy of two recentl...
In this paper we describe two approaches to nonparametric regression. First, we consider the nearest...
The present study investigates parameter estimation under the simple linear regression model for sit...
Abstract—Nonparametric methods are widely applicable to statistical inference problems, since they r...
Thesis title: Flexibility, Robustness and Discontinuity in Nonparametric Regression Approaches Autho...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...