We present a new MATLAB toolbox under Windows and Linux for nonparametric regression estimation based on the statistical library for least squares support vector machines (StatLSSVM). The StatLSSVM toolbox is written so that only a few lines of code are necessary in order to perform standard nonparametric regression, regression with correlated errors and robust regression. In addition, construction of additive models and pointwise or uniform confidence intervals are also supported. A number of tuning criteria such as classical cross-validation, robust cross-validation and cross-validation for correlated errors are available. Also, minimization of the previous criteria is available without any user interaction
This book presents a practical approach to nonparametric statistical analysis and provides comprehen...
A new approach to the nonparametric spectral estimation on the basis of the support vector method (...
A new approach to the nonparametric spectral estimation on the basis of the support vector method (...
We present a new MATLAB toolbox under Windows and Linux for nonparametric regression estimation base...
Nonparametric regression is a very popular tool for data analysis because thesetechniques impose few...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
In this paper we describe the Xlisp-Stat version of the sm library, a software for applying nonparam...
This thesis presented a useful tool in regression. Nonparametric linear regression techniques were d...
In this paper we describe the Xlisp-Stat version of the sm library, a software for applying nonparam...
In this paper we describe the Xlisp-Stat version of the sm library, a software for applying nonpara-...
Nonparametric regression techniques are often sensitive to the presence of correlation in the errors...
This book presents a practical approach to nonparametric statistical analysis and provides comprehen...
A new approach to the nonparametric spectral estimation on the basis of the support vector method (...
A new approach to the nonparametric spectral estimation on the basis of the support vector method (...
We present a new MATLAB toolbox under Windows and Linux for nonparametric regression estimation base...
Nonparametric regression is a very popular tool for data analysis because thesetechniques impose few...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
The Regression toolbox for MATLAB is a collection of MATLAB modules for calculating regression multi...
In this paper we describe the Xlisp-Stat version of the sm library, a software for applying nonparam...
This thesis presented a useful tool in regression. Nonparametric linear regression techniques were d...
In this paper we describe the Xlisp-Stat version of the sm library, a software for applying nonparam...
In this paper we describe the Xlisp-Stat version of the sm library, a software for applying nonpara-...
Nonparametric regression techniques are often sensitive to the presence of correlation in the errors...
This book presents a practical approach to nonparametric statistical analysis and provides comprehen...
A new approach to the nonparametric spectral estimation on the basis of the support vector method (...
A new approach to the nonparametric spectral estimation on the basis of the support vector method (...