This paper summarizes a new concept to determine principal curves for nonlinear principal component analysis (PCA). The concept is explained within the framework of the Hastie and Stuetzle algorithm and utilizes spline functions. The paper proposes a new algorithm and shows that it provides an efficient method to extract underlying information from measured data. The new method is geometrically simple and computationally expedient, as the number of unknown parameters increases linearly with the analyzed variable set. The utility of the algorithm is exemplified in two examples
Linear Principal Component Analysis (LPCA) has been applied in multivariate analysis because of its ...
Principal components are a well established tool in dimension reduction. The extension to principal ...
This paper describes a new nonlinear projection method. The aim is to design a user-friendly method,...
Nonlinear Principal Components Analysis (PCA) addresses the nonlinearity problem by relaxing the lin...
This book expounds the principle and related applications of nonlinear principal component analysis ...
Abstract The idea of summarizing the information contained in a large number of variables by a small...
International audienceThe use of principal component analysis (PCA) for process monitoring applicati...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
We introduce and discuss Principal Component Analysis (FPCA) of curves, using only relatively simple...
All known approaches to nonlinear principal components are based on minimizing a quadratic loss, whi...
Two quite different forms of nonlinear principal component analysis have been proposed in the litera...
This paper suggests a method to generalise principal component analysis by transforming in adaptive ...
Finding low-dimensional approximations to high-dimensional data is one of the most important topics ...
We propose a novel algorithm based on Principal Component Analysis (PCA). First, we present an inter...
A new method for performing a nonlinear form of Principal Component Analysis is proposed. By the use...
Linear Principal Component Analysis (LPCA) has been applied in multivariate analysis because of its ...
Principal components are a well established tool in dimension reduction. The extension to principal ...
This paper describes a new nonlinear projection method. The aim is to design a user-friendly method,...
Nonlinear Principal Components Analysis (PCA) addresses the nonlinearity problem by relaxing the lin...
This book expounds the principle and related applications of nonlinear principal component analysis ...
Abstract The idea of summarizing the information contained in a large number of variables by a small...
International audienceThe use of principal component analysis (PCA) for process monitoring applicati...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
We introduce and discuss Principal Component Analysis (FPCA) of curves, using only relatively simple...
All known approaches to nonlinear principal components are based on minimizing a quadratic loss, whi...
Two quite different forms of nonlinear principal component analysis have been proposed in the litera...
This paper suggests a method to generalise principal component analysis by transforming in adaptive ...
Finding low-dimensional approximations to high-dimensional data is one of the most important topics ...
We propose a novel algorithm based on Principal Component Analysis (PCA). First, we present an inter...
A new method for performing a nonlinear form of Principal Component Analysis is proposed. By the use...
Linear Principal Component Analysis (LPCA) has been applied in multivariate analysis because of its ...
Principal components are a well established tool in dimension reduction. The extension to principal ...
This paper describes a new nonlinear projection method. The aim is to design a user-friendly method,...