This book expounds the principle and related applications of nonlinear principal component analysis (PCA), which is useful method to analyze mixed measurement levels data. In the part dealing with the principle, after a brief introduction of ordinary PCA, a PCA for categorical data (nominal and ordinal) is introduced as nonlinear PCA, in which an optimal scaling technique is used to quantify the categorical variables. The alternating least squares (ALS) is the main algorithm in the method. Multiple correspondence analysis (MCA), a special case of nonlinear PCA, is also introduced. All formulations in these methods are integrated in the same manner as matrix operations. Because any measurement levels data can be treated consistently as numer...
Principal components analysis (PCA) is a multivariate ordination technique used to display patterns ...
Two new methods to select groups of variables have been developed for multiblock data: "Group Sparse...
In statistical practice multicollinearity of predictor variables is rather the rule than the excepti...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
Abstract The idea of summarizing the information contained in a large number of variables by a small...
We discuss several forms of Nonlinear Principal Component Analysis (NLPCA) that have been proposed o...
In this chapter we present a technique for the analysis of customer satisfaction based on a dimensio...
In the social and behavioral sciences, data sets often do not meet the assumptions of traditional an...
Principal components analysis (PCA) for numerical variables and multiple correspondence analysis (MC...
Principal Component Analysis (PCA) is one of the most popular techniques in multivariate statistica...
Principal component analysis (PCA), also known as proper orthogonal decomposition or Karhunen-Loeve ...
The principal component analysis (PCA) is a kind of algorithms in biometrics. It is a statistics tec...
This paper summarizes a new concept to determine principal curves for nonlinear principal component ...
Principal Component Analysis (PCA) is viewed as a descriptive multivariate method for a set of n obs...
In principal components analysis (PCA) of mixture of quantitative and qual-itative data, we require ...
Principal components analysis (PCA) is a multivariate ordination technique used to display patterns ...
Two new methods to select groups of variables have been developed for multiblock data: "Group Sparse...
In statistical practice multicollinearity of predictor variables is rather the rule than the excepti...
Principal Component Analysis (PCA from now on) is a multivariate data analysis technique used for ma...
Abstract The idea of summarizing the information contained in a large number of variables by a small...
We discuss several forms of Nonlinear Principal Component Analysis (NLPCA) that have been proposed o...
In this chapter we present a technique for the analysis of customer satisfaction based on a dimensio...
In the social and behavioral sciences, data sets often do not meet the assumptions of traditional an...
Principal components analysis (PCA) for numerical variables and multiple correspondence analysis (MC...
Principal Component Analysis (PCA) is one of the most popular techniques in multivariate statistica...
Principal component analysis (PCA), also known as proper orthogonal decomposition or Karhunen-Loeve ...
The principal component analysis (PCA) is a kind of algorithms in biometrics. It is a statistics tec...
This paper summarizes a new concept to determine principal curves for nonlinear principal component ...
Principal Component Analysis (PCA) is viewed as a descriptive multivariate method for a set of n obs...
In principal components analysis (PCA) of mixture of quantitative and qual-itative data, we require ...
Principal components analysis (PCA) is a multivariate ordination technique used to display patterns ...
Two new methods to select groups of variables have been developed for multiblock data: "Group Sparse...
In statistical practice multicollinearity of predictor variables is rather the rule than the excepti...