Most sample surveys are multivariate and many lend themselves to multivariate methods of analysis. The most usual mode of such analysis is a standard statistical package, such as BMDP or SPSS, in which the multivariate analyses are based on the underlying assumption that the data are generated as independent observations from a common probability distribution. This assumption ignores the sample selection procedure involved in the survey, which leads to the following basic questions. What effects can the sample design have on methods of multivariate analysis? How should such effects be taken into account? This article considers the case of principal component analysis and, in particular, the point estimation of the eigenvalues and eigenvecto...
This work aims at performing Functional Principal Components Analysis (FPCA) with Horvitz-Thompson e...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Survey researchers often design stratified sampling strategies to target specific subpopulations wit...
Multivariate methods are used widely with sample survey data, yet the assumption of independently an...
A common practice in many scientific disciplines is to take measurements on several different variab...
ABSTRACT: Many methods have been proposed to determine the number of relivant components in principa...
This thesis is concerned with the problem of selection of important variables in Principal Component...
The main objective of this thesis is to develop procedures for making inferences about the eigenvalu...
When the data are high dimensional, widely used multivariate statistical methods such as principal c...
The design effect- the ratio of the variance of a statistic with a complex sample design to the vari...
Determining how many factors to retain as expression of an underlying structure is an important topi...
The present study discusses retention criteria for principal components analysis (PCA) applied to Li...
This paper demonstrates the effect of independent noise in principal components of k normally distri...
When sample survey data with complex design (stratification, clustering, unequal selection or inclus...
The present study discusses retention criteria for principal components analysis (PCA) applied to Li...
This work aims at performing Functional Principal Components Analysis (FPCA) with Horvitz-Thompson e...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Survey researchers often design stratified sampling strategies to target specific subpopulations wit...
Multivariate methods are used widely with sample survey data, yet the assumption of independently an...
A common practice in many scientific disciplines is to take measurements on several different variab...
ABSTRACT: Many methods have been proposed to determine the number of relivant components in principa...
This thesis is concerned with the problem of selection of important variables in Principal Component...
The main objective of this thesis is to develop procedures for making inferences about the eigenvalu...
When the data are high dimensional, widely used multivariate statistical methods such as principal c...
The design effect- the ratio of the variance of a statistic with a complex sample design to the vari...
Determining how many factors to retain as expression of an underlying structure is an important topi...
The present study discusses retention criteria for principal components analysis (PCA) applied to Li...
This paper demonstrates the effect of independent noise in principal components of k normally distri...
When sample survey data with complex design (stratification, clustering, unequal selection or inclus...
The present study discusses retention criteria for principal components analysis (PCA) applied to Li...
This work aims at performing Functional Principal Components Analysis (FPCA) with Horvitz-Thompson e...
The Eigenstrat method, based on principal components analysis (PCA), is commonly used both to quanti...
Survey researchers often design stratified sampling strategies to target specific subpopulations wit...