AbstractIn principal components analysis, the influence function and local influence approaches have been well established as important diagnostic tools. In this article, we first review the generalized local influence approach in the restricted likelihood framework. We then apply the restricted likelihood local influence diagnostic in the common principal components analysis. One special part of this local influence result is an elliptical norm of the empirical influence function, which is comparable to the deletion diagnostic scaled by the same matrix which requires iterative solutions for parameter estimates with every case deleted. Local influence diagnostics are constructed by some basic building blocks that are obtained directly from ...
In the finite-dimensional setting, Li and Chen (1985) proposed a method for principal components ana...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
In principal components analysis, the influence function and local influence approaches have been we...
In many medical and health studies, high-dimensional data are often encountered. Principal component...
In restricted statistical models, since the first derivatives of the likelihood displacement are oft...
The influence of observations on the outcome of an analysis is of importance in statistical data ana...
The likelihood-based influence analysis methodology introduced in Cook (1986) uses a parameterised s...
As a generalization of the canonical correlation analysis to k random vectors, the common canonical ...
The local influence method has proven to be a useful and powerful tool for detecting influential obs...
Suggested diagnostics for influence on the estimated regression coefficients in a general-ized linea...
The local influence method is adapted to canonical correlation analysis for the purpose of investiga...
Principal Component Analysis (PCA) is an important tool in multivariate analysis, in particular when...
Statistical analyses are usually based on models. However, a model is almost always only an approx- ...
AbstractThe multivariate probit model is very useful for analyzing correlated multivariate dichotomo...
In the finite-dimensional setting, Li and Chen (1985) proposed a method for principal components ana...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
In principal components analysis, the influence function and local influence approaches have been we...
In many medical and health studies, high-dimensional data are often encountered. Principal component...
In restricted statistical models, since the first derivatives of the likelihood displacement are oft...
The influence of observations on the outcome of an analysis is of importance in statistical data ana...
The likelihood-based influence analysis methodology introduced in Cook (1986) uses a parameterised s...
As a generalization of the canonical correlation analysis to k random vectors, the common canonical ...
The local influence method has proven to be a useful and powerful tool for detecting influential obs...
Suggested diagnostics for influence on the estimated regression coefficients in a general-ized linea...
The local influence method is adapted to canonical correlation analysis for the purpose of investiga...
Principal Component Analysis (PCA) is an important tool in multivariate analysis, in particular when...
Statistical analyses are usually based on models. However, a model is almost always only an approx- ...
AbstractThe multivariate probit model is very useful for analyzing correlated multivariate dichotomo...
In the finite-dimensional setting, Li and Chen (1985) proposed a method for principal components ana...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...