Factor analysis is often applied in empirical data analysis to explore data structures. Due to its theoretical construction, factor analysis is suitable for the study of linear relationships, and adequacy of a factor analysis solution is often assessed with linear correlation related measures. This paper aims to contribute to literature by examining whether linear factor structures can correspond to multiple requirements simultaneously. Theoretical and simulation results also suggest that under the applied assumptions the examined optimality criteria can not be met simultaneously. These criteria are related to the determinant of the correlation matrix (that should be minimized so that it is close to zero), the determinant of the anti-image ...
Factor analysis is a statistical technique, the aim of which is to simplify a complex data set by re...
The consequences of factoring alternative correlation matrices are investigated assuming ordinal sca...
This dissertation introduces a new method, Pratt's measure matrix, for interpreting multidimensional...
Factor analysis is often applied in empirical data analysis to explore data structures. Due to its t...
Linear factor structures often exist in empirical data, and they can be mapped by factor analysis. I...
The uniqueness of mathematics in that it is a science complete in itself makes it possible to apply ...
The relationship of sample size to number of variables in the use of factor analysis has been treate...
From the literature three types of predictors for factor scores are available. These are characteriz...
This study is intended to provide researchers with empirically derived guidelines for conducting fac...
The object of research is the task of constructing a linear regression model that arises in the proc...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
Factor structures obtained by exploratory factor analysis (EFA) often turn out to fit poorly in conf...
summary:The author shows that a decomposition of a covariance matrix $\bold{\sum = AA'}$ implies the...
Under the null hypothesis, component loadings are linear combinations of factor loadings, and vice v...
The paper examines the suitability of the Kaiser-Meier Olkin’s Measure of Sampling Adequacy (KMO) as...
Factor analysis is a statistical technique, the aim of which is to simplify a complex data set by re...
The consequences of factoring alternative correlation matrices are investigated assuming ordinal sca...
This dissertation introduces a new method, Pratt's measure matrix, for interpreting multidimensional...
Factor analysis is often applied in empirical data analysis to explore data structures. Due to its t...
Linear factor structures often exist in empirical data, and they can be mapped by factor analysis. I...
The uniqueness of mathematics in that it is a science complete in itself makes it possible to apply ...
The relationship of sample size to number of variables in the use of factor analysis has been treate...
From the literature three types of predictors for factor scores are available. These are characteriz...
This study is intended to provide researchers with empirically derived guidelines for conducting fac...
The object of research is the task of constructing a linear regression model that arises in the proc...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
Factor structures obtained by exploratory factor analysis (EFA) often turn out to fit poorly in conf...
summary:The author shows that a decomposition of a covariance matrix $\bold{\sum = AA'}$ implies the...
Under the null hypothesis, component loadings are linear combinations of factor loadings, and vice v...
The paper examines the suitability of the Kaiser-Meier Olkin’s Measure of Sampling Adequacy (KMO) as...
Factor analysis is a statistical technique, the aim of which is to simplify a complex data set by re...
The consequences of factoring alternative correlation matrices are investigated assuming ordinal sca...
This dissertation introduces a new method, Pratt's measure matrix, for interpreting multidimensional...