The paper examines the suitability of the Kaiser-Meier Olkin’s Measure of Sampling Adequacy (KMO) as a measure of suitability for factor analysis for a number of selected multivariate datasets. It first explores a systematic approach that determines the initial dimensionality of the dataset. It then identifies two sets of indicators that could create distortions in assessing factor-suitability: variables that do not influence any dimension; and those that influence multiple dimensions. Dimensionality is also affected by negatively correlated indicators leading to a small suitability measure, which portrays such datasets as unsuitable for factor analysis. It is found that for KMO to be high, the zero- and first-order partial correlations mus...
This article examines effects of sample size and other design features on correspondence between fac...
Factor analysis is often applied in empirical data analysis to explore data structures. Due to its t...
The purpose of this study is to evaluate the performance of three commonly used model fit indices wh...
This paper undertakes a systematic assessment of the extent to which factor analysis the correct num...
This paper undertakes a systematic assessment of the extent to which factor analysis the correct num...
This chapter focuses on formal criteria to assess the dimensionality for exploratory factor modellin...
This paper undertakes a systematic assessment of the extent to which factor analysis the correct num...
<div><p>This paper undertakes a systematic assessment of the extent to which factor analysis the cor...
An important application of multivariate analysis is the estimation of the underlying dimensions of ...
The sample size dichotomized was related to the measure of sampling adequacy, considering the explan...
Linear factor structures often exist in empirical data, and they can be mapped by factor analysis. I...
<p>Kaiser-Meyer-Olkin measures of sampling adequacy for the seven factors retained after principal c...
The distributional characteristics of Kaiser\u27s Measure of Sampling Adequacy (MSA) were investigat...
In exploratory factor analysis (EFA), most popular methods for dimensionality assessment such as the...
Exploratory factor analysis (EFA) is commonly used to determine the dimensionality of continuous dat...
This article examines effects of sample size and other design features on correspondence between fac...
Factor analysis is often applied in empirical data analysis to explore data structures. Due to its t...
The purpose of this study is to evaluate the performance of three commonly used model fit indices wh...
This paper undertakes a systematic assessment of the extent to which factor analysis the correct num...
This paper undertakes a systematic assessment of the extent to which factor analysis the correct num...
This chapter focuses on formal criteria to assess the dimensionality for exploratory factor modellin...
This paper undertakes a systematic assessment of the extent to which factor analysis the correct num...
<div><p>This paper undertakes a systematic assessment of the extent to which factor analysis the cor...
An important application of multivariate analysis is the estimation of the underlying dimensions of ...
The sample size dichotomized was related to the measure of sampling adequacy, considering the explan...
Linear factor structures often exist in empirical data, and they can be mapped by factor analysis. I...
<p>Kaiser-Meyer-Olkin measures of sampling adequacy for the seven factors retained after principal c...
The distributional characteristics of Kaiser\u27s Measure of Sampling Adequacy (MSA) were investigat...
In exploratory factor analysis (EFA), most popular methods for dimensionality assessment such as the...
Exploratory factor analysis (EFA) is commonly used to determine the dimensionality of continuous dat...
This article examines effects of sample size and other design features on correspondence between fac...
Factor analysis is often applied in empirical data analysis to explore data structures. Due to its t...
The purpose of this study is to evaluate the performance of three commonly used model fit indices wh...