Açımlayıcı Faktör Analizinde Faktör Sayısı Belirleme Yöntemlerinin Çeşitli Koşullar Altında Karşılaştırılması
Özet
In this study, it was aimed to compare the factor retention methods (MAP, MAP4, Hull, EGATMFG and Factor Forest) in terms of convergence rate, percent correct and relative bias
value. In this Monte Carlo simulation study, simulation conditions were determined as
sample size (200, 500, 1000), number of categories of item scores (3, 5 and 7), test length
(8 and 16 items), measurement model (unidimensional, orthogonal two-factors and oblique
two-factors), distribution of item scores (right-skewed, normal, left-skewed) and average
factor loading (0.40, 0.60 and 0.80). According to the fully crossed simulation design, 1000
replications were performed for each of the 486 simulation conditions. As a result of the
research, it was determined that none of the methods have convergence problem. It was
determined that the increase in sample size and average factor loading had a positive effect
on percent correct and relative bias values. Differences were observed between the
methods in identifying unidimensional and two-factors. The conditions under which the
methods predicted with high accuracy and less bias differed from each other. This situation
pointed out the importance of using more than one factor retention method and examining
the compatibility of the methods. There is no single method that works accurately and
unbiased under all conditions, therefore methods that work well for different conditions have
been discussed.