Title of article :
A skew-normal factor model for the analysis of student satisfaction towards university courses
Author/Authors :
Angela Montanari & Cinzia Viroli، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Classical factor analysis relies on the assumption of normally distributed factors that guarantees the model
to be estimated via the maximum likelihood method. Even when the assumption of Gaussian factors is not
explicitly formulated and estimation is performed via the iterated principal factors’ method, the interest
is actually mainly focussed on the linear structure of the data, since only moments up to the second
ones are involved. In many real situations, the factors could not be adequately described by the first
two moments only. For example, skewness characterizing most latent variables in social analysis can be
properly measured by the third moment: the factors are not normally distributed and covariance is no longer
a sufficient statistic. In this work we propose a factor model characterized by skew-normally distributed
factors. Skew-normal refers to a parametric class of probability distributions, that extends the normal
distribution by an additional shape parameter regulating the skewness. The model estimation can be solved
by the generalized EM algorithm, in which the iterative Newthon–Raphson procedure is needed in the
M-step to estimate the factor shape parameter. The proposed skew-normal factor analysis is applied to
the study of student satisfaction towards university courses, in order to identify the factors representing
different aspects of the latent overall satisfaction
Keywords :
latent variables , orthogonal rotations , EMalgorithm , Gauss–Hermite quadrature points , Factor Analysis , Skew-normal distribution
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS