Exploring Discrete Factor Analysis with the discFA Package in R
Abstract
Literature suggested that using the traditional factor analysis for the count
data may be inappropriate. With that in mind, discrete factor analysis builds
on fitting systems of dependent discrete random variables to data. The data
should be in the form of non-negative counts. Data may also be truncated at
some positive integer value. The discFA package in R allows for two
distributions: Poisson and Negative Binomial, in combination with possible zero
inflation and possible truncation, hence, eight different alternatives. A
forward search algorithm is employed to find the model optimal factor model
with the lowest AIC. Several different illustrative examples from psychology,
agriculture, car industry, and a simulated data will be analyzed at the end.