Abstract
Factor analysis is a powerful tool to identify the common characteristics among a set of variables that are measured on a continuous scale. In the context of factor analysis for non-continuous-type data, most applications are restricted to item response data only. We extend the factor model to accommodate ranked data. The Monte Carlo expectation-maximization algorithm is used for parameter estimation at which the E-step is implemented via the Gibbs sampler. An analysis based on both complete and incomplete ranked data (e.g. rank the top q out of k items) is considered. Estimation of the factor scores is also discussed. The method proposed is applied to analyse a set of incomplete ranked data that were obtained from a survey that was carried out in GuangZhou, a major city in mainland China, to investigate the factors affecting people's attitude towards choosing jobs. © 2005 Royal Statistical Society.
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Yu, P. L. H., Lam, K. F., & Lo, S. M. (2005). Factor analysis for ranked data with application to a job selection attitude survey. Journal of the Royal Statistical Society. Series A: Statistics in Society, 168(3), 583–597. https://doi.org/10.1111/j.1467-985X.2005.00363.x
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