A mixture model for longitudinal partially ranked data

Humphreys, Keith orcid iconORCID: 0000-0002-3756-4710, Peelo, Moira orcid iconORCID: 0000-0002-3756-4710, Wilson, Alison orcid iconORCID: 0000-0002-3756-4710 and Anderson, Jill (2014) A mixture model for longitudinal partially ranked data. Communications in Statistics - Theory and Methods .

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Abstract

This paper discusses the use of mixture models in the analysis of longitudinal partially ranked data, where respondents, for example, choose only the preferred and second preferred out of a set of items. To model such data we convert it to a set of paired comparisons. Covariates can be incorporated into the model. We use a nonparametric mixture to account for unmeasured variability in individuals over time. The resulting multivalued mass points can be interpreted as latent classes of the items. The work is illustrated by two questions on (post)materialism in three sweeps<br/>of the British Household Panel Survey


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