| Literature DB >> 28900804 |
Francesco Bartolucci1, Alessio Farcomeni2, Luisa Scaccia3.
Abstract
We propose a nonparametric item response theory model for dichotomously-scored items in a Bayesian framework. The model is based on a latent class (LC) formulation, and it is multidimensional, with dimensions corresponding to a partition of the items in homogenous groups that are specified on the basis of inequality constraints among the conditional success probabilities given the latent class. Moreover, an innovative system of prior distributions is proposed following the encompassing approach, in which the largest model is the unconstrained LC model. A reversible-jump type algorithm is described for sampling from the joint posterior distribution of the model parameters of the encompassing model. By suitably post-processing its output, we then make inference on the number of dimensions (i.e., number of groups of items measuring the same latent trait) and we cluster items according to the dimensions when unidimensionality is violated. The approach is illustrated by two examples on simulated data and two applications based on educational and quality-of-life data.Keywords: Markov chain Monte Carlo; cluster analysis; encompassing priors; item response theory; reversible-jump algorithm; stochastic partitions; unidimensionality
Mesh:
Year: 2017 PMID: 28900804 DOI: 10.1007/s11336-017-9576-7
Source DB: PubMed Journal: Psychometrika ISSN: 0033-3123 Impact factor: 2.500