
doi: 10.3758/bf03193157
pmid: 17695354
Latent-class hierarchical multinomial models are an important extension of the widely used family of multinomial processing tree models, in that they allow for testing the parameter homogeneity assumption and provide a framework for modeling parameter heterogeneity. In this article, the computer program HMMTree is introduced as a means of implementing latent-class hierarchical multinomial processing tree models. HMMTree computes parameter estimates, confidence intervals, and goodness-of-fit statistics for such models, as well as the Fisher information, expected category means and variances, and posterior probabilities for class membership. A brief guide to using the program is provided.
Models, Statistical, Psychology, Experimental, Data Interpretation, Statistical, Models, Psychological, Algorithms, Software
Models, Statistical, Psychology, Experimental, Data Interpretation, Statistical, Models, Psychological, Algorithms, Software
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