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Component profiles. For your second question, my initial reaction is that I wouldn’t expect the profiles to look similar, even if you estimate the same number of clusters. Besides the label switching problem, the two models use different representations of the latent clustering. In the finite mixture regression (FMRM), the parametrization of the weights is symmetric, while the stick-breaking uses a sequential representation. I think this difference in parametrization induces different priors on the weights, and if you have similar profiles, that would be more by chance.
Good luck!
Sally
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