An efficient Fisher-scoring algorithm for fitting latent class models with individual covariates
Abstract
For latent class models where the class weights depend on individual covariates, we derive a simple expression for computing the score vector and a convenient hybrid between the observed and the expected information matrices which is always positive defnite. These ingredients, combined with a maximization algorithm based on line search, provides an efficient tool for maximum likelihood estimation. In particular, the proposed algorithm is such that the log-likelihood never decreases from one step to the next and the choice of starting values is not crucial for reaching a local maximum. We show how the same algorithm may be used for numerical investigation of the effect of model mispecifications. An application to education transmission is used as an illustration.
Cite
@article{arxiv.1301.7271,
title = {An efficient Fisher-scoring algorithm for fitting latent class models with individual covariates},
author = {Antonio Forcina},
journal= {arXiv preprint arXiv:1301.7271},
year = {2015}
}
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