Finite mixture distributions, sequential likelihood and the EM algorithm


Autoria(s): Arcidiacono, P; Jones, JB
Data(s)

20/06/2003

Resumo

A popular way to account for unobserved heterogeneity is to assume that the data are drawn from a finite mixture distribution. A barrier to using finite mixture models is that parameters that could previously be estimated in stages must now be estimated jointly: using mixture distributions destroys any additive separability of the log-likelihood function. We show, however, that an extension of the EM algorithm reintroduces additive separability, thus allowing one to estimate parameters sequentially during each maximization step. In establishing this result, we develop a broad class of estimators for mixture models. Returning to the likelihood problem, we show that, relative to full information maximum likelihood, our sequential estimator can generate large computational savings with little loss of efficiency.

Formato

933 - 946

application/pdf

Identificador

Econometrica, 2003, 71 (3), pp. 933 - 946

0012-9682

http://hdl.handle.net/10161/1873

Idioma(s)

en_US

Relação

Econometrica

Tipo

Journal Article