Mixture models are regularly used in density estimation applications, but the
problem of estimating the mixing distribution remains a challenge.
Nonparametric maximum likelihood produce estimates of the mixing distribution
that are discrete, and these may be hard to interpret when the true mixing
distribution is believed to have a smooth density. In this paper, we
investigate an algorithm that produces a sequence of smooth estimates that has
been conjectured to converge to the nonparametric maximum likelihood estimator.
Here we give a rigorous proof of this conjecture, and propose a new data-driven
stopping rule that produces smooth near-maximum likelihood estimates of the
mixing density, and simulations demonstrate the quality empirical performance
of this estimator.Comment: 11 pages, 3 figure