For an arbitrary one parameter exponential family density it is shown how to construct a mixing distribution (prior) on the parameter in such a way that the resulting mixture distribution is a two (or more) parameter exponen- tial family. Reweighted infinitely divisible distributions are shown to be the parametric mixing distributions for which this occurs. As an illustration conditions are given under which a parametric mixture of negative exponen- tials is in the exponential family. Properties of the posterior are given, including linearity of the posterior mean in the natural parameter. For the discrete case a class of simply-computed yet fully-efficient least-squares esti- mators is given. A Poisson example is used to demonstrate the strengths and weaknesses of the approach.
CITATION STYLE
Lindsay, B. G. (2007). Exponential Family Mixture Models (with Least-Squares Estimators). The Annals of Statistics, 14(1). https://doi.org/10.1214/aos/1176349845
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