Key points are not available for this paper at this time.
We wish to estimate the probability density g (y) that produced an observed random sample of vectors y₁, y₂, , yₙ. Estimates of g (y) are traditionally constructed in two quite different ways: by maximum likelihood fitting within some parametric family such as the normal or by nonparametric methods such as kernel density estimation. These two methods can be combined by putting an exponential family "through" a kernel estimator. These are the specially designed exponential families mentioned in the title. Poisson regression methods play a major role in calculations concerning such families.
Efron et al. (Sun,) studied this question.