Consistent Empirical Bayes Estimation of the Mean of a Mixing Distribution with Applications to Treatment of Nonresponse
Abstract
We consider a Nonparametric Empirical Bayes (NPEB) framework. Let Yi be random variables, Yi f(y|θi), i=1,...,n, where θi G, and θi ∈ are independent. The variables Yi are conditionally independent given θi, \; i=1,...,n. The mixing distribution G is unknown and assumed to belong to a nonparametric class \G \. Let η(θ) be a function of θ. We address the problem of consistently estimating EG η(θ) ηG. This problem becomes particularly challenging when G cannot be consistently estimated from the observed data. We motivate this problem, especially in contexts involving nonresponse and missing data. For such cases, a consistent estimation method is suggested and its performance is demonstrated through simulations.
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