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arxiv: 1708.00099 · v1 · pith:OKKRWFBMnew · submitted 2017-07-31 · 📊 stat.ME

Mixture Data-Dependent Priors

classification 📊 stat.ME
keywords classdata-dependentmixturepriorsapproachdatafirstinference
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We propose a two-component mixture of a noninformative (diffuse) and an informative prior distribution, weighted through the data in such a way to prefer the first component if a prior-data conflict arises. The data-driven approach for computing the mixture weights makes this class data-dependent. Although rarely used with any theoretical motivation, data-dependent priors are often used for different reasons, and their use has been a lot debated over the last decades. However, our approach is justified in terms of Bayesian inference as an approximation of a hierarchical model and as a conditioning on a data statistic. This class of priors turns out to provide less information than an informative prior, perhaps it represents a suitable option for not dominating the inference in presence of small samples. First evidences from simulation studies show that this class could also be a good proposal for reducing mean squared errors.

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