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arxiv: 1701.08515 · v1 · pith:SSASW4PAnew · submitted 2017-01-30 · 📊 stat.ME

Assigning a value to a power likelihood in a general Bayesian model

classification 📊 stat.ME
keywords modelbayesianpowerbeendatalearninglikelihoodabsence
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Bayesian approaches to data analysis and machine learning are widespread and popular as they provide intuitive yet rigorous axioms for learning from data; see Bernardo and Smith (2004) and Bishop (2006). However, this rigour comes with a caveat that the Bayesian model is a precise reflection of Nature. There has been a recent trend to address potential model misspecification by raising the likelihood function to a power, primarily for robustness reasons, though not exclusively. In this paper we provide a coherent specification of the power parameter once the Bayesian model has been specified in the absence of a perfect model.

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