MLLGDATA-ANJun 2, 2015

An objective prior that unifies objective Bayes and information-based inference

arXiv:1506.00745v2
AI Analysis

This foundational work addresses a core problem in statistical inference for researchers and practitioners, offering a widely-applicable approach to machine-learning problems, including singular models.

The paper tackles the problem of unifying objective Bayesian and information-based statistical inference by introducing the w-prior, which makes marginal probability an unbiased estimator of predictive performance and is equivalent to the Akaike Information Criterion for regular models asymptotically.

There are three principle paradigms of statistical inference: (i) Bayesian, (ii) information-based and (iii) frequentist inference. We describe an objective prior (the weighting or $w$-prior) which unifies objective Bayes and information-based inference. The $w$-prior is chosen to make the marginal probability an unbiased estimator of the predictive performance of the model. This definition has several other natural interpretations. From the perspective of the information content of the prior, the $w$-prior is both uniformly and maximally uninformative. The $w$-prior can also be understood to result in a uniform density of distinguishable models in parameter space. Finally we demonstrate the the $w$-prior is equivalent to the Akaike Information Criterion (AIC) for regular models in the asymptotic limit. The $w$-prior appears to be generically applicable to statistical inference and is free of {\it ad hoc} regularization. The mechanism for suppressing complexity is analogous to AIC: model complexity reduces model predictivity. We expect this new objective-Bayes approach to inference to be widely-applicable to machine-learning problems including singular models.

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