Predictive hypothesis identification
Abstract
While statistics focusses on hypothesis testing and on estimating (properties
of) the true sampling distribution, in machine learning the performance of
learning algorithms on future data is the primary issue. In this paper we bridge
the gap with a general principle (PHI) that identifies hypotheses with best
predictive performance. This includes predictive point and interval estimation,
simple and composite hypothesis testing, (mixture) model selection, and
others as special cases. For concrete instantiations we will recover well-known
methods, variations thereof, and new ones. PHI nicely justifies, reconciles,
and blends (a reparametrization invariant variation of) MAP, ML, MDL, and
moment estimation. One particular feature of PHI is that it can genuinely
deal with nested hypotheses.
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Ninth Valencia International Meeting on Bayesian Statistics and 2010 ISBA World Meeting