Bayesian Posteriors For Arbitrarily Rare Events

We study how much data a Bayesian observer needs to correctly infer the relative likelihoods of two events when both events are arbitrarily rare. Each period, either a blue die or a red die is tossed. The two dice land on side with unknown probabilities and , which can be arbitrarily low. Given a data-generating process where , we are interested in how much data is required to guarantee that with high probability the observer's Bayesian posterior mean for exceeds times that for . If the prior densities for the two dice are positive on the interior of the parameter space and behave like power functions at the boundary, then for every there exists a finite so that the observer obtains such an inference after periods with probability at least whenever . The condition on and is the best possible. The result can fail if one of the prior densities converges to zero exponentially fast at the boundary.
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