Noncomputable Conditional Distributions

  • Authors:
  • Nathanael L. Ackerman;Cameron E. Freer;Daniel M. Roy

  • Affiliations:
  • -;-;-

  • Venue:
  • LICS '11 Proceedings of the 2011 IEEE 26th Annual Symposium on Logic in Computer Science
  • Year:
  • 2011

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Abstract

We study the computability of conditional probability, a fundamental notion in probability theory and Bayesian statistics. In the elementary discrete setting, a ratio of probabilities defines conditional probability. In more general settings, conditional probability is defined axiomatically, and the search for more constructive definitions is the subject of a rich literature in probability theory and statistics. However, we show that in general one cannot compute conditional probabilities. Specifically, we construct a pair of computable random variables (X, Y) in the unit interval whose conditional distribution P[Y|X] encodes the halting problem. Nevertheless, probabilistic inference has proven remarkably successful in practice, even in infinite-dimensional continuous settings. We prove several results giving general conditions under which conditional distributions are computable. In the discrete or dominated setting, under suitable computability hypotheses, conditional distributions are computable. Likewise, conditioning is a computable operation in the presence of certain additional structure, such as independent absolutely continuous noise.