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arxiv: 1504.00198 · v1 · pith:TOTQ7TOBnew · submitted 2015-04-01 · 💻 cs.PL

Conditioning in Probabilistic Programming

classification 💻 cs.PL
keywords conditioningprobabilisticliberalp-semanticsprogrammingconditionalprogramprove
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We investigate the semantic intricacies of conditioning, a main feature in probabilistic programming. We provide a weakest (liberal) pre-condition (w(l)p) semantics for the elementary probabilistic programming language pGCL extended with conditioning. We prove that quantitative weakest (liberal) pre-conditions coincide with conditional (liberal) expected rewards in Markov chains and show that semantically conditioning is a truly conservative extension. We present two program transformations which entirely eliminate conditioning from any program and prove their correctness using the w(l)p-semantics. Finally, we show how the w(l)p-semantics can be used to determine conditional probabilities in a parametric anonymity protocol and show that an inductive w(l)p-semantics for conditioning in non-deterministic probabilistic programs cannot exist.

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