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arxiv: 1212.0582 · v1 · pith:Y4OUFZPQnew · submitted 2012-12-03 · 💻 cs.AI · cs.PL

Compositional Stochastic Modeling and Probabilistic Programming

classification 💻 cs.AI cs.PL
keywords compositionalmodelingprobabilisticprogrammingstochasticcontinuoustimealgorithms
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Probabilistic programming is related to a compositional approach to stochastic modeling by switching from discrete to continuous time dynamics. In continuous time, an operator-algebra semantics is available in which processes proceeding in parallel (and possibly interacting) have summed time-evolution operators. From this foundation, algorithms for simulation, inference and model reduction may be systematically derived. The useful consequences are potentially far-reaching in computational science, machine learning and beyond. Hybrid compositional stochastic modeling/probabilistic programming approaches may also be possible.

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