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arxiv: 1512.06098 · v2 · pith:S7BZKJEOnew · submitted 2015-12-18 · 📊 stat.ML

Expectation propagation for continuous time stochastic processes

classification 📊 stat.ML
keywords timeapproximationscontinuousinverseposteriorproblemapproximateapproximation
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We consider the inverse problem of reconstructing the posterior measure over the trajec- tories of a diffusion process from discrete time observations and continuous time constraints. We cast the problem in a Bayesian framework and derive approximations to the posterior distributions of single time marginals using variational approximate inference. We then show how the approximation can be extended to a wide class of discrete-state Markov jump pro- cesses by making use of the chemical Langevin equation. Our empirical results show that the proposed method is computationally efficient and provides good approximations for these classes of inverse problems.

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