Variational Bayesian Methods for Stochastically Constrained System Design Problems
2nd Symposium on Advances in Approximate Bayesian Inference, 2019 We study system design problems stated as parameterized stochastic programs with a chance-constraint set. We adopt a Bayesian approach that requires the computation of a posterior predictive integral which is usually intractable. In a...
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Zusammenfassung: | 2nd Symposium on Advances in Approximate Bayesian Inference, 2019 We study system design problems stated as parameterized stochastic programs
with a chance-constraint set. We adopt a Bayesian approach that requires the
computation of a posterior predictive integral which is usually intractable. In
addition, for the problem to be a well-defined convex program, we must retain
the convexity of the feasible set. Consequently, we propose a variational
Bayes-based method to approximately compute the posterior predictive integral
that ensures tractability and retains the convexity of the feasible set. Under
certain regularity conditions, we also show that the solution set obtained
using variational Bayes converges to the true solution set as the number of
observations tends to infinity. We also provide bounds on the probability of
qualifying a true infeasible point (with respect to the true constraints) as
feasible under the VB approximation for a given number of samples. |
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DOI: | 10.48550/arxiv.2001.01404 |