Interior Point Methods with Adversarial Networks

Mahmood, Rafid, Babier, Aaron, Diamant, Adam, Chan, Timothy C. Y.

arXiv.org Machine Learning 

We present a new methodology, called IPMAN, that combines interior point methods and generative adversarial networks to solve constrained optimization problems with feasible sets that are non-convex or not explicitly defined. Our methodology produces {\epsilon}-optimal solutions and demonstrates that, when there are multiple global optima, it learns a distribution over the optimal set. We apply our approach to synthetic examples to demonstrate its effectiveness and to a problem in radiation therapy treatment optimization with a non-convex feasible set.

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