资源论文Online Convex Optimization with Stochastic Constraints

Online Convex Optimization with Stochastic Constraints

2020-02-10 | |  65 |   51 |   0

Abstract 

This paper considers online convex optimization (OCO) with stochastic constraints, which generalizes Zinkevich’s OCO over a known simple fixed set by introducing multiple stochastic functional constraints that are i.i.d. generated at each round and are disclosed to the decision maker only after the decision is made. This formulation arises naturally when decisions are restricted by stochastic environments or deterministic environments with noisy observations. It also includes many important problems as special case, such as OCO with long term constraints, stochastic constrained convex optimization, and deterministic constrained convex optimization. p To solve this problem, this paper proposes a newpalgorithm that achieves image.png expected regret and constraint violations and image.png high probability regret and constraint violations. Experiments on a real-world data center scheduling problem further verify the performance of the new algorithm.

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