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arxiv: 1412.0791 · v1 · pith:TBI3M3X7new · submitted 2014-12-02 · 🧮 math.OC

A Simple Convergence Time Analysis of Drift-Plus-Penalty for Stochastic Optimization and Convex Programs

classification 🧮 math.OC
keywords timeaverageconvexprogramsconditionconstraintsconvergencedrift-plus-penalty
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This paper considers the problem of minimizing the time average of a stochastic process subject to time average constraints on other processes. A canonical example is minimizing average power in a data network subject to multi-user throughput constraints. Another example is a (static) convex program. Under a Slater condition, the drift-plus-penalty algorithm is known to provide an $O(\epsilon)$ approximation to optimality with a convergence time of $O(1/\epsilon^2)$. This paper proves the same result with a simpler technique and in a more general context that does not require the Slater condition. This paper also emphasizes application to basic convex programs, linear programs, and distributed optimization problems.

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