Time-Average Optimization with Non-Convex Decision Set and Its Convergence
Abstract
This paper considers time-average optimization, where a decision vector is chosen every time step within a (possibly non-convex) set, and the goal is to minimize a convex function of the time averages subject to convex constraints on these averages. Such problems have applications in networking, multi-agent systems, and operations research, where decisions are constrained to a discrete set and the decision average can represent average bit rates or average agent actions. This time-average optimization extends traditional convex formulations to allow a non-convex decision set. This class of problems can be solved by Lyapunov optimization. A simple drift-based algorithm, related to a classical dual subgradient algorithm, converges to an ε-optimal solution within O(1/ε2) time steps. Further, the algorithm is shown to have a transient phase and a steady state phase which can be exploited to improve convergence rates to O(1/ε) and O(1/ε1.5) when vectors of Lagrange multipliers satisfy locally-polyhedral and locally-smooth assumptions respectively. Practically, this improved convergence suggests that decisions should be implemented after the transient period.
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