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Dual coordinate descent algorithms for multi-agent optimization

机译:用于多主体优化的双坐标下降算法

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Multi-agent optimization problems arise in a wide variety of networked systems, and are often required to be solved in an asynchronous and uncoordinated way. However, existing asynchronous algorithms for constrained multi-agent optimization do not have guaranteed convergence rates and, thus, lack performance guarantees in on-line applications. This paper addresses this shortcoming by developing randomized coordinate descent algorithms for solving the dual of a class of constrained multi-agent optimization problems. We show that the algorithms can be implemented asynchronously and distributively in multi-agent networks. Moreover, without relying on the standard assumption of boundedness of the dual optimal set, the proposed dual coordinate descent algorithms achieve sublinear convergence rates of both its primal and dual iterates in expectation. The competitive performance is demonstrated numerically on a constrained optimal rendezvous problem.
机译:多主体优化问题出现在各种各样的网络系统中,通常需要以异步和不协调的方式来解决。但是,用于约束多主体优化的现有异步算法没有保证的收敛速度,因此缺乏在线应用程序中的性能保证。本文通过开发用于解决一类受约束的多智能体优化问题对偶的随机坐标下降算法来解决此缺点。我们证明了该算法可以在多智能体网络中异步和分布式实现。此外,在不依赖于对偶最优集的有界性的标准假设的情况下,所提出的双坐标下降算法在期望中实现了其原始迭代和对偶迭代两者的亚线性收敛速率。在约束的最佳集合点问题上通过数值论证了竞争表现。

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