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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed Online Convex Optimization With Time-Varying Coupled Inequality Constraints
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Distributed Online Convex Optimization With Time-Varying Coupled Inequality Constraints

机译:时变耦合不等式约束的分布式在线凸优化

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This paper considers distributed online optimization with time-varying coupled inequality constraints. The global objective function is composed of local convex cost and regularization functions and the coupled constraint function is the sum of local convex functions. Adistributed online primal-dual dynamic mirror descent algorithm is proposed to solve this problem, where the local cost, regularization, and constraint functions are held privately and revealed only after each time slot. Without assuming Slater's condition, we first derive regret and constraint violation bounds for the algorithm and show how they depend on the stepsize sequences, the accumulated dynamic variation of the comparator sequence, the number of agents, and the network connectivity. As a result, under some natural decreasing stepsize sequences, we prove that the algorithm achieves sublinear dynamic regret and constraint violation if the accumulated dynamic variation of the optimal sequence also grows sublinearly. We also prove that the algorithm achieves sublinear static regret and constraint violation under mild conditions. Assuming Slater's condition, we show that the algorithm achieves smaller bounds on the constraint violation. In addition, smaller bounds on the static regret are achieved when the objective function is strongly convex. Finally, numerical simulations are provided to illustrate the effectiveness of the theoretical results.
机译:本文考虑具有时变耦合不等式约束的分布式在线优化。全局目标函数由局部凸函数和正则化函数组成,耦合约束函数为局部凸函数的和。提出了一种分布式的在线对偶动态镜像下降算法来解决该问题,该算法局部私有成本,正则化和约束函数,并且仅在每个时隙之后才公开。在不假设Slater条件的情况下,我们首先导出算法的后悔和约束违反边界,并说明它们如何取决于步长序列,比较器序列的累积动态变化,代理数量以及网络连接性。结果,在某些自然的递减步长序列下,我们证明了如果最优序列的累积动态变化也亚线性增长,则该算法可实现亚线性动态后悔和约束违反。我们还证明了该算法在温和条件下实现了亚线性静态后悔和约束违反。假设Slater条件,我们证明该算法在约束违反方面获得了较小的界限。此外,当目标函数是强凸的时,静态后悔的范围更小。最后,提供了数值模拟来说明理论结果的有效性。

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