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首页> 外文期刊>Automatic Control, IEEE Transactions on >Convergence of a Multi-Agent Projected Stochastic Gradient Algorithm for Non-Convex Optimization
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Convergence of a Multi-Agent Projected Stochastic Gradient Algorithm for Non-Convex Optimization

机译:非凸优化问题的多Agent投影随机梯度算法的收敛性

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We introduce a new framework for the convergence analysis of a class of distributed constrained non-convex optimization algorithms in multi-agent systems. The aim is to search for local minimizers of a non-convex objective function which is supposed to be a sum of local utility functions of the agents. The algorithm under study consists of two steps: a local stochastic gradient descent at each agent and a gossip step that drives the network of agents to a consensus. Under the assumption of decreasing stepsize, it is proved that consensus is asymptotically achieved in the network and that the algorithm converges to the set of Karush–Kuhn–Tucker points. As an important feature, the algorithm does not require the double-stochasticity of the gossip matrices. It is in particular suitable for use in a natural broadcast scenario for which no feedback messages between agents are required. It is proved that our results also holds if the number of communications in the network per unit of time vanishes at moderate speed as time increases, allowing potential savings of the network's energy. Applications to power allocation in wireless ad-hoc networks are discussed. Finally, we provide numerical results which sustain our claims.
机译:我们引入了一个新的框架,用于在多主体系统中对一类分布式约束非凸优化算法进行收敛性分析。目的是搜索非凸目标函数的局部极小值,该目标函数应该是代理的局部效用函数的总和。研究中的算法包括两个步骤:每个代理的局部随机梯度下降和将代理网络推向共识的八卦步骤。在逐步减小步长的假设下,证明了在网络中渐近地达成了共识,并且该算法收敛于Karush–Kuhn–Tucker点的集合。作为重要特征,该算法不需要八卦矩阵的双重随机性。它特别适用于不需要代理之间的反馈消息的自然广播场景。事实证明,如果随着时间的增加,每单位时间网络中的通信数量以适中的速度消失,我们的结果也将成立,从而可以潜在地节省网络能量。讨论了无线自组织网络中功率分配的应用。最后,我们提供了支持我们主张的数值结果。

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