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Communication-efficient algorithms for decentralized and stochastic optimization

机译:分散和随机优化的通信高效算法

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We present a new class of decentralized first-order methods for nonsmooth and stochastic optimization problems defined over multiagent networks. Considering that communication is a major bottleneck in decentralized optimization, our main goal in this paper is to develop algorithmic frameworks which can significantly reduce the number of inter-node communications. Our major contribution is to present a new class of decentralized primal-dual type algorithms, namely the decentralized communication sliding (DCS) methods, which can skip the inter-node communications while agents solve the primal subproblems iteratively through linearizations of their local objective functions. By employing DCS, agents can find an epsilon-solution both in terms of functional optimality gap and feasibility residual in O(1/epsilon) (resp., O(1/epsilon)) communication rounds for general convex functions (resp., strongly convex functions), while maintaining the O(1/epsilon 2)) bound on the total number of intra-node subgradient evaluations. We also present a stochastic counterpart for these algorithms, denoted by SDCS, for solving stochastic optimization problems whose objective function cannot be evaluated exactly. In comparison with existing results for decentralized nonsmooth and stochastic optimization, we can reduce the total number of inter-node communication rounds by orders of magnitude while still maintaining the optimal complexity bounds on intra-node stochastic subgradient evaluations. The bounds on the (stochastic) subgradient evaluations are actually comparable to those required for centralized nonsmooth and stochastic optimization under certain conditions on the target accuracy.
机译:我们为多读网络定义了一类新的分散的一阶方法,用于在多读网络上定义的内部结构和随机优化问题。考虑到沟通是分散优化的主要瓶颈,我们本文的主要目标是开发算法框架,可以显着降低节点间通信的数量。我们的主要贡献是呈现一类新的分散式原始双重类型算法,即分散的通信滑动(DCS)方法,它可以跳过节点间通信,而代理通过其本地目标函数的线性化解决原始子问题。通过使用DCS,试剂可以在O(1 / epsilon)(RESP。,O(1 / epsilon))通信轮用于一般凸函数(RESP。,强烈凸函数),同时在节点内节点课堂评估的总数上维持o(1 / epsilon 2))。我们还向这些算法提出了一种随机对应物,其表示由SDC表示,用于求解目的函数无法准确地评估其目标函数的随机优化问题。与分散的非运动和随机优化的现有结果相比,我们可以通过数量级来减少节点间通信轮的总数,同时仍然保持节点内随机子学分类学评估上的最佳复杂性界限。 (随机)子级评估的界限实际上与在目标精度的某些条件下集中式非运动和随机优化所需的界限。

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