On Arbitrary Compression for Decentralized Consensus and Stochastic Optimization over Directed Networks

Taha Toghani, César A. Uribe
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引用次数: 1

Abstract

We study the decentralized consensus and stochastic optimization problems with compressed communications over static directed graphs. We propose an iterative gradient-based algorithm that compresses messages according to a desired compression ratio. The proposed method provably reduces the communication overhead on the network at every communication round. Contrary to existing literature, we allow for arbitrary compression ratios in the communicated messages. We show a linear convergence rate for the proposed method on the consensus problem. Moreover, we provide explicit convergence rates for decentralized stochastic optimization problems on smooth functions that are either (i) strongly convex, (ii) convex, or (iii) non-convex. Finally, we provide numerical experiments to illustrate convergence under arbitrary compression ratios and the communication efficiency of our algorithm.
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有向网络上分散一致性和随机优化的任意压缩
研究了静态有向图上压缩通信的分散共识和随机优化问题。我们提出了一种基于迭代梯度的算法,该算法根据所需的压缩比压缩消息。该方法可证明地降低了网络在每一轮通信中的通信开销。与现有文献相反,我们允许在传递的信息中使用任意的压缩比。我们证明了该方法在一致性问题上的线性收敛速度。此外,我们还提供了(i)强凸、(ii)凸或(iii)非凸光滑函数上分散随机优化问题的显式收敛率。最后,通过数值实验验证了该算法在任意压缩比下的收敛性和通信效率。
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