Convergence Rate of Distributed ADMM over Networks

IEEE Trans. Automat. Contr.(2017)

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摘要
We propose a new distributed algorithm based on alternating direction method of multipliers (ADMM) to minimize sum of locally known convex functions using communication over a network. This optimization problem emerges in many applications in distributed machine learning and statistical estimation. Our algorithm allows for a general choice of the communication weight matrix, which is used to combine the iterates at different nodes. We show that when functions are convex, both the objective function values and the feasibility violation converge with rate O(1/T ), where T is the number of iterations. We then show that when functions are strongly convex and have Lipschitz continuous gradients, the sequence generated by our algorithm converges linearly to the optimal solution. In particular, an -optimal solution can be computed with O ( f log(1/)) iterations, where f is the condition number of the problem. Our analysis highlights the effect of network and communication weights on the convergence rate through degrees of the nodes, the smallest nonzero eigenvalue, and operator norm of the communication matrix.
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关键词
Convergence,Optimization,Algorithm design and analysis,Linear programming,Distributed algorithms,Convex functions,Distributed databases
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