DCSYSYOCDec 14, 2016

Distributed Nonconvex Multiagent Optimization Over Time-Varying Networks

arXiv:1607.0024992 citationsh-index: 66
AI Analysis

For multiagent systems with time-varying communication, this work provides the first broadcast-based distributed algorithm for nonconvex constrained optimization over arbitrary digraphs, addressing a key bottleneck in distributed optimization.

This paper introduces a novel broadcast-based distributed algorithm for nonconvex multiagent optimization over time-varying digraphs, achieving asymptotic convergence to stationary solutions without requiring double-stochastic consensus matrices. Numerical results show it outperforms existing methods on both convex and nonconvex problems.

We study nonconvex distributed optimization in multiagent networks where the communications between nodes is modeled as a time-varying sequence of arbitrary digraphs. We introduce a novel broadcast-based distributed algorithmic framework for the (constrained) minimization of the sum of a smooth (possibly nonconvex and nonseparable) function, i.e., the agents' sum-utility, plus a convex (possibly nonsmooth and nonseparable) regularizer. The latter is usually employed to enforce some structure in the solution, typically sparsity. The proposed method hinges on Successive Convex Approximation (SCA) techniques coupled with i) a tracking mechanism instrumental to locally estimate the gradients of agents' cost functions; and ii) a novel broadcast protocol to disseminate information and distribute the computation among the agents. Asymptotic convergence to stationary solutions is established. A key feature of the proposed algorithm is that it neither requires the double-stochasticity of the consensus matrices (but only column stochasticity) nor the knowledge of the graph sequence to implement. To the best of our knowledge, the proposed framework is the first broadcast-based distributed algorithm for convex and nonconvex constrained optimization over arbitrary, time-varying digraphs. Numerical results show that our algorithm outperforms current schemes on both convex and nonconvex problems.

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