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Published June 1, 2019 | public
Journal Article

Random Node-Asynchronous Updates on Graphs

Abstract

This paper introduces a node-asynchronous communication protocol in which an agent in a network wakes up randomly and independently, collects states of its neighbors, updates its own state, and then broadcasts back to its neighbors. This protocol differs from consensus algorithms and it allows distributed computation of an arbitrary eigenvector of the network, in which communication between agents is allowed to be directed. (The graph operator is still required to be a normal matrix). To analyze the scheme, this paper studies a random asynchronous variant of the power iteration. Under this random asynchronous model, an initial signal is proven to converge to an eigenvector of eigenvalue 1 (a fixed point) even in the case of operator having spectral radius larger than unity. The rate of convergence is shown to depend not only on the eigenvalue gap but also on the eigenspace geometry of the operator as well as the amount of asynchronicity of the updates. In particular, the convergence region for the eigenvalues gets larger as the updates get less synchronous. Random asynchronous updates are also interpreted from the graph signal perspective, and it is shown that a non-smooth signal converges to the smoothest signal under the random model. When the eigenvalues are real, second order polynomials are used to achieve convergence to an arbitrary eigenvector of the operator. Using second order polynomials the paper formalizes the node-asynchronous communication model. As an application, the protocol is used to compute the Fiedler vector of a network to achieve autonomous clustering.

Additional Information

© 2019 IEEE. Manuscript received April 14, 2018; revised October 7, 2018 and March 30, 2019; accepted April 1, 2019. Date of publication April 11, 2019; date of current version April 26, 2019. The associate editor coordinating the review of this manuscript and approving it for publication was Prof. Mats Bengtsson. This work was supported in part by the Office of Naval Research under Grant N00014-18-1-2390, in part by the National Science Foundation under Grant CCF-1712633, and in part by the Electrical Engineering Carver Mead Research Seed Fund of the California Institute of Technology. The authors are grateful to the reviewers for their very helpful suggestions and for drawing our attention to a wealth of literature on relevant work.

Additional details

Created:
August 19, 2023
Modified:
October 20, 2023