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NONLINEAR SYSTEMS IN ROBOTICS
Average-Case Optimization Analysis for Distributed Consensus Algorithms on Regular Graphs
N. T. Nguyena, A. V. Rogozinab, A. V. Gasnikovba a Moscow Institute of Physics and Technology,
Institutskiy per. 9, Dolgoprudny, Moscow 141701 Russia
b Innopolis University,
ul. Universitetskaya 1, Innopolis, 420500 Russia
Abstract:
The consensus problem in distributed computing involves a network of agents aiming to
compute the average of their initial vectors through local communication, represented by an
undirected graph. This paper focuses on studying this problem using an average-case analysis
approach, particularly over regular graphs. Traditional algorithms for solving the consensus
problem often rely on worst-case performance evaluation scenarios, which may not reflect typical
performance in real-world applications. Instead, we apply average-case analysis, focusing on the
expected spectral distribution of eigenvalues to obtain a more realistic view of performance. Key
contributions include deriving the optimal method for consensus on regular graphs, showing its
relation to the Heavy Ball method, analyzing its asymptotic convergence rate, and comparing
it to various first-order methods through numerical experiments.
Keywords:
consensus problem, average-case analysis, regular graph
Received: 06.11.2024 Accepted: 29.11.2024
Citation:
N. T. Nguyen, A. V. Rogozin, A. V. Gasnikov, “Average-Case Optimization Analysis for Distributed Consensus Algorithms on Regular Graphs”, Rus. J. Nonlin. Dyn., 20:5 (2024), 907–931
Linking options:
https://www.mathnet.ru/eng/nd930 https://www.mathnet.ru/eng/nd/v20/i5/p907
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Abstract page: | 40 | Full-text PDF : | 8 | References: | 7 |
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