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arxiv: 1903.04133 · v6 · pith:NZENVYRU · submitted 2019-03-11 · math.OC

Distributed Non-convex Optimization of Multi-agent Systems Using Boosting Functions to Escape Local Optima: Theory and Applications

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classification math.OC
keywords boostinglocalfunctionsoptimamulti-agentoptimizationapproachdistributed
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We address the problem of multiple local optima arising due to non-convex objective functions in cooperative multi-agent optimization problems. To escape such local optima, we propose a systematic approach based on the concept of boosting functions. The underlying idea is to temporarily transform the gradient at a local optimum into a boosted gradient with a non-zero magnitude. We develop a Distributed Boosting Scheme (DBS) based on a gradient-based optimization algorithm using a novel optimal variable step size mechanism so as to guarantee convergence. Even though our motivation is based on the coverage control problem setting, our analysis applies to a broad class of multi-agent problems. Simulation results are provided to compare the performance of different boosting functions families and to demonstrate the effectiveness of the boosting function approach in attaining improved (still generally local) optima.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Distributed Global Optimization by Annealing

    math.OC 2019-07 unverdicted novelty 5.0

    A consensus + innovations algorithm with decaying additive Gaussian noise converges to the global minima of nonconvex functions under technical assumptions, with verification methods and a target-localization example.