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A Second-Order Projected Primal-Dual Dynamical System for Distributed Optimization and Learning

Xiaoxuan Wang, Shaofu Yang, Zhenyuan Guo, Tingwen Huang

2021IEEE Transactions on Neural Networks and Learning Systems22 citationsDOI

Abstract

This article focuses on developing distributed optimization strategies for a class of machine learning problems over a directed network of computing agents. In these problems, the global objective function is an addition function, which is composed of local objective functions. Such local objective functions are convex and only endowed by the corresponding computing agent. A second-order Nesterov accelerated dynamical system with time-varying damping coefficient is developed to address such problems. To effectively deal with the constraints in the problems, the projected primal-dual method is carried out in the Nesterov accelerated system. By means of the cocoercive maximal monotone operator, it is shown that the trajectories of the Nesterov accelerated dynamical system can reach consensus at the optimal solution, provided that the damping coefficient and gains meet technical conditions. In the end, the validation of the theoretical results is demonstrated by the email classification problem and the logistic regression problem in machine learning.

Topics & Concepts

Mathematical optimizationMonotone polygonDual (grammatical number)Convex functionFunction (biology)Convex optimizationComputer scienceOperator (biology)Regular polygonOptimization problemClass (philosophy)Dynamical systems theoryDynamical system (definition)MathematicsApplied mathematicsArtificial intelligenceBiochemistryEvolutionary biologyPhysicsChemistryRepressorQuantum mechanicsGeneGeometryLiteratureTranscription factorBiologyArtDistributed Control Multi-Agent SystemsNeural Networks Stability and SynchronizationMathematical and Theoretical Epidemiology and Ecology Models
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