A Consensus-Based Algorithm for Multi-Objective Optimization and Its Mean-Field Description
Giacomo Borghi, Michaël Herty, Lorenzo Pareschi
Abstract
We present a multi-agent algorithm for multi-objective optimization problems, which extends the class of consensus-based optimization methods and relies on a scalarization strategy. The optimization is achieved by a set of interacting agents exploring the search space and attempting to solve all scalar sub-problems simultaneously. We show that those dynamics are described by a mean-field model, which is suitable for a theoretical analysis of the algorithm convergence. Numerical results show the validity of the proposed method.
Topics & Concepts
Convergence (economics)Mathematical optimizationComputer scienceOptimization algorithmSet (abstract data type)Optimization problemAlgorithmField (mathematics)Scalar fieldClass (philosophy)MathematicsArtificial intelligenceEconomicsProgramming languageMathematical physicsPure mathematicsEconomic growthDistributed Control Multi-Agent SystemsMetaheuristic Optimization Algorithms ResearchGene Regulatory Network Analysis