A Novel Particle Filter Optimization Algorithm for the solution of Single-objective Numerical Optimization Problems

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Association for Computing Machinery

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info:eu-repo/semantics/openAccess

Abstract

This paper introduces a novel approach combining Particle Filters and the L-BFGS-B optimization method for solving single-objective numerical optimization problems. The proposed method intricately marries the stochastic exploration of Particle Filters with the local optimization prowess of L-BFGS-B to navigate complex landscapes efficiently. Extensive experimentation on benchmark problems validates the approach's effectiveness, convergence speed, accuracy, and robustness. This fusion of methodologies opens new vistas for conquering diverse optimization challenges. © 2024 ACM.

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2024 Cognitive Models and Artificial Intelligence Conference, AICCONF 2024 -- 2024-05-25 through 2024-05-26 -- Istanbul -- 200487

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evolutionary algorithms, optimization, particle filters

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