Enhancing Explainability and Reliable Decision-Making in Particle Swarm Optimization through Communication Topologies
By: Nitin Gupta , Indu Bala , Bapi Dutta and more
Potential Business Impact:
Makes smart computer groups work better and more reliably.
Swarm intelligence effectively optimizes complex systems across fields like engineering and healthcare, yet algorithm solutions often suffer from low reliability due to unclear configurations and hyperparameters. This study analyzes Particle Swarm Optimization (PSO), focusing on how different communication topologies Ring, Star, and Von Neumann affect convergence and search behaviors. Using an adapted IOHxplainer , an explainable benchmarking tool, we investigate how these topologies influence information flow, diversity, and convergence speed, clarifying the balance between exploration and exploitation. Through visualization and statistical analysis, the research enhances interpretability of PSO's decisions and provides practical guidelines for choosing suitable topologies for specific optimization tasks. Ultimately, this contributes to making swarm based optimization more transparent, robust, and trustworthy.
Similar Papers
An Explainable Framework for Particle Swarm Optimization using Landscape Analysis and Machine Learning
Neural and Evolutionary Computing
Explains how robot groups work better together.
Learning Strategies in Particle Swarm Optimizer: A Critical Review and Performance Analysis
Neural and Evolutionary Computing
Improves computer problem-solving by studying ant behavior.
An improved clustering-based multi-swarm PSO using local diversification and topology information
Neural and Evolutionary Computing
Finds many hidden answers in complex problems.