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An Analysis of the Inertia Weight Parameter for Binary Particle Swarm Optimization
In particle swarm optimization (PSO), the inertia weight is an important parameter for controlling its search capability. There have been intensive studies of the inertia weight in continuous optimization, but little attention has been paid to the binary case. This paper comprehensively investigates the effect of the inertia weight on the performance of binary PSO (BPSO), from both theoretical and empirical perspectives. A mathematical model is proposed to analyze the behavior of BPSO, based on which several lemmas and theorems on the effect of the inertia weight are derived. Our research findings suggest that in the binary case, a smaller inertia weight enhances the exploration capability while a larger inertia weight encourages exploitation. Consequently, this paper proposes a new adaptive inertia weight scheme for BPSO. This scheme allows the search process to start first with exploration and gradually move toward exploitation by linearly increasing the inertia weight. The experimental results on 0/1 knapsack problems show that the BPSO with the new increasing inertia weight scheme performs significantly better than that with the conventional decreasing and constant inertia weight schemes. This paper verifies the efficacy of increasing inertia weight in BPSO.
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Liu, J., Mei, Y. & Li, X. (2016). An Analysis of the Inertia Weight Parameter for Binary Particle Swarm Optimization. IEEE Transactions on Evolutionary Computation, 20(5), 666-681. https://doi.org/10.1109/TEVC.2015.2503422Publisher DOI
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IEEE Transactions on Evolutionary ComputationVolume
20Issue
5Publication date
2016-01-01Pagination
666-681Publisher
Institute of Electrical and Electronics Engineers (IEEE)Publication status
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ArticleISSN
1089-778XeISSN
1941-0026Article number
5Language
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Binary particle swarm optimization (BPSO)knapsack problemsmathematical modelingScience & TechnologyTechnologyComputer Science, Artificial IntelligenceComputer Science, Theory & MethodsComputer ScienceSCHEDULING PROBLEMSKNAPSACK-PROBLEMSALGORITHMSELECTIONCONVERGENCEPLACEMENTSTABILITYVERSIONPSOArtificial Intelligence & Image ProcessingElectrical and Electronic EngineeringInformation SystemsArtificial Intelligence and Image ProcessingNeural, Evolutionary and Fuzzy Computation
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