Previous work tested a multi-objective genetic algorithm that was integrated with a machine learning classifier to reduce the number of objective function calls. Four machine learning classifiers and a baseline “No Classifier” option were evaluated. Using a machine learning classifier to create a hybrid multiobjective genetic algorithm reduced objective function calls by 75–85% depending on the classifier used. This work expands the analysis of algorithm performance by considering six standard benchmark problems from the literature. The problems are designed to test the ability of the algorithm to identify the Pareto frontier and maintain population diversity. Results indicate a tradeoff between the objectives of Pareto frontier identification and solution diversity. The “No Classifier” baseline multiobjective genetic algorithm produces the frontier with the closest proximity to the true frontier while a classifier option provides the greatest diversity when the number of generations is fixed. However, there is a significant reduction in computational expense as the number of objective function calls required is significantly reduced, highlighting the advantage of this hybrid approach.
Skip Nav Destination
ASME 2017 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference
August 6–9, 2017
Cleveland, Ohio, USA
Conference Sponsors:
- Design Engineering Division
- Computers and Information in Engineering Division
ISBN:
978-0-7918-5812-7
PROCEEDINGS PAPER
Benchmarking the Performance of a Machine Learning Classifier Enabled Multiobjective Genetic Algorithm on Six Standard Test Functions
Kayla Zeliff,
Kayla Zeliff
Air Force Research Laboratory, Rome, NY
Search for other works by this author on:
Walter Bennette,
Walter Bennette
Air Force Research Laboratory, Rome, NY
Search for other works by this author on:
Scott Ferguson
Scott Ferguson
North Carolina State University, Raleigh, NC
Search for other works by this author on:
Kayla Zeliff
Air Force Research Laboratory, Rome, NY
Walter Bennette
Air Force Research Laboratory, Rome, NY
Scott Ferguson
North Carolina State University, Raleigh, NC
Paper No:
DETC2017-68332, V02AT03A010; 17 pages
Published Online:
November 3, 2017
Citation
Zeliff, K, Bennette, W, & Ferguson, S. "Benchmarking the Performance of a Machine Learning Classifier Enabled Multiobjective Genetic Algorithm on Six Standard Test Functions." Proceedings of the ASME 2017 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference. Volume 2A: 43rd Design Automation Conference. Cleveland, Ohio, USA. August 6–9, 2017. V02AT03A010. ASME. https://doi.org/10.1115/DETC2017-68332
Download citation file:
20
Views
Related Proceedings Papers
Related Articles
Untrained and Unmatched: Fast and Accurate Zero-Training Classification for Tabular Engineering Data
J. Mech. Des (September,2024)
Genetic Algorithm and Deep Learning to Explore Parametric Trends in Nucleate Boiling Heat Transfer Data
J. Heat Transfer (December,2021)
Related Chapters
Reseach of Intrusion Detection Based on Cost-Sensitive
International Conference on Instrumentation, Measurement, Circuits and Systems (ICIMCS 2011)
Multiobjective Evolutionary Algorithm Approach for Job Shop Rescheduling Problem
Intelligent Engineering Systems through Artificial Neural Networks
Resource-Speed Trade-Off of the SHA-1 Algorithm Implementation in Low Cost SRAM-Based FPGA
International Conference on Advanced Computer Theory and Engineering (ICACTE 2009)