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Activity Number: 210 - SLDS CSpeed 3
Type: Contributed
Date/Time: Tuesday, August 10, 2021 : 1:30 PM to 3:20 PM
Sponsor: Korean International Statistical Society
Abstract #317711
Title: Feature Selection Using a Metaheuristic Method
Author(s): Myung Soon Song* and Francis J Vasko and Yun Lu and Kyle Callaghan
Companies: Kuztown University of Pennsylvania and Kuztown University of Pennsylvania and Kuztown University of Pennsylvania and Kuztown University of Pennsylvania
Keywords: feature selection; regression; metaheuristic; optimization; jaya
Abstract:

Feature or variable selection is one of the very popular topics from regression models. Besides many conventional approaches, some metaheuristic approaches from the realm of optimization including, but are not limited to, GA (Genetic Algorithm) or SA (simulated annealing) have been suggested so far. These methods have a considerable advantage over the conventional methods when dealing with a variety of problems, but how to fine-tune parameters is very challenging. In this research, a parameter-free approach called Jaya will be suggested and explored. Many methods such as GA, TBO (Teaching Based Optimization), and Jaya will be compared to one another with a real-world dataset and a simulated dataset. The impact of using local search will also be analyzed. This is a follow-up to what we presented at JSM 2020.


Authors who are presenting talks have a * after their name.

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