Evolutionary classifier and cluster selection approach for ensemble classification
journal contribution
posted on 2020-03-17, 00:00 authored by Muhammad Zohaib Jan, Brijesh Verma© 2019 Association for Computing Machinery. Ensemble classifiers improve the classification performance by combining several classifiers using a suitable fusion methodology. Many ensemble classifier generation methods have been developed that allowed the training of multiple classifiers on a single dataset. As such random subspace is a common methodology utilized by many state-of-the-art ensemble classifiers that generate random subsamples from the input data and train classifiers on different subsamples. Real-world datasets have randomness and noise in them, therefore not all randomly generated samples are suitable for training. In this article, we propose a novel particle swarm optimization-based approach to optimize the random subspace to generate an ensemble classifier. We first generate a random subspace by incrementally clustering input data and then optimize all generated data clusters. On all optimized data clusters, a set of classifiers is trained and added to the pool. The pool of classifiers is then optimized and an optimized ensemble classifier is generated. The proposed approach is tested on 12 benchmark datasets from the UCI repository and results are compared with current state-of-the-art ensemble classifier approaches. A statistical significance test is also conducted and an analysis is presented.
Funding
Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)
History
Volume
14Issue
1Start Page
7:1End Page
7:18Number of Pages
18eISSN
1556-472XISSN
1556-4681Publisher
Association for Computing Machinery, USAPublisher DOI
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Peer Reviewed
- Yes
Open Access
- No
Author Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes
Journal
ACM Transactions on Knowledge Discovery from DataUsage metrics
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