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A multi-objective competitive co-evolutionary approach for classification problems

Vu, V.T. and Bui, L.T. and Nguyen, T.T. (2019) A multi-objective competitive co-evolutionary approach for classification problems. In: 6th NAFOSTED Conference on Information and Computer Science, NICS 2019, 12 December 2019 through 13 December 2019.

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Abstract

This paper proposes a multi-objective competitive co-evolutionary algorithm (MOCPCEA) based on the PreyPredator model to solve classification problems. In the MOCPCEA, a data population acts as preys. To be specific, each prey represents a selected subset of the training dataset. Another population is ANN classifiers which play as Predators. The task of the Predators is to try to classify the data sets as correctly as possible, whereas the Preys try to find the data sets that are difficult to be classified. Through this interaction process, MOCPCEA generates a set of classifiers that are able to classify difficult data sets. The final classification result is given by the ensemble voting mechanism among these sets of classifiers. The performance of the proposed algorithm is performed on seven benchmark problems. Through comparison with other algorithms, the proposed algorithm indicates that it could create an ensemble of ANN networks that give high and stable classification results. © 2019 IEEE.

Item Type: Conference or Workshop Item (Paper)
Divisions: Faculties > Faculty of Information Technology
Institutes > Institute of Techniques for Special Engineering
Identification Number: 10.1109/NICS48868.2019.9023887
Uncontrolled Keywords: Benchmarking; Evolutionary algorithms; Multiobjective optimization; Population statistics; Bench-mark problems; Classification results; Co-evolutionary; Co-evolutionary algorithm; Co-evolutionary approach; Ensemble learning; Prey-predator; Prey-predator models; Classification (of information)
Additional Information: Conference code: 158383. Language of original document: English.
URI: http://eprints.lqdtu.edu.vn/id/eprint/9208

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