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2000
Volume 11, Issue 5
  • ISSN: 1574-8936
  • E-ISSN: 2212-392X

Abstract

Background: Analysis on classification of microarray gene expression data has been an important research topic in bioinformatics. Objective: For the unsatisfied performance of basic classification methods, researches on ensemble classifiers prove ensembling classifiers to be an efficient way to increase classification accuracy. Method: In this paper, we propose a new diversity-based classification method, which combines a feature selection method based on clustering and an ensemble classifier D3C to improve the classification accuracy. D3C is a novel ensemble method which utilizes ensemble pruning based on k-means clustering and dynamic selection and circulating combination aiming at obtaining diversity among classifiers. Results & Conclusion: We apply our proposed method on seven gene data sets. Compared to prior research, experimental results reveal that our method outperforms other ensemble classifiers in accuracy for gene classification.

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/content/journals/cbio/10.2174/1574893609666140820224436
2016-11-01
2025-05-24
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/content/journals/cbio/10.2174/1574893609666140820224436
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