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Computational intelligence and hybrid models for feature selection and classification of bioinformatics datasets

机译:用于生物信息学数据集特征选择和分类的计算智能和混合模型

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摘要

The science of bioinformatics is increasingly being used to improve the quality of life as we know it. This opens the door to both machine learning and computational intelligence techniques to play a major role in bioinformatics. Recently, Type-1 and Ttype-2 fuzzy logic systems have been introduced as novel computational intelligence approaches for both prediction and classification. They were successfully used in several areas of science and engineering, however, they have not been fully utilized in the bioinformatics, particularly the Type-2 fuzzy logic system. This paper presents various computational intelligence and hybrid models for feature selection and classification of real bioinformatics datasets. The performance and classification accuracy of the presented models are measured using well known bioinformatics datasetsfrom the machine learning repository at University of California Irvine. Empirical results have shown that the proposed hybrid models outperform earlier models with better classification accuracy.
机译:如我们所知,生物信息学正被越来越多地用于改善生活质量。这为机器学习和计算智能技术打开了大门,它们在生物信息学中发挥了重要作用。最近,已将Type-1和Ttype-2模糊逻辑系统引入作为用于预测和分类的新型计算智能方法。它们已成功地在科学和工程学的多个领域中使用,但是,尚未在生物信息学尤其是Type-2模糊逻辑系统中得到充分利用。本文介绍了用于实际生物信息学数据集的特征选择和分类的各种计算智能和混合模型。使用来自加州大学欧文分校的机器学习存储库中的众所周知的生物信息学数据集,可以测量所提出模型的性能和分类准确性。实证结果表明,提出的混合模型以更好的分类精度优于早期模型。

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