Accurate Classification of Biological Data Using Ensembles

M. Bhardwaj, D. Dash, Vasudha Bhatnagar
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Abstract

Predicting the class to which a given protein sequence belongs is a challenging research area in bioinformatics. Machine learning techniques have been successfully applied to protein prediction problems like allergen prediction, mitochondrial prediction and toxin prediction. Physicochemical properties derived from sequences of amino acids have been commonly used for this purpose. In this paper, we propose an SVM based ensemble method for classification of protein datasets. The constituent classifiers of the ensemble are generated in a sequential manner, each one attempting to rectify mistakes made by previous one. The ensemble is aptly called Self-Chastisting Ensemble (SCE) because of the iterative refinement each classifier carries out over the previous one. We present two versions of the algorithm: SCE-Bal for balanced datasets and SCE-Imbal for imbalanced datasets. Empirical results further demonstrate that the algorithm delivers superior performance using simple and computationally efficient features (amino acid composition and dipeptide composition) compared to other machine learning methods using complex feature sets.
使用集成的生物数据准确分类
在生物信息学中,预测蛋白质序列所属的类别是一个具有挑战性的研究领域。机器学习技术已经成功地应用于蛋白质预测问题,如过敏原预测、线粒体预测和毒素预测。从氨基酸序列中获得的物理化学性质通常用于此目的。本文提出了一种基于支持向量机的蛋白质数据集集成分类方法。集合的组成分类器以顺序的方式生成,每个分类器都试图纠正前一个分类器所犯的错误。由于每个分类器对前一个分类器进行迭代细化,因此该集成被恰当地称为自惩戒集成(Self-Chastisting ensemble, SCE)。我们提出了两个版本的算法:用于平衡数据集的SCE-Bal和用于不平衡数据集的SCE-Imbal。实证结果进一步表明,与使用复杂特征集的其他机器学习方法相比,该算法使用简单且计算效率高的特征(氨基酸组成和二肽组成)提供了优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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