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A comparative study of multi-classification methods for protein fold recognition

机译:蛋白质折叠识别多分类方法的比较研究

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摘要

Fold recognition based on sequence-derived features is a complex multi-class classification problem. In the current study, we comparatively assess five different classification techniques, namely multilayer perceptron and probabilistic neural networks, nearest neighbour classifiers, multi-class support vector machines and classification trees for fold recognition on a reference set of proteins that are organised in 27 folds and are described by 125-dimensional vectors of sequence-derived features. We evaluate all classifiers in terms of total accuracy, mutual information coefficient, sensitivity and specificity measurements using a ten-fold cross-validation method. A polynomial support vector machine and a multilayer perceptron of one hidden layer of 88 nodes performed better and achieved satisfactory multi-class classification accuracies (42.8% and 42.1%, respectively) given the complexity of the problem and the reported similar classification performances of other researchers.
机译:基于序列特征的折叠识别是一个复杂的多类分类问题。在当前的研究中,我们比较评估了五种不同的分类技术,即多层感知器和概率神经网络,最近邻分类器,多类支持向量机和分类树,用于对蛋白质的参考集合进行折叠识别,这些蛋白质以27倍的折叠度进行组织和由序列特征的125维向量描述。我们使用十倍交叉验证方法在总准确性,互信息系数,敏感性和特异性测量方面评估所有分类器。考虑到问题的复杂性和其他研究人员报告的相似分类性能,一台多项式支持向量机和一个包含88个节点的隐藏层的多层感知器的性能更好,并且达到了令人满意的多类分类精度(分别为42.8%和42.1%) 。

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