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A Novel Approach to Protein Structure Prediction Using PCA Based Extreme Learning Machines and Multiple Kernels

机译:基于PCA的极端学习机和多个核的蛋白质结构预测的一种新方法

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摘要

In the area of bio-informatics, large amount of data is harvested with functional and genetic features of proteins. The structure of protein plays an important role in its biological and genetic functions. In this study, we propose a protein structure prediction scheme based novel learning algorithms - the extreme learning machine and the Support Vector Machine using multiple kernel learning, The experimental validation of the proposed approach on a publicly available protein data set shows a significant improvement in performance of the proposed approach in terms of accuracy of classification of protein folds using multiple kernels where multiple heterogeneous feature space data are available. The proposed method provides the higher recognition ratio as compared to other methods reported in previous studies.
机译:在生物信息学的领域中,利用蛋白质的功能和遗传特征来收获大量数据。蛋白质的结构在其生物和遗传功能中起着重要作用。在这项研究中,我们提出了一种基于蛋白质结构预测方案的新型学习算法 - 极端学习机和使用多个内核学习的支持向量机,所提出的方法对公开的蛋白质数据集的实验验证表现出性能的显着提高在使用多个异构特征空间数据可用的多个内核的蛋白质折叠分类的准确性方面提出的方法。与先前研究中报道的其他方法相比,该方法提供了较高的识别比。

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