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Filter-wrapper approach to feature selection of GPCR protein

机译:滤波器包装方法GPCR蛋白的特征选择

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Protein dataset contains high dimensional feature space. These features may encompass of noise and not relatively to protein function. Therefore, we need to select the appropriate features to improve the efficiency and performance of the classifier. Feature selection is an important step in any classification tasks. Filter methods are important in order to obtain only the relevant features to the class and to avoid redundancy. While wrapper methods are applied to get optimized features and better classification accuracy. This paper proposed a feature selection strategy for hierarchical classification of G-Protein-Coupled Receptors (GPCR) based on hybridization of correlation feature selection (CFS) filter and genetic algorithm (GA) wrapper methods. The optimum features were then classified using K-nearest neighbor algorithm. These methods are capable to reduce the features and achieved comparable classification accuracy at every hierarchy level. The results also shown that the integration between CFS and GA is capable of searching the optimum features for hierarchical protein classification.
机译:蛋白质数据集包含高维特征空间。这些特征可以包括噪声,而不是蛋白质功能。因此,我们需要选择适当的功能以提高分类器的效率和性能。特征选择是任何分类任务的一个重要步骤。过滤方法对于仅获取课程的相关功能并避免冗余,是重要的。虽然包装方法应用于获得优化的功能和更好的分类准确性。本文提出了一种基于相关特征选择(CFS)滤波器和遗传算法(GA)包装方法的相关特征(CFS)杂交的G蛋白偶联受体(GPCR)分层分类的特征选择策略。然后使用k-最近邻算法对最佳特征进行分类。这些方法能够降低特征,并在每个层级级别实现可比的分类精度。结果还表明,CFS和GA之间的集成能够搜索分层蛋白质分类的最佳特征。

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