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Protein sub-nuclear location by fusing AAC and PSSM features based on sequence information

机译:通过基于序列信息融合AAC和PSSM功能来蛋白质亚核位置

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To achieve good performance on Protein sub-nuclear location, one needs to extract a powerful representation containing rich information for identification. Various favorable techniques have been proposed, but it is believed that the single representations, containing one-sided information of protein sequence, are insufficient for discrimination. To this end, we in this paper propose the fused representations by integrating two single representations, the amino acid composition (AAC) and the position specific scoring matrix (PSSM). Due to two forms of PSSM, PsePSSM and GreyPSSM, two integrated representations, called briefly AACPsePSSM and AACGreyPSSM, are given. To evaluate the proposed representations, a benchmark data set is employed and the classical K nearest neighbor (KNN) is adopted classifier. And the experimental results show our proposed fusion representations outperform AAC and PSSM.
机译:为了在蛋白质亚核位置上获得良好的性能,需要提取一种包含丰富信息以进行识别的功能强大的表示形式。已经提出了各种有利的技术,但是据信包含蛋白质序列的单方面信息的单一表示不足以进行区分。为此,我们在本文中通过融合两个单一表示(氨基酸组成(AAC)和位置特定评分矩阵(PSSM))来提出融合表示。由于PSSM有两种形式,即PsePSSM和GreyPSSM,因此给出了两种集成表示形式,简称为AACPsePSSM和AACGreyPSSM。为了评估提出的表示,使用基准数据集,并采用经典的K最近邻(KNN)分类器。实验结果表明,我们提出的融合表示优于AAC和PSSM。

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