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Identifying nuclear protein subcellular localization using feature dimension reduction method

机译:使用特征尺寸减少方法鉴定核蛋白质亚细胞定位

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The subcellular location of a protein is closely correlated to its function. Facing the deluge of protein sequences generated in the post-genomic age, it is necessary to develop useful machine learning tools to identify the protein subcellular localization. DR (Dimensional Reduction) method is one of most famous machine learning tools. Some researchers have begun to explore DR method for computer vision problems such as face recognition, few such attempts have been made for classification of high-dimensional protein data sets. In this paper, DR method is employed to reduce the size of the features space. Comparison between linear DR methods (PCA and LDA) and nonlinear DR methods (KPCA and KLDA) is performed to predict subcellular localization of nuclear proteins. Experimental results thus obtained are quite encouraging, which indicate that the DR method is used effectively to deal with this complicated problem of viral proteins subcellular localization prediction. The overall jackknife success rate with KLDA is the highest relative to the other DR methods.
机译:蛋白质的亚细胞位置与其功能密切相关。面对在后基因组年龄在后期产生的蛋白质序列的酝酿,有必要开发有用的机器学习工具以鉴定蛋白质亚细胞定位。 DR(尺寸减少)方法是最着名的机器学习工具之一。一些研究人员已经开始探索电脑视觉问题的DR方法,例如面部识别,已经对高维蛋白质数据集的分类进行了很少的这种尝试。在本文中,采用DR方法来减小特征空间的大小。线性DR方法(PCA和LDA)和非线性DR方法(KPCA和KLDA)之间的比较以预测核蛋白的亚细胞定位。由此获得的实验结果非常令人鼓舞,这表明DR方法有效地用于处理病毒蛋白亚细胞定位预测的这种复杂的问题。与KLDA的整体千刀成功率相对于其他DR方法最高。

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