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Prediction of subcelluar localization using maximal-margin spherical support vector machine

机译:用最大余量球面支持向量机预测亚细胞定位

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Prediction of subcellular localization of various proteins is an important and well-studied problem. Each compartment in cell has specific tasks, and proteins in each compartment are synthesized to fulfill these tasks, and for this reason, an effective predictive system for protein subcellular localization is crucial. Therefore, we propose a prediction based on maximal margin sphere-structure multi-class support vector, and use some different types of composition in amino acid for features. The experimental results show that the proposed method is better than transitional support vector machine.
机译:预测各种蛋白质在亚细胞中的定位是一个重要且经过充分研究的问题。细胞中的每个区室都有特定的任务,并且每个区室中的蛋白质都是合成的,可以完成这些任务,因此,有效的蛋白质亚细胞定位预测系统至关重要。因此,我们提出了一种基于最大余量球结构多类支持向量的预测方法,并使用氨基酸中一些不同类型的成分作为特征。实验结果表明,该方法优于过渡支持向量机。

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