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Searching optimal sigma parameter in Radial Basis Kernel Support Vector Machine for classification of HIV sub-type viruses

机译:在径向基础内搜索最佳Sigma参数核心支持向量机,用于艾滋病毒子型病毒分类

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We propose intelligent methods to classify two different HIV virus types, i.e., R5X4 and R5 or X4 with low computational complexity. Since R5X5 virus has same the features of R5 and X4 viruses, diagnosis of R5X4 can not be determined easily. In this study, the statistical data of R5X4, R5 and X4 was obtained by accessible residues and modelled by Auto-regressive (AR) model. After that the pre-processed data was used for determining the optimal σ value in Radial Basis Kernel of Support Vector Machine (SVM).
机译:我们提出智能方法来分类两种不同的HIV病毒类型,即R5X4和R5或X4,具有低计算复杂度。由于R5X5病毒具有相同的R5和X4病毒的特征,因此无法轻易确定R5X4的诊断。在该研究中,通过可访问的残留物获得R5X4,R5和X4的统计数据,并通过自动回归(AR)模型建模。之后,预处理的数据用于确定支持向量机(SVM)的径向基础内核中的最佳σ值。

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