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A Hybrid Feature Selection Method Based on Symmetrical Uncertainty and Support Vector Machine for High-Dimensional Data Classification

机译:基于对称不确定度和支持向量机的高维数据分类混合特征选择方法

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MicroRNA (miRNA) is a small, endogenous, and non-coding RNA that plays a critical regulatory role in various biological processes. Recently, researches based on microRNA expression profiles showed a new aspect of multiclass cancer classification. Due to the high dimensionality, however, classification of miRNA expression data contains several computational challenges. In this paper, we proposed a hybrid feature selection method for accurately classification of various cancer types based on miRNA expression data. Symmetrical uncertainty was employed as a filter part and support vector machine with best first search were used as a wrapper part. To validate the efficiency of the proposed method, we conducted several experiments on a real bead-based miRNA expression datasets and the results showed that our method can significantly improve the classification accuracy and outperformed the existing feature selection methods.
机译:MicroRNA(miRNA)是小的内源非编码RNA,在各种生物过程中起着至关重要的调节作用。最近,基于microRNA表达谱的研究显示了多类癌症分类的新方面。但是,由于维数高,miRNA表达数据的分类存在一些计算难题。在本文中,我们提出了一种基于miRNA表达数据的准确分类各种癌症类型的混合特征选择方法。将对称不确定性用作过滤器部分,并将具有最佳优先搜索的支持向量机用作包装器部分。为了验证该方法的有效性,我们在基于真实珠子的miRNA表达数据集上进行了多次实验,结果表明我们的方法可以显着提高分类准确性,并且优于现有的特征选择方法。

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