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A new approach to enhance the performance of decision tree for classifying gene expression data

机译:一种增强决策树性能的基因表达数据分类新方法

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Background Gene expression data classification is a challenging task due to the large dimensionality and very small number of samples. Decision tree is one of the popular machine learning approaches to address such classification problems. However, the existing decision tree algorithms use a single gene feature at each node to split the data into its child nodes and hence might suffer from poor performance specially when classifying gene expression dataset. Results By using a new decision tree algorithm where, each node of the tree consists of more than one gene, we enhance the classification performance of traditional decision tree classifiers. Our method selects suitable genes that are combined using a linear function to form a derived composite feature. To determine the structure of the tree we use the area under the Receiver Operating Characteristics curve (AUC). Experimental analysis demonstrates higher classification accuracy using the new decision tree compared to the other existing decision trees in literature. Conclusion We experimentally compare the effect of our scheme against other well known decision tree techniques. Experiments show that our algorithm can substantially boost the classification performance of the decision tree.
机译:背景基因表达数据分类由于具有大尺寸和非常少量的样品而具有挑战性。决策树是解决此类分类问题的流行机器学习方法之一。但是,现有的决策树算法在每个节点上使用单个基因功能将数据拆分为其子节点,因此,特别是在对基因表达数据集进行分类时,可能会遇到性能不佳的问题。结果通过使用一种新的决策树算法,其中树的每个节点都包含一个以上的基因,我们提高了传统决策树分类器的分类性能。我们的方法选择合适的基因,这些基因使用线性函数进行组合以形成派生的复合特征。为了确定树的结构,我们使用“接收器工作特征”曲线(AUC)下的面积。实验分析表明,与文献中其他现有决策树相比,使用新决策树的分类准确性更高。结论我们通过实验比较了该方案与其他众所周知的决策树技术的效果。实验表明,我们的算法可以大大提高决策树的分类性能。

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