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Feature Selection of Gene expression data for Cancer Classification using SCF with SVM

机译:使用SCF与SVM的癌症分类基因表达数据的特征选择

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Feature Selection is the technique used to select the features from microarray dataset. The selected feature must provide high accuracy to the intended classifier. An ordinary microarray dataset will have the characteristics such as high dimensionality limited sample and a large amount of noisy data. This basic features of microarray dataset will reduce the classification accuracy and elevate the run time of the proposed algorithm. To overcome this problem, dimensionality reduction techniques are deployed on the proposed dataset. Different dimensionality reduction techniques are available and they can be mainly categorised as feature selection and feature extraction. This research work focuses mainly on the filter based feature selection method. The proposed filter based combination method for performing dimensionality reduction is named as Feature selection of Gene expression data for Cancer Classification by using Score based Criteria Fusion (SCF) with SVM. The primary aim of the proposed research work is to minimize the classification time and make significant progression in the accuracy of algorithm.
机译:功能选择是用于从MicroArray数据集中选择功能的技术。所选功能必须为预期分类器提供高精度。普通的微阵列数据集将具有高维度有限的样本和大量嘈杂数据等特征。微阵列数据集的这种基本功能将降低分类准确性并提升所提出的算法的运行时间。为了克服这个问题,在建议的数据集上部署了维度减少技术。可用的不同维度减少技术,它们可以主要分为特征选择和特征提取。该研究工作主要侧重于基于滤波器的特征选择方法。通过使用基于SVM的评分标准融合(SCF),所提出的基于滤波器的组合方法被命名为癌症分类的基因表达数据的特征选择。拟议研究工作的主要目的是最小化分类时间,并以算法的准确性提出显着进展。

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