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Feature selection method using support vector machine classifier

机译:支持向量机分类器的特征选择方法

摘要

Identification of a determinative subset of features from within a large set of features is performed by training a support vector machine to rank the features according to classifier weights, where features are removed to determine how their removal affects the value of the classifier weights. The features having the smallest weight values are removed and a new support vector machine is trained with the remaining weights. The process is repeated until a relatively small subset of features remain that is capable of accurately separating the data into different patterns or classes. The method is applied for selecting the smallest number of genes that are capable of accurately distinguishing between medical conditions such as cancer and non-cancer.
机译:通过训练支持向量机来根据分类器权重对特征进行排序,从而从一大组特征中识别出确定的特征子集,在此过程中,对特征进行移除,以确定其移除如何影响分类器权重的值。删除具有最小权重值的特征,并使用剩余权重训练新的支持向量机。重复该过程,直到剩下相对较小的特征子集,该子集能够将数据准确地分为不同的模式或类别。该方法用于选择能够准确地区分诸如癌症和非癌症之类的医学状况的最小数量的基因。

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