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Accelerated Recursive Feature Elimination Based on Support Vector Machine for Key Variable Identification

机译:基于支持向量机的关键特征识别加速递归特征消除

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摘要

Key variable identification for classifications is related to many trouble-shooting problems in process industries. Recursive feature elimination based on support vector machine (SVM-RFE) has been proposed recently in application for feature selection in cancer diagnosis. In this paper, SVM-RFE is used to the key variable selection in fault diagnosis, and an accelerated SVM-RFE procedure based on heuristic criterion is proposed. The data from Tennessee Eastman process (TEP) simulator is used to evaluate the effectiveness of the key variable selection using accelerated SVM-RFE (A-SVM-RFE). A-SVM-RFE integrates computational rate and algorithm effectiveness into a consistent framework. It not only can correctly identify the key variables, but also has very good computational rate. In comparison with contribution charts combined with principal component aralysis (PCA) and other two SVM-RFE algorithms, A-SVM-RFE performs better. It is more fitting for industrial application.
机译:分类的关键变量识别与过程工业中的许多故障排除问题有关。最近已经提出了基于支持向量机(SVM-RFE)的递归特征消除技术,用于癌症诊断中的特征选择。本文将SVM-RFE用于故障诊断中的关键变量选择,并提出了一种基于启发式准则的加速SVM-RFE程序。来自田纳西州伊士曼过程(TEP)仿真器的数据用于评估使用加速SVM-RFE(A-SVM-RFE)进行关键变量选择的有效性。 A-SVM-RFE将计算速度和算法有效性集成到一个一致的框架中。它不仅可以正确识别关键变量,而且具有很好的计算速度。与贡献图结合主成分分析(PCA)和其他两种SVM-RFE算法相比,A-SVM-RFE的性能更好。它更适合工业应用。

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