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A Novel Feature Selection Scheme and a Diversified-Input SVM-Based Classifier for Sensor Fault Classification

机译:一种新颖的特征选择方案和用于传感器故障分类的基于多样化输入的基于SVM的分类器

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摘要

The efficiency of a binary support vector machine- (SVM-) based classifier depends on the combination and the number of input features extracted from raw signals. Sometimes, a combination of individual good features does not perform well in discriminating a class due to a high level of relevance to a second class also. Moreover, an increase in the dimensions of an input vector also degrades the performance of a classifier in most cases. To get efficient results, it is needed to input a combination of the lowest possible number of discriminating features to a classifier. In this paper, we propose a framework to improve the performance of an SVM-based classifier for sensor fault classification in two ways: firstly, by selecting the best combination of features for a target class from a feature pool and, secondly, by minimizing the dimensionality of input vectors. To obtain the best combination of features, we propose a novel feature selection algorithm that selects m out of M features having the maximum mutual information (or relevance) with a target class and the minimum mutual information with nontarget classes. This technique ensures to select the features sensitive to the target class exclusively. Furthermore, we propose a diversified-input SVM (DI-SVM) model for multiclass classification problems to achieve our second objective which is to reduce the dimensions of the input vector. In this model, the number of SVM-based classifiers is the same as the number of classes in the dataset. However, each classifier is fed with a unique combination of features selected by a feature selection scheme for a target class. The efficiency of the proposed feature selection algorithm is shown by comparing the results obtained from experiments performed with and without feature selection. Furthermore, the experimental results in terms of accuracy, receiver operating characteristics (ROC), and the area under the ROC curve (AUC-ROC) show that the proposed DI-SVM model outperforms the conventional model of SVM, the neural network, and the k-nearest neighbor algorithm for sensor fault detection and classification.
机译:基于二进制支持向量机 - (SVM-)的分类器的效率取决于从原始信号中提取的组合和输入特征的数量。有时,由于与第二类的高度相关性,各个良好特征的组合在鉴别阶段也不表现良好。此外,在大多数情况下,输入载体的尺寸的增加也会降低分类器的性能。为了获得有效的结果,需要输入分类器的最低可能判别特征数的组合。在本文中,我们提出了一种框架,以通过两种方式提高基于SVM的分类器的性能:首先,通过从特征池中选择目标类的最佳特征组合,而是通过最小化输入向量的维度。为了获得最佳的特征组合,我们提出了一种新颖的特征选择算法,其选择具有具有目标类的最大互信息(或相关性)的M个功能和与Nontarget类的最小相互信息。该技术可确保专门选择对目标类敏感的特征。此外,我们提出了一种多元化输入的SVM(DI-SVM)模型,用于多级数据分类问题,以实现我们的第二个目标,这是降低输入向量的尺寸。在该模型中,基于SVM的分类器的数量与数据集中的类数相同。然而,每个分类器被馈送具有由目标类别选择的特征选择方案选择的特征的唯一组合。通过比较从使用和不具有特征选择的实验获得的结果来示出所提出的特征选择算法的效率。此外,在准确度,接收器操作特性(ROC)和ROC曲线(AUC-ROC)下的区域的实验结果表明,所提出的DI-SVM模型优于SVM,神经网络和所述的传统模型K最近邻邻算法,用于传感器故障检测和分类。

著录项

  • 来源
    《Journal of Sensors》 |2018年第3期|共21页
  • 作者

    Jan Sana Ullah; Koo Insoo;

  • 作者单位

    Univ Ulsan Sch Elect Engn Ulsan 44610 South Korea;

    Univ Ulsan Sch Elect Engn Ulsan 44610 South Korea;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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