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Partial correlation based variable selection approach for multivariate data classification methods

机译:基于偏相关的变量选择方法用于多元数据分类方法

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摘要

Selection of meaningful features characterizing the given set of system observations into distinct classes is crucial in all classification problems. A new significant attribute selection method based on partial correlation coefficient matrix (PCCM) is proposed. Many well studied representative classification data sets with different sizes and types are selected for investigating the performance. Linear Discriminant Analysis (LDA) combined with dimensional reduction techniques is employed as benchmark classifier to validate the new approach. The correlated attributes are arranged in order of their significance to multi-group data classification performance before applying the classification algorithm. Varying number of attributes are retained for the final analysis after PCCM based selection and progressive prediction accuracies are used to compare existing algorithms with the proposed feature selection algorithm. LDA results after PCCM based attribute selection show improvement in prediction efficiencies. It is shown that the PCCM based method is a better variable selection method compared to existing methods for obtaining the optimum set of predictor variables.
机译:选择有意义的特征以将给定的系统观察结果划分为不同的类别对于所有分类问题都是至关重要的。提出了一种基于偏相关系数矩阵(PCCM)的重要属性选择方法。选择了许多经过深入研究的具有不同大小和类型的代表性分类数据集,以研究其性能。线性判别分析(LDA)与降维技术相结合被用作基准分类器,以验证新方法。在应用分类算法之前,按对多组数据分类性能的重要性顺序排列相关属性。在基于PCCM的选择和渐进预测精度用于将现有算法与提出的特征选择算法进行比较之后,保留各种数量的属性用于最终分析。基于PCCM的属性选择后的LDA结果显示了预测效率的提高。结果表明,与现有的获得最优预测变量集的方法相比,基于PCCM的方法是一种更好的变量选择方法。

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