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Feature Selection for Support Vector Regression Using Probabilistic Prediction

机译:支持向量回归的概率预测特征选择

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This paper presents a novel wrapper-based feature selection method for Support Vector Regression (SVR) using its probabilistic predictions. The method computes the importance of a feature by aggregating the difference, over the feature space, of the conditional density functions of the SVR prediction with and without the feature. As the exact computation of this importance measure is expensive, two approximations are proposed. The effectiveness of the measure using these approximations, in comparison to several other existing feature selection methods for SVR, is evaluated on both artificial and real-world problems. The result of the experiment shows that the proposed method generally performs better, and at least as well as the existing methods, with notable advantage when the data set is sparse.
机译:本文提出了一种新的基于包装器的基于特征向量的支持向量回归(SVR)的特征预测方法。该方法通过在具有和不具有特征的情况下,在特征空间上聚合SVR预测的条件密度函数之间的差异,来计算特征的重要性。由于此重要程度的精确计算成本很高,因此提出了两种近似方法。与其他几种用于SVR的现有特征选择方法相比,使用这些近似方法进行的度量的有效性在人工和现实问题上均得到了评估。实验结果表明,该方法总体性能较好,至少与现有方法一样好,在数据稀疏的情况下具有明显的优势。

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