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Higher order feature selection for text classification

机译:用于文本分类的高阶特征选择

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In this paper. we present the MIFS-C variant of the mutual information feature-selection algorithms. We present an algorithm to find the optimal value of the redundancy parameter, which is a key parameter in the MIFS-type algorithms. Furthermore, we present an algorithm that speeds up the execution time of all the MIFS variants. Overall, the presented MIFS-C has comparable classification accuracy (in some cases even better) compared with other MIFS algorithms, while its running time is faster. We compared this feature selector with other feature selectors, and found that it performs better in most cases. The MIFS-C performed especially well for the breakeven and F-measure because the algorithm can be tuned to optimise these evaluation measures.
机译:在本文中。我们提出了互信息特征选择算法的MIFS-C变体。我们提出一种算法来找到冗余参数的最优值,该参数是MIFS类型算法中的关键参数。此外,我们提出了一种算法,可以加快所有MIFS变体的执行时间。总体而言,与其他MIFS算法相比,本文提出的MIFS-C具有可比的分类精度(在某些情况下甚至更高),而其运行时间更快。我们将此功能选择器与其他功能选择器进行了比较,发现它在大多数情况下表现更好。 MIFS-C在盈亏平衡和F度量方面表现特别出色,因为可以对算法进行优化以优化这些评估度量。

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