一种混合特征选择规则测度及其在系统评价中的应用

B. Ouhbi, Mostafa Kamoune, B. Frikh, E. Zemmouri, Hicham Behja
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引用次数: 5

摘要

系统综述是为特定研究问题提供可靠答案的科学过程。从使用人工方法到决策支持工具的重大转变,通过减少所需的时间和努力,提供半自动的筛选阶段。文本分类有助于确定关联规则的统计显著性水平,从而减少系统评价的工作量。文献中提出了几种为基于规则的分类器生成规则集的方法。在本文中,我们证明了一条规则的统计度量和语义度量可以结合起来,并有效地计算为混合特征选择规则度量(HFSRM)。在此基础上,结合经典的Rules7和HFSRM算法,提出了一种新的Rules7-混合特征选择算法(Rules7-HFSRM),并将其应用于系统评价问题。我们的结果表明,我们的算法在系统评审环境中显著优于最先进的基准算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid feature selection rule measure and its application to systematic review
Systematic review is the scientific process that provides reliable answers to a particular research question. There is a significant shift from using manual human approach to decision support tools that provides a semi-automated screening phase by reducing the required time and effort. Text classification is useful in determining the statistical significance level of association rules to reduce workload in the systematic review. Several approaches to generate a Rule set for rule based classifiers were proposed in the literature. In this paper, we show that statistic as well as semantic measures of a rule can be combined and effectively computed as a hybrid feature selection rule measure (HFSRM). Moreover, we propose a new algorithm called Rules7-hybrid feature selection (Rules7-HFSRM) by combining the classical algorithm Rules7 and the HFSRM and then used it on the systematic review problem. Our results show that our algorithm significantly outperforms the state-of-the-art benchmark algorithms in the systematic review context.
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