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Impact of Membership and Non-membership Features on Classification Decision: An Empirical Study for Appraisal of Feature Selection Methods

机译:成员和非成员特征对分类决策的影响:特征选择方法评估的实证研究

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In text categorization, the discriminative power of classifiers, dataset characteristics, and construction of the more representative feature set play an important role in classification decisions. Subsequently, in text categorization, filter based feature selection methods are used rather than wrapper and embedded methods. In terms of construction of an illustrative feature set, a number of global and local filter based feature selection methods are used with their respective pros and cons. The inclusion and exclusion of membership and non-membership features in a constructed feature set depends on the discriminative power of the feature selection method. Though, there are few studies which have reported the impact of non-membership features on the classification decision. However, to best of our knowledge, there is no detail study, which calibrates the effectiveness of the feature selection method in terms of inclusion of non-membership features to improve the classification decisions. Consequently, in this paper, we conduct an empirical study to investigate the effectiveness of four well-known filter based feature selection methods, namely IG, χ2, RF, and DF. Subsequently, we perform a case study in the context of classification of the Gang-of-Four software design patterns. The results show that the balance consideration of membership and non-membership features has a positive impact on the performance of the classifier and classification decision can be improved. It has also been concluded that random forest is best among existing methods in considering an equal number of membership and non-membership features and the classifiers show better performance with this method as compare to others.
机译:在文本分类中,分类器的判别力,数据集特征和更具代表性的特征集的构造在分类决策中起着重要作用。随后,在文本分类中,使用基于过滤器的特征选择方法,而不是使用包装和嵌入方法。就说明性特征集的构造而言,许多基于全局和局部滤波器的特征选择方法与它们各自的优缺点一起使用。构造的特征集中成员资格和非成员资格特征的包含和排除取决于特征选择方法的区分能力。但是,很少有研究报告非会员功能对分类决策的影响。但是,据我们所知,没有进行详细的研究,该研究根据包含非成员特征以改善分类决策来校准特征选择方法的有效性。因此,在本文中,我们进行了一项实证研究,以研究四种基于滤波器的著名特征选择方法IG,χ2,RF和DF的有效性。随后,我们在“四人行”软件设计模式分类的背景下进行了案例研究。结果表明,平衡考虑的隶属度和非隶属度特征对分类器的性能有积极的影响,分类决策可以得到改善。还得出结论,在考虑相等数量的隶属和非隶属特征的情况下,随机森林是现有方法中最好的,并且与其他方法相比,分类器显示出更好的性能。

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