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A THREE-STAGE FEATURE SELECTION USING QUADRATIC PROGRAMMING FOR CREDIT SCORING

机译:基于二次编程的信用评分三阶段特征选择

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摘要

Many classification techniques have been successfully applied to credit scoring tasks. However, using them blindly may lead to unsatisfactory results. Generally, credit dalasets are large and are characterized by redundant features and nonrelevanl data. Hence, classification techniques and model accuracy could be hampered. To overcome this problem, this study explores a variety of filter and wrapper feature selection methods for reducing nonrelevanl features. We argue that these two types of selection techniques are complementary to each other. A fusion strategy is then proposed to sequentially combine the ranking criteria of multiple filters and a wrapper method. Evaluations on three credit dalasets show that feature subsets selected by fusion methods are either superior to or at least as adequate as those selected by individual methods.
机译:许多分类技术已成功应用于信用评分任务。但是,盲目使用它们可能会导致效果不理想。通常,信用数据量很大,并且具有冗余功能和不可复制的数据。因此,分类技术和模型准确性可能受到阻碍。为了克服这个问题,本研究探索了多种过滤器和包装器特征选择方法,以减少非残留特征。我们认为这两种选择技术是互补的。然后提出一种融合策略,以按顺序组合多个过滤器的排序标准和包装方法。对三个信用数据集的评估表明,通过融合方法选择的特征子集优于或至少与通过单独方法选择的特征子集相同或至少足够。

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  • 来源
    《Applied Artificial Intelligence 》 |2013年第10期| 721-742| 共22页
  • 作者单位

    LARODEC, ISG, University of Tunis, 41 rue de la Liberte, 2000 Le Bardo, Tunis, Tunisia;

    ESSEC, University of Tunis, Montfleury, Tunis, Tunisia;

    LARODEC, ISG, University of Tunis, Le Bardo, Tunis, Tunisia;

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