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Business-Oriented Feature Selection for Hybrid Classification Model of Credit Scoring

机译:信用评分混合分类模型的以企业为导向的功能选择

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Application of predictive models on the basis of data mining confirmed its expediency in solving many economic problems. One of the crucial issues is the assessment of the borrower's creditworthiness on the basis of credit scoring models. This paper proposed an ensemble-based technique combining selected base classification models with business-specific feature selection add-on to increase the classification accuracy of real-life case of credit scoring. As the model limitations have been used easy-understandable algorithms on open-source software (R programming). The statistical results proved that hybrid approach for user-defined variables can be more than useful for ensemble binary classification model. It is shown that a great improvement can be reached by applying hybrid approach to feature selection process on additional variables (more descriptive ones that were built on initial features) for this real-life case with limited computational resources.
机译:预测模型在数据挖掘的基础上的应用证实了解决许多经济问题的权宜之计。其中一个至关重要的问题是在信用评分模式的基础上评估借款人的信誉。本文提出了一种基于合奏的技术,将所选基础分类模型与企业特定的特征选择加载作用相结合,以提高信用评分的现实生活案例的分类准确性。由于模型限制已在开源软件(R编程)上使用易于理解的算法。统计结果证明了用户定义变量的混合方法可能比集合二进制分类模型更有用。结果表明,通过对具有有限的计算资源的实际情况,可以通过应用混合方法来实现混合方法来达到特征选择过程(在初始特征上构建的更多描述)。

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