基于移动通信数据的个人信用评价研究

Shaoyong Hong, Yan Zhang, Chun Yang
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引用次数: 1

摘要

随着大数据技术的快速发展,个人信用评估行业进入了一个新阶段。其中,基于移动通信数据的个人信用评价是当前研究的热点之一。然而,由于个人信用评价变量的复杂性和多样性,为了降低模型的复杂性,提高模型的预测精度,我们需要降低输入变量的维数。根据移动通信运营商提供的数据,本文将数据分为训练集和验证集。我们对训练集中数据的每个指标进行相关性分析,并根据所选指标的WOE值计算相应的IV值,然后使用SPSS Modeler对数据进行装箱。使用逻辑回归算法对所选变量进行建模。为了使回归结果更加实用,我们根据逻辑回归的结果提取了评分规则,并将其转换为记分卡的形式,最后验证了模型的有效性。
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Research on Personal Credit Evaluation Based on Mobile Telecommunications Data
With the rapid development of big data technology, the personal credit evaluation industry has entered a new stage. Among them, the evaluation of personal credit based on mobile telecommunications data is one of the hotspots of current research. However, due to the complexity and diversity of personal credit evaluation variables, in order to reduce the complexity of the model and improve the prediction accuracy of the model, we need to reduce the dimension of the input variables. According to the data provided by a mobile telecommunications operator, this paper divides the data into a training sets and verification sets. We perform correlation analysis on each indicator of the data in the training set, and calculate the corresponding IV value based on the WOE value of the selected index, then binning data with SPSS Modeler. The selected variables were modeled using a logistic regression algorithm. In order to make the regression results more practical, we extract the scoring rules according to the results of logistic regression, convert them into the form of score cards, and finally verify the validity of the model.
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