Credit scoring using system log data in the internet bank

S. Kyeong, Daehee Kim, Jinho Shin
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Abstract

This study is the first to examine whether the performance of credit rating, one of the most important data-based decision-making of banks, can be improved by using system log data that is extensively accumulated inside the bank for system operation. This study uses the log data recorded for the mobile app system of Kakaobank, a leading internet bank used by more than 14 million people in Korea. After generating candidate variables from Kakaobank's vast log data, we develop a credit scoring model by utilizing variables with high information values. Consequently, the discrimination power of the new model compared to the credit bureau grades was improved by 2.4% points based on the K-S statistics. Therefore, the results of this study imply that if a bank utilizes its log data that have already been extensively accumulated inside the bank, decision-making systems, including credit scoring, can be efficiently improved at a low cost.
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在网上银行中使用系统日志数据进行信用评分
信用评级是银行最重要的基于数据的决策之一,本研究首次考察了利用银行内部广泛积累的系统日志数据进行系统运行,能否提高信用评级的绩效。这项研究使用了kakaoobank移动应用程序系统的日志数据,kakaoobank是韩国领先的互联网银行,拥有超过1400万名用户。在从Kakaobank的大量日志数据中生成候选变量后,我们利用具有高信息价值的变量开发了信用评分模型。因此,以K-S为标准,新模型的辨别能力比信用机关等级提高了2.4%。因此,本研究的结果表明,如果银行利用其内部已经广泛积累的日志数据,可以以低成本有效地改进包括信用评分在内的决策系统。
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