Research on Computer Intelligent Risk Prediction Model and Identification Algorithm with Machine Learning

Jiang Xiangjian
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Abstract

With the rapid development of economics, consumer lending and trust loan have gained unprecedented growth all over the world. Due to the serious consequence of borrowers' breach of contract, banks need a valid method to help managing credit risk. Till now, the most common way is to set up blacklist and whitelist according to previous loan records to assist bank in deciding whether to offer loan to someone or not. In other words, there is a fixed threshold to filter customers. Once borrower has a number of violations beyond the threshold, the bank will add him into the blacklist which means the man cannot get debt in the future according to his poor credit. This simple method may be useful but it also has some inevitable downsides resulting from its empirical nature. For instance, this approach still needs to be conducted with countless bank workers, accounting for its failure in satisfying soaring need in current changeable loan scenario. Meanwhile, the manually set threshold is not sensitive to massive data, which is more than unavoidable in today's life. To the best of our knowledge, machine learning methods are suitable to deal with huge amount of data and make accurate predictions. Considering the characteristics in consumer lending and trust loan, we put forward a new algorithm model implemented with machine learning knowledge to determine whether or not a loan should be granted. The method contains some cutting-edge machine learning ideas such as tree model and neural network. This new credit scoring framework can solve above problems effectively and control the expenditure within an acceptable range. In the experiments, we evaluate our method extensively on bank credit dataset, and the results demonstrate that it outperforms most credit scoring and risk prediction methods, achieving an AUC of 0.840 on the Test Set.
基于机器学习的计算机智能风险预测模型及识别算法研究
随着经济的快速发展,消费贷款和信托贷款在世界范围内获得了前所未有的增长。由于借款人违约的严重后果,银行需要一种有效的方法来帮助管理信用风险。到目前为止,最常见的方法是根据以往的贷款记录建立黑名单和白名单,以帮助银行决定是否向某人提供贷款。换句话说,有一个固定的阈值来过滤客户。一旦借款人多次违规超过门槛,银行将把他加入黑名单,这意味着该男子今后将无法获得债务,因为他的信用不良。这种简单的方法可能是有用的,但由于它的经验性质,它也有一些不可避免的缺点。例如,这种方法仍然需要与无数的银行工作人员进行,这是在当前多变的贷款情况下无法满足飙升需求的原因。同时,手动设置的阈值对海量数据不敏感,这在今天的生活中是不可避免的。据我们所知,机器学习方法适合处理大量数据并做出准确的预测。考虑到消费贷款和信托贷款的特点,提出了一种利用机器学习知识实现的新算法模型,以确定是否应该授予贷款。这种新的信用评分框架可以有效地解决上述问题,并将支出控制在可接受的范围内。在实验中,我们在银行信用数据集上对我们的方法进行了广泛的评估,结果表明它优于大多数信用评分和风险预测方法,在测试集上实现了0.840的AUC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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