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Credit Card Approval Prediction by Non-negative Tensor Factorization

机译:非负面张量分解的信用卡批准预测

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With the increasing number of credit card applications, banks are opting towards the use of prediction-based algorithms as opposed to manual approval methods. Data analysis has exhibited a strong correlation between several financial and personal factors of a client and the likelihood of said client complying with their respective bank’s credit policies. In this paper, we propose the use of the PARAFAC tensor factorization method to predict and grant credit cards to applicants based on the customers’ activity history. We used six financial and personal factors and constructed a tensor by reducing them into three factors. We predicted the resulting factors through the use of alternating least squares algorithm with an emphasis on error minimization and finally re-constructed the original tensor. Using this tensor factorization, the machine-learned which of these applicants are most likely to accumulate bad debts and granted or rejected the applications based on the prediction.
机译:随着越来越多的信用卡应用程序,银行正在选择使用基于预测的算法,而不是手动批准方法。数据分析在客户的若干财务和个人因素之间表现出强烈的相关性以及表示客户遵守各自银行信贷政策的可能性。在本文中,我们提出了使用Parafacac张量分解方法,以根据客户的活动历史来预测和授予申请人的信用卡。我们使用了六种财务和个人因素,并通过将它们减少到三个因素来构建张量。我们通过使用具有强调误差最小化的交替最小二乘算法来预测所产生的因素,并且最终重新构建原始张量。使用这种张量分解,机器学习了哪些申请人最有可能根据预测累积或拒绝或拒绝应用程序。

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