期刊论文详细信息
Journal of Applied & Computational Mathematics
Mathematical Model for Predicting Debt Repayment
article
Wijewardhana PDUA1 
[1] Department of Mathematics, University of Colombo
关键词: Modeling;    Regression;    Bankruptcy;    Debt;   
来源: Hilaris Publisher
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【 摘 要 】

Debt collection is a massive industry, with in USA alone more than $50 billion recovered each year. However, the information available is often limited and incomplete, and predicting whether a given debtor would repay is inherently a challenging task. This has amplified research on debt recovery classification and prediction models of late. This report considers three main mathematical, data mining and statistical models in debt recovery classification, in logistic regression, artificial neural networks and affinity analysis. It also compares the effectiveness of the above mentioned tools in evaluating whether a debt is likely to be repaid. The construction and analysis of the models were based on a fairly large unbalanced data sample provided by a debt collection agency. It has been shown that all three models could classify the debt repayments with a considerable accuracy, if the assumptions of the models are satisfied.

【 授权许可】

Unknown   

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