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TruEnd程序:处理信贷数据中的尾随零余额

The TruEnd-procedure: treating trailing zero-valued balances in credit data

Journal of the Operational Research Society · 2025
被引 0
ABS 3

中文导读

提出一种新程序,用于识别贷款还款历史中因操作延迟导致的虚假尾随零余额,剔除这些数据后能显著提升风险事件时间和严重性预测的准确性,对信用损失估计和IFRS 9合规有价值。

Abstract

A novel procedure is presented for finding the true but latent endpoints within the repayment histories of individual loans. The monthly observations beyond these true endpoints are false, largely due to operational failures that delay account closure, thereby corrupting some loans. Detecting these false observations is difficult at scale since each affected loan history might have a different sequence of trailing zero (or very small) month-end balances. Identifying these trailing balances requires an exact definition of a “small balance,” which our method informs. We demonstrate this procedure and isolate the ideal small-balance definition using two different South African datasets. Evidently, corrupted loans are remarkably prevalent and have excess histories that are surprisingly long, which ruin the timing of risk events and compromise any subsequent time-to-event model, e.g., survival analysis. Having discarded these excess histories, we demonstrably improve the accuracy of both the predicted timing and severity of risk events, without materially impacting the portfolio. The resulting estimates of credit losses are lower and less biased, which augurs well for raising accurate credit impairments under IFRS 9. Our work therefore addresses a pernicious data error, which highlights the pivotal role of data preparation in producing credible forecasts of credit risk.

信贷风险数据清洗生存分析信用损失估计