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Event Entry Time Prediction in Financial Business Processes Using Machine Learning - A Use Case From Loan Applications

机译:使用机器学习的金融业务流程中的事件进入时间预测 - 来自贷款应用程序的用例

摘要

The recent financial crisis has forced politics to overthink regulatory structures and compliance mechanisms for the financial industry. Faced with these new challenges the financial industry in turn has to reevaluate their risk assessment mechanisms. While approaches to assess financial risks, have been widely addressed, the compliance of the underlying business processes is also crucial to ensure an end-to-end traceability of the given business events. This paper presents a novel approach to predict entry times and other key performance indicators of such events in a business process. A loan application process is used as a data example to evaluate the chosen feature modellings and algorithms.
机译:最近的金融危机迫使政治机构过分考虑金融业的监管结构和合规机制。面对这些新挑战,金融业必须重新评估其风险评估机制。尽管评估财务风险的方法已得到广泛解决,但基本业务流程的合规性对于确保给定业务事件的端到端可追溯性也至关重要。本文提出了一种新颖的方法来预测此类事件在业务流程中的进入时间和其他关键绩效指标。贷款申请过程用作数据示例,以评估所选的特征建模和算法。

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