基于规则和机器学习方法的非法债务催收分类模型

Tae-Ho Kim, Jong-in Lim
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引用次数: 0

摘要

虽然金融当局对讨债公司进行了直接管理和监督,并制定了讨债指导方针,但非法和不公平的讨债行为仍然存在。为了有效防止这种非法和不公平的催收活动,需要利用非结构化数据机器学习等技术,在人力较少的情况下加强对非法催收活动的监控。在本研究中,我们提出了一种非法债务催收的分类模型,该模型将机器学习(如支持向量机(SVM))与基于规则的技术相结合,该技术获得贷款公司的催收记录,并将其转换为文本数据以识别非法活动。此外,该研究还比较了根据机器学习算法进行识别的准确性。研究表明,将基于规则的非法规则与机器学习相结合进行分类的案例比以往研究中仅应用机器学习的分类模型具有更高的准确率。这项研究是首次尝试将基于规则的非法检测规则与机器学习相结合,对非法行为进行分类。如果进一步研究以提高模型的完整性,将大大有助于防止非法讨债活动对消费者的损害。
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A Classification Model for Illegal Debt Collection Using Rule and Machine Learning Based Methods
Despite the efforts of financial authorities in conducting the direct management and supervision of collection agents and bond-collecting guideline, the illegal and unfair collection of debts still exist. To effectively prevent such illegal and unfair debt collection activities, we need a method for strengthening the monitoring of illegal collection activities even with little manpower using technologies such as unstructured data machine learning. In this study, we propose a classification model for illegal debt collection that combine machine learning such as Support Vector Machine (SVM) with a rule-based technique that obtains the collection transcript of loan companies and converts them into text data to identify illegal activities. Moreover, the study also compares how accurate identification was made in accordance with the machine learning algorithm. The study shows that a case of using the combination of the rule-based illegal rules and machine learning for classification has higher accuracy than the classification model of the previous study that applied only machine learning. This study is the first attempt to classify illegalities by combining rule-based illegal detection rules with machine learning. If further research will be conducted to improve the model's completeness, it will greatly contribute in preventing consumer damage from illegal debt collection activities.
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