基于骆驼模型的社会经济公司风险自动预测

Joseph A. Gallego-Mejia, D. Martín-Vega, Fabio Gonzalez
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引用次数: 0

摘要

政府必须对社会经济企业进行监督和检查。然而,检查所有的see是不可能的,因为see数量多,检查员数量少。我们提出了一个基于机器学习方法的预测模型。利用各SEE提供的历史数据,采用随机森林算法对方法进行训练。连续三个时期的数据被串联起来。提出的方法使用这些周期作为输入数据,并预测第四个周期中每个SEE的风险。该模型达到了76%的总体准确率。此外,它在预测SEE的高风险方面取得了良好的准确性。我们发现,法律性质和过期投资组合的变化是SEE未来风险的良好预测指标。因此,可以通过监督机器学习方法来预测未来一段时间内SEE的风险。预测SEE的高风险可以通过只关注高风险SEE来改善每个检查员的日常工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk Automatic Prediction for Social Economy Companies using Camels
Governments have to supervise and inspect social economy enterprises (SEEs). However, inspecting all SEEs is not possible due to the large number of SEEs and the low number of inspectors in general. We proposed a prediction model based on a machine learning approach. The method was trained with the random forest algorithm with historical data provided by each SEE. Three consecutive periods of data were concatenated. The proposed method uses these periods as input data and predicts the risk of each SEE in the fourth period. The model achieved 76\% overall accuracy. In addition, it obtained good accuracy in predicting the high risk of a SEE. We found that the legal nature and the variation of the past-due portfolio are good predictors of the future risk of a SEE. Thus, the risk of a SEE in a future period can be predicted by a supervised machine learning method. Predicting the high risk of a SEE improves the daily work of each inspector by focusing only on high-risk SEEs.
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