机器学习模型在公司破产预测中的应用

Hanxu Chang
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引用次数: 4

摘要

随着经济的增长,企业数量逐渐增加,破产数量也随之增加。因此,预测破产变得越来越重要。它不仅可以帮助做出正确的决策,还可以减少损失。预测公司破产状况的传统方法有几种。但传统的破产预测方法主要基于人的主观判断,缺乏定量分析。因此,传统方法必须与新的先进的机器学习算法竞争。机器学习算法在客观数据分析的基础上探索模式,发展迅速,学习能力强。所以我们要把机器学习应用到企业破产的预测中。我们使用2007-2013年波兰公司破产情况的数据,分别使用SVM和随机森林算法构建模型。然后,我们进一步使用加权方法来解决样本不平衡问题。研究表明,随机森林在不同年份的公司破产预测准确率均在70%以上,优于SVM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Application of Machine Learning Models in Company Bankruptcy Prediction
With the economy increasing, the number of enterprises increases gradually, and it is accompanied by the growth in quantity of bankruptcies.Therefore, predict bankruptcy is becoming more andmore important. It could not only help make the correct decision, but also reduce losses. There are several traditional methods are commonly used to predict the corporate bankruptcy conditions. But the traditional methods for bankruptcy prediction are mainly based on human subjective judgment and lack quantitative analysis. So it is for traditional methods to compete with the new and advanced Machine learning algorithms. Machine learning algorithms explore patterns based on objective data analysis, which develop rapidly and have strong learning ability. So we're going to apply machine learning to the prediction of corporate bankruptcy. We use data on the bankruptcy situation of Polish companies in 2007-2013 and construct a model by SVM and random forest algorithm separately. And then, we further use weighted methods to solve the problem of sample imbalance. According to the research, Random forest performs better than SVM in company bankruptcy prediction with accuracy higher than 70% in different years.
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