集成学习在印尼上市公司财务困境预测中的应用

Dyah Sulistyowati Rahayu, H. Suhartanto
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引用次数: 0

摘要

预测财务困境可以避免公司破产。这对于公司的可持续性和总体经济增长来说是一个重要的问题。印度尼西亚作为一个发展中国家,需要一个可靠的系统,能够预测一个公司的破产,因为它可以在不同的层面上影响整体经济状况。为达到更好的预测效果而建立的集成学习可以用于对不良企业状况的预测。随机森林集成学习和AdaBoost已被证明优于单一学习。两种方法均应用于印度尼西亚上市公司数据,基于Altman Z-Score的6个变量和1个附加变量。在不考虑数据不平衡的情况下,准确率、精密度、召回率和f1得分的平均值为91%。集合分数决定了它相对于单个机器学习的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Learning in Predicting Financial Distress of Indonesian Public Company
Predicting financial distress can avoid firm bankruptcy. That is an important issue in matters of company sustainability and the economic growth in general. Indonesia as a developing country needs a reliable system that is able to predict the bankruptcy of a company because it can affect the overall economic condition at different levels. The ensemble learning which is built to achieve better performance of prediction can be implemented to forecast the unhealthy company conditions. Random forest ensemble learning and AdaBoost have been proven superior to the single one. Both methods are applied to Indonesia Public Company data with 6 variables based on Altman Z-Score and one additional variable. The accuracy, precision, recall, and f1-score have an average of 91% regardless of the data imbalance. The ensemble score determines its superiority to the single machine learning.
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