A New Perspective of Performance Comparison among Machine Learning Algorithms for Financial Distress Prediction

Yuping Huang, Meng‐Feng Yen
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引用次数: 65

Abstract

Abstract We set out in this study to review a vast amount of recent literature on machine learning (ML) approaches to predicting financial distress (FD), including supervised, unsupervised and hybrid supervised–unsupervised learning algorithms. Four supervised ML models including the traditional support vector machine (SVM), recently developed hybrid associative memory with translation (HACT), hybrid GA-fuzzy clustering and extreme gradient boosting (XGBoost) were compared in prediction performance to the unsupervised classifier deep belief network (DBN) and the hybrid DBN-SVM model, whereby a total of sixteen financial variables were selected from the financial statements of the publicly-listed Taiwanese firms as inputs to the six approaches. Our empirical findings, covering the 2010–2016 sample period, demonstrated that among the four supervised algorithms, the XGBoost provided the most accurate FD prediction. Moreover, the hybrid DBN-SVM model was able to generate more accurate forecasts than the use of either the SVM or the classifier DBN in isolation.
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财务危机预测机器学习算法性能比较的新视角
摘要:我们在本研究中回顾了大量关于机器学习(ML)方法预测财务困境(FD)的最新文献,包括监督、无监督和混合监督-无监督学习算法。将传统的支持向量机(SVM)、新近开发的混合联想记忆与翻译(HACT)、混合ga -模糊聚类和极端梯度增强(XGBoost) 4种监督机器学习模型与无监督分类器深度信念网络(DBN)和DBN-SVM混合模型的预测性能进行了比较。从台湾上市公司的财务报表中选取16个财务变量作为六种方法的输入。我们的实证研究结果涵盖了2010-2016年的样本期,表明在四种监督算法中,XGBoost提供了最准确的FD预测。此外,混合DBN-SVM模型能够产生比单独使用支持向量机或分类器DBN更准确的预测。
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