Financial Distress Prediction: A Hybrid Tracking Model Approach
Zong-De Shen *
Department of Accounting, Chinese Culture University, No. 55, Hwa-Kang Road, Yang-Ming-Shan, Taipei 111114, Taiwan.
Suduan Chen
Department of Accounting Information, National Taipei University of Business, No. 3211, Sec. 1, Jinan Road, Zhong Zheng District, Taipei 100025, Taiwan.
*Author to whom correspondence should be addressed.
Abstract
The purpose of this study was to build a highly accurate corporate financial distress tracking and prediction model based on hybrid machine learning technology. The research data were from Taiwan Economic Journal, and the research subjects were enterprises with financial distress risk announced in September 2022. In consideration of enterprise features, this study excluded the finance and insurance industries. The research period was three years (2019, 2020, and 2021) before the distress announcement. This study matched enterprises with financial distress and enterprises without financial distress (normal enterprises) at a ratio of 1:1 for each year. The sample size for each year included 374 enterprises with financial distress and 374 enterprises without financial distress. This study applied several machine learning technologies. At first, important variables were screened by applying artificial neural networks (ANNs). Next, prediction models were built based on decision tree C5.0 and random forest (RF) and were compared. According to the empirical result, the ANN-RF model provided a higher accuracy.
Keywords: Tracking model approach, machine learning, financial distress prediction, artificial neural network, C5.0, random forest