Multi‐class financial distress prediction based on stacking ensemble method

Xiaofang Chen, Chong Wu, Zijiao Zhang, Jiaming Liu
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Abstract

The motivation of this article is to help financial soundness companies understand their specific financial status so that they can take timely measures to avoid financial distress. Existing multi‐class financial distress prediction (FDP) studies have mainly segmented financial crisis status, with less attention paid to financial soundness companies. To fill this gap, we propose a new multi‐class definition of FDP from the perspective of financial soundness enterprises. The financial states are defined as financial soundness, moderate financial soundness, mild financial soundness and financial distress. We propose a stacking ensemble model for multi‐class FDP. First, deep neural network, multinomial logit regression (MNLogit) and multivariate discriminant analysis models are used as basic classifiers to obtain preliminary prediction results. Second, MNLogit is used to integrate the results from the previous step. To increase the effective information, stock information is then added into the model. The proposed model was trained using data from 2007 to 2019 for Chinese listed companies and tested using data from 2020. The results show that the MacroR‐Pre, MacroR‐Rec, MacroR‐F1 and MacroR‐AUC of the proposed model are better compared with the benchmark model, including individuals and ensembles, with 87.05%, 90.68%, 88.70% and 88.20%.The addition of stock information and non‐financial indicators can improve the accuracy of the multi‐class FDP model by about 8%. The innovativeness of this paper is twofold. First, it proposes a new multi‐class definition of enterprise financial status. Second, a multi‐class FDP based on stacking is constructed, which provides a new method for solving the multi‐class FDP problem. The study shows that the proposed multi‐class definition and stacking model are suitable for analysing financial soundness enterprises, which can help managers effectively grasp the specific financial status and have strong practical significance.
基于堆叠集合法的多类财务困境预测
本文的研究动机是帮助财务稳健的公司了解其具体的财务状况,从而及时采取措施避免财务困境。现有的多类别财务困境预测(FDP)研究主要是对财务危机状况进行细分,对财务稳健公司的关注较少。为了填补这一空白,我们从财务稳健企业的角度出发,提出了一种新的多类财务困境预测(FDP)定义。财务状态被定义为财务稳健、中度财务稳健、轻度财务稳健和财务困境。我们提出了多类 FDP 的堆叠集合模型。首先,使用深度神经网络、多二叉对数回归(MNLogit)和多元判别分析模型作为基本分类器,获得初步预测结果。其次,使用 MNLogit 对上一步的结果进行整合。为了增加有效信息,模型中还加入了股票信息。使用 2007 年至 2019 年中国上市公司的数据对所提出的模型进行了训练,并使用 2020 年的数据进行了测试。结果表明,与包括个体和集合在内的基准模型相比,所提模型的宏观R-Pre、宏观R-Rec、宏观R-F1和宏观R-AUC分别为87.05%、90.68%、88.70%和88.20%。本文的创新之处有两点。首先,本文提出了一种新的企业财务状况多级定义。其次,构建了基于堆叠的多类 FDP,为解决多类 FDP 问题提供了一种新方法。研究表明,所提出的多类定义和堆叠模型适用于分析财务稳健性企业,可以帮助管理者有效掌握具体的财务状况,具有很强的现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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