基于会计的变量作为危机和非危机时期财务困境的预警指标

IF 2.8 3区 经济学 Q2 BUSINESS, FINANCE
Robert J. Powell, Dung V. Dinh, Nam Thanh Vu, Duc Hong Vo
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引用次数: 0

摘要

东南亚国家联盟(东盟)地区的金融一体化是东盟经济共同体的重点。许多研究侧重于企业违约建模,而本文则利用多重判别分析(MDA)模型,以东盟地区的上市和退市公司为样本,识别违约前的财务困境预警指标。分析考察了 1997 年至 2016 年东盟六国 10 个不同行业的 720 家公司。研究采用样本内和样本外方法,为每个国家构建了单独模型,并为整个地区构建了总体模型。该整体模型可用于综合银行系统。为确保稳健性,本研究还分别考察了 MDA 模型在不同经济危机中的预测性能:1997 年至 2000 年的亚洲金融危机(AFC)、2007 年至 2009 年的全球金融危机(GFC)及其危机前和危机后时期。我们发现,盈利比率是东盟地区财务困境的最佳指标,其次是流动性和杠杆比率。此外,我们的研究结果还揭示了可用于预测东盟各国财务困境的共同指标。单一模型在预测未来一年的财务困境方面表现相当出色。此外,我们还对模型进行了扩展,在 MDA 模型中加入了一个基于市场的指标,即违约距离。然而,纳入这一指标并没有显著提高模型预测东盟地区上市公司财务困境的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accounting-based variables as an early warning indicator of financial distress in crisis and non-crisis periods

Financial integration in the Association of Southeast Asian Nations (ASEAN) region is a key focus of the ASEAN Economic Community. Whereas many studies focus on modelling corporate default, this paper identifies early warning indicators of financial distress before a default, using multiple discriminant analysis (MDA) models with a sample of listed and delisted companies in the ASEAN region. The analysis examines 720 companies in 10 different industries across six ASEAN countries from 1997 to 2016. The study constructs individual models for each country as well as an overall model for the entire region, using both in-sample and out-of-sample approaches. This overall model could be useful for an integrated banking system. To ensure robustness, the study also separately examines the predictive performance of the MDA models across different economic crises: the Asian financial crisis (AFC) from 1997 to 2000, the global financial crisis (GFC) from 2007 to 2009 and their pre- and post-crisis periods. We find that profitability ratios are the best indicators of financial distress in the ASEAN region, followed by liquidity and leverage ratios. In addition, our findings reveal common indicators that can be used to predict financial distress across ASEAN countries. The single model performs reasonably well in predicting financial distress 1 year ahead. In addition, the model is extended to incorporate a market-based indicator into the MDA models, the distance to default. However, the inclusion of this indicator does not significantly improve the accuracy of the models in predicting financial distress at listed firms in the ASEAN region.

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CiteScore
5.70
自引率
6.90%
发文量
143
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