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金融研究  2024, Vol. 525 Issue (3): 150-168    
  本期目录 | 过刊浏览 | 高级检索 |
企业跨界竞争与债务违约风险——基于机器学习与复杂网络方法
牛晓健, 强皓凡, 吕斌, 王聪
复旦大学经济学院,上海 200433;
上海财经大学公共经济管理学院,上海 200433;
中山大学管理学院,广东广州 510275
Cross-Sector Competition and Corporate Default Risk: Based on Machine Learning and Complex Network Approach
NIU Xiaojian, QIANG Haofan, Lv Bin, WANG Cong
School of Economics, Fudan University;
School of Public Economics and Administration, Shanghai University of Finance and Economics;
School of Business, Sun Yat-sen University
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摘要 本文利用处理非结构化文本数据的机器学习与复杂网络方法,构建了企业跨界竞争度量指标并检验了其信息价值,进而考察企业跨界竞争对其债务违约风险的影响与作用机理。研究发现,企业跨界竞争程度越高,其债务违约风险越高,跨界竞争具有债务违约风险恶化效应。机制分析表明,企业跨界竞争通过偿债承压效应、资源靡费效应、创新侵蚀效应三个渠道提高债务违约风险。异质性分析表明,当信贷资源支持充足、市场关注压力较高、管理者过度自信、能力欠佳和期望落差时,企业跨界竞争对违约风险的恶化作用更显著。经济后果分析表明,企业跨界竞争对债务违约风险的恶化作用,会显著削弱企业生产率和价值创造能力。本文细化和充实了跨界竞争对违约风险影响机制的理论认识,对促进实体企业健康发展、推进资本市场稳健运行、维护金融系统安全稳定、实现经济高质量发展,具有重要的政策启示意义。
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牛晓健
强皓凡
吕斌
王聪
关键词:  跨界竞争  债务违约风险  文本分析  机器学习  复杂网络    
Summary:  The report to the 20th National Congress of the Communist Party of China pointed out that it is necessary to strengthen and improve modern financial supervision and ensure that no systemic risks arise. However, in recent years, as a significant source of systemic financial risks, firm default on debt is one of the most destructive events in firm development. It's not only posing threats to the firms' healthy operations but also potentially triggering economic catastrophes that could evolve into systemic debt crises through economic interconnections, thereby endangering the stability and security of the whole financial system and socio-economic environment. Therefore, exploring what and how the risk of debt default is caused has become a critical issue in the new era. Furthermore, case studies show that corporate debt defaults are often closely related to firm's aggressive investment behavior across industries, exemplified by firms like Macrolink Holding, Guogou Investment, HNA Group, Founder Group, China Evergrande Group, LeEco, and CITIC Guoan Group. These firms engage in aggressive expansion and cross-sector competition, incurring substantial debts and persistent liquidity pressures, while short-term profitability fails to materialize, eroding their core competencies and innovative capabilities. This confluence of factors finally leads to a default crisis. Thus, the question of this paper focuses on how cross-sector competition affects the risk of debt default. However, this cannot be addressed solely through case studies but also requires rigorous empirical analyses.Our empirical analysis centers on data from China's A-share listed companies over the 2007-2020 period. We collect textual data from the Management's Discussion and Analysis section of firms' annual reports and obtain financial data from the China Stock Market and Accounting Research (CSMAR) Database and Chinese Research Data Services Platform (CNRDS) Database. A simple research approach utilizes traditional diversification metrics as core explanatory variables in empirical design, such as calculating the Herfindahl index or entropy index of sales income from the number of industries an enterprise operates in, as reported in annual financial statements. Nevertheless, measurement bias in this method warrants caution as traditional diversification metrics have several shortcomings. For example, industry breakdowns information in financial reports might not reflect the true extent of an enterprise's industrial diversification. Additionally, firms often change their reported sectors without real operational changes. Thereby, by employing machine learning and complex network methods to analyze unstructured textual data, this paper constructs a novel and firm-specific proxy to measure the behavior of firm's cross-sector competition, validates its informativeness and investigates the effect of firm's cross-sector competition on firm's likelihood of financial distress.Specifically, the results of our empirical analyses demonstrate that higher level of cross-sector competition results in higher risk of debt default. Our findings remained robust after a series of robustness checks. For example, we use a two-stage least squares model with historical instrumental variables to mitigate the endogeneity issues. The results confirm our main findings. In addition, the results of the mechanism analyses provide three possible channels through which cross-sector competition results in higher risk of debt default: increased pressure of debt repayment, inefficient allocation of resources, and erosion of innovative capacities. The main effect is concentrated in subsamples for which supply of credit resources is sufficient, the pressure of market attention is high, and the managers are overconfident and incompetent. Lastly, the rising debt default risk, induced by intense cross-sector competition, impairs the firms' productivity and value-creation capability. This study documents a previously under-identified adverse consequence of competition: its exacerbation of firm's default risk.This paper makes the following three contributions. First, by exploiting machine learning techniques to process unstructured text data and complex network methods, this study creates a more accurate firm-level variable than traditional methods to measure firm's cross-sector competition and validates its informational value. In contrast to extant literature, this measure provides a more direct, objective, and effective approach to quantify firm's competition in non-core industries. It features high accuracy and variability, significantly mitigating problems in existing literature. Also, it provides a robust data foundation for subsequent research and paves the way for future studies to integrate text analysis and network methods. Second, based on some case studies, this paper examines firm diversification strategies from the novel perspective of cross-sector competition. This paper systematically and deeply explores the impact of this competition on the risk of debt default for the first time. Furthermore, the paper discusses how firms' cross-sector competition exacerbates their debt default risk from the channels of debt pressure, allocation of resources, and innovative capacities. Thus, it not only complements the literature on product market competition but also on the factors affecting the risk of debt default. Thereby, this paper is of significant practical relevance and provides guidance, offering valuable insights for regulating healthy corporate development and maintaining the stability of the financial system. Finally, the literature enriches the heterogeneous analysis of the impact of firm's cross-sector competition on the risk of debt default from internal and external aspects, including credit provision, market pressures, and managerial characteristics. Thus, this study has clear policy implications on how to improve the efficiency of credit resource allocation in China, foster the healthy and stable operation of capital markets, and refine corporate governance and business management practices in the new era.
Keywords:  Cross-Sector Competition    Corporate Default Risk    Text Analysis    Machine Learning    Complex Network
JEL分类号:  G31   G32   G34  
基金资助: * 本文感谢国家自然科学基金面上项目(71873039,71573051)、青年项目(72002223)、上海市“曙光计划”项目(11SG09)的资助。感谢第十三届《金融研究》论坛点评专家、参会学者和匿名审稿人的宝贵意见,文责自负。
作者简介:  牛晓健,金融学博士,教授,复旦大学经济学院,E-mail:xjniu@fudan.edu.cn.
吕 斌,博士研究生,上海财经大学公共经济管理学院,E-mail:lb648371305@foxmail.com.
王 聪,管理学学士,助理研究员,中山大学管理学院,E-mail:wangc65@mail2.sysu.edu.cn.
引用本文:    
牛晓健, 强皓凡, 吕斌, 王聪. 企业跨界竞争与债务违约风险——基于机器学习与复杂网络方法[J]. 金融研究, 2024, 525(3): 150-168.
NIU Xiaojian, QIANG Haofan, Lv Bin, WANG Cong. Cross-Sector Competition and Corporate Default Risk: Based on Machine Learning and Complex Network Approach. Journal of Financial Research, 2024, 525(3): 150-168.
链接本文:  
http://www.jryj.org.cn/CN/  或          http://www.jryj.org.cn/CN/Y2024/V525/I3/150
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