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金融研究  2026, Vol. 549 Issue (3): 95-113    
  本期目录 | 过刊浏览 | 高级检索 |
数字信贷发展对区域金融风险的影响——基于非金融企业部门的视角
宋鹭, 李佳林, 方意
The Impact of Digital Credit Development on Regional Financial Risks: Based on the Perspective of the Non-Financial Corporate Sector
SONG Lu, LI Jialin, FANG Yi
School of Smart Governance/School of Applied Economics/ National Academy of Development and Strategy, Renmin University of China
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摘要 基于2011—2022年我国5679家非金融上市企业的微观数据,本文构建了31个省级行政区的区域金融风险指数,结合北京大学数字普惠金融指数中的数字信贷子指数,运用空间杜宾模型考察了数字信贷发展对区域金融风险的影响。研究发现:(1)数字信贷发展能显著缓解区域金融风险,尤其是在降低非金融企业的经营风险和流动性风险方面,主要机制在于缓解信息不对称问题与推动区域金融竞争;(2)数字信贷发展可通过空间溢出效应降低其他地区的金融风险,并通过强化区域间资本流动与贸易联系,加强该风险缓释的空间溢出效应;(3)数字信贷发展的风险缓释作用会随着时间不断深化;(4)从区域异质性来看,风险缓释作用的空间溢出效应在城市群间不再显著。本文的研究结论可为促进数字金融发展、提高金融服务实体经济能力、防范化解区域金融风险提供参考。
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宋鹭
李佳林
方意
关键词:  金融风险  实体经济  数字信贷  空间溢出  传导机制    
Summary:  The Fourth Plenary Session of the 20th Central Committee of the Communist Party of China has recommended that during the 15th Five-Year Plan period, we should draw on a full range of resources and means to address risks and develop the system for preventing and defusing risks, so as to ensure stable operations in the financial sector. In this context, preventing and mitigating financial risks has become a critical task to ensure economic stability. As both a major source and the ultimate bearer of regional financial risks, the real economy plays a central role in the formation and transmission of the risks. Among the three sectors of the real economy, the non-financial enterprise sector holds the highest macro leverage ratio, and is the primary source of overall financial risk. Its assets (and liabilities) largely correspond to the liabilities (and assets) of the financial sector. When non-financial enterprises face insolvency risk, they may be unable to repay loans, thereby triggering credit risks for financial institutions. In recent years, the widespread adoption of digital technology has driven profound transformations in financial service models. Among these, digital credit, characterized by its immediacy, automation, and remote accessibility, has emerged as an essential tool for financing the real economy. Systematically examining the impact of digital credit development on regional financial risk is thus of substantial theoretical and policy significance for promoting financial support to the real economy and preventing systemic risks.
This study utilizes micro-level data from 5,679 listed non-financial enterprises to construct macro balance sheets and contingent equity balance sheets for 31 provincial-level administrative regions in China. Based on four dimensions:operational risk, liquidity risk, insolvency risk, and market risk, we develop a regional financial risk index using data primarily sourced from the CSMAR database. Unlike existing studies that mainly rely on financial system indicators, this research adopts a microeconomic enterprise perspective to reveal the endogenous mechanisms underlying the generation of regional financial risk, thereby enhancing the effectiveness and forward-looking nature of risk measurement. We then apply a two-way fixed effects spatial Durbin model to empirically examine the direct and spatial spillover effects of digital credit development on regional financial risk during 2011~2022, followed by a mechanism analysis to explore the underlying transmission pathways.
The results reveal three key findings. First, the constructed regional financial risk index effectively captures the impact of macroeconomic shocks on the real economy and financial system. Major events such as the 2015 stock market turbulence and the 2020 COVID-19 outbreak are clearly reflected as significant fluctuations in the index. Second, digital credit development significantly alleviates regional financial risks, not only within local regions but also on neighboring regions through spatial spillover effect, with the mitigating impact accumulating over time. At the risk-dimension level, digital credit primarily operates by easing firms’ operational and liquidity risks. Spatial heterogeneity analysis further indicates the existence of spillover barriers among urban clusters. Third, mechanism analysis shows that digital credit reduces regional financial risk by lowering information asymmetry and enhancing financial competition within regions. Additionally, by strengthening interregional capital flows and trade linkages, digital credit amplifies the spatial spillover of risk mitigation effects.
On the basis of the above results and from a policy perspective, the study suggests: (1) accelerating the construction of infrastructure for digital finance through government investment, fiscal subsidies, and tax incentives to expand coverage and improve service efficiency of digital credit; and (2) promoting the development of digital credit comprehensively, removing administrative barriers, enhancing interregional capital flow and trade linkages, and improving information and capital flow channels to foster deeper integration between the digital and real economies. This would enable digital credit to serve as a sustainable driving force for mitigating regional financial risk.
The contributions of this research are threefold. First, it innovatively constructs a regional financial risk index from the micro perspective of non-financial enterprises, offering a new approach for measuring financial risks, providing a scientific basis for promoting financial support to the real economy and mitigating financial risks. Second, by employing spatial econometric methods, the study systematically examines the cross-regional transmission of the effects of digital credit development on financial risk, advancing research on financial risk spillovers. Third, it reveals both the direct and indirect mechanisms through which digital credit influences financial risk, offering new insights into the formation and transmission of financial risks in the digital era. Future research may further extend this work by incorporating larger and more diverse enterprise samples with longer time spans to test the robustness of the conclusions; obtaining richer regional digital credit data to explore different digital credit models and their risk mitigation effects; and examining the interactions between digital credit and emerging financial forms such as green finance and inclusive finance to build a more comprehensive framework for digital finance and regional risk management.
Keywords:  Financial Risk    Real Economy    Digital Credit    Spatial Spillover    Transmission Mechanism
JEL分类号:  G32   R11   O16  
基金资助: *本文感谢国家社会科学基金重大项目(23&ZD058)和国家社会科学基金一般项目(21BJL031)的资助。感谢匿名审稿人的宝贵意见,文责自负。
通讯作者:  方 意,经济学博士,教授,中国人民大学国家发展与战略研究院,E-mail:fangyi@ruc.edu.cn.   
作者简介:  宋 鹭,经济学博士,研究员,中国人民大学智慧治理学院、国家发展与战略研究院,E-mail:songlu@ruc.edu.cn.
李佳林,博士研究生,中国人民大学应用经济学院,E-mail:lijialin2022@ruc.edu.cn.
引用本文:    
宋鹭, 李佳林, 方意. 数字信贷发展对区域金融风险的影响——基于非金融企业部门的视角[J]. 金融研究, 2026, 549(3): 95-113.
SONG Lu, LI Jialin, FANG Yi. The Impact of Digital Credit Development on Regional Financial Risks: Based on the Perspective of the Non-Financial Corporate Sector. Journal of Financial Research, 2026, 549(3): 95-113.
链接本文:  
http://www.jryj.org.cn/CN/  或          http://www.jryj.org.cn/CN/Y2026/V549/I3/95
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