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金融研究  2025, Vol. 540 Issue (6): 133-151    
  本期目录 | 过刊浏览 | 高级检索 |
数字基础设施与家庭风险金融资产投资——基于“宽带中国”政策的证据
李青原, 喻淼, 董燕飞, 黄炜
中国社会科学院民族学与人类学研究所,北京 100081;
北京大学国家发展研究院,北京 100871
Digital Infrastructure and Household Investment in Risky Financial Assets: Evidence from the “Broadband China” Policy
LI Qingyuan, YU Miao, DONG Yanfei, HUANG Wei
The Institute of Ethnology and Anthropology, Chinese Academy of Social Sciences;
National School of Development, Peking University
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摘要 数字基础设施的发展改变了金融生态、信息环境和社会网络,为家庭投资金融资产创造了有利条件。本文利用中国家庭金融调查数据和“宽带中国”政策,使用双重差分和事件研究模型,探究了数字基础设施对家庭风险金融资产投资的影响。研究发现,数字基础设施建设显著提升了家庭对风险金融资产的投资概率、投资金额和投资占比,且这一影响呈现出逐年递增的趋势。进一步分析显示,相较于农村、文化程度较低和收入水平较低的家庭,城镇、文化程度较高和收入水平较高的家庭在风险金融资产投资上表现更加积极。机制分析表明,数字基础设施主要通过促进数字金融发展、拓展家庭信息获取渠道、提升金融素养和增强社会网络等,影响家庭对风险金融资产的投资。以上分析在理解数字基础设施如何改善家庭风险金融资产配置、增加居民财产性收入以及推动数字金融发展等方面,具有一定的理论意义和实践价值。
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李青原
喻淼
董燕飞
黄炜
关键词:  数字基础设施  家庭风险金融资产  数字金融  信息环境  社会网络    
Summary:  Investment in risky financial assets is a critical topic in household finance, bearing significant implications for increasing household property income and fostering the healthy development of financial markets. The Third Plenary Session of the 20th CPC Central Committee emphasized the need to increase urban and rural residents' property income through multiple channels, and to advance the five major areas in the financial sector (technology finance, green finance, inclusive finance, pension finance and digital finance). However, household participation in China's risky financial markets has remained low. This limited participation not only constrains households' ability to accumulate wealth and diversify risks through financial investments but also highlights the urgency for financial innovation. In recent years, digital infrastructure has emerged as a vital driving force and strategic domain for socioeconomic development, profoundly reshaping the financial ecosystem, information environment, and social networks. These transformations may exert a systematic influence on household investment decisions. Thus, investigating how digital infrastructure impacts household investment in risky financial assets holds significant theoretical and practical value for understanding household financial behavior in the digital age and advancing the development of inclusive finance.
This paper aims to analyze whether and how digital infrastructure influences household investment in risky financial assets. We employ an approach that combines theoretical and empirical analyses. First, drawing on intertemporal asset allocation theory and institutional economics, we incorporate digital infrastructure into the framework of household utility maximization and introduce an institutional friction cost function. This function delineates the mechanism through which digital infrastructure influences household investment decisions via channels such as reducing market frictions, enhancing financial accessibility, alleviating information asymmetry, and improving financial literacy, while emphasizing the synergistic effect of technology penetration and the institutional environment on the demand for risky assets. Second, we utilize the Chinese government-led “Broadband China” policy (piloted in three batches from 2014 to 2016) to design a quasi-natural experiment. Using data from the China Household Finance Survey (CHFS) covering the period 2011-2019, we employ the difference-in-differences (DID) method and event study methodology to identify the causal effects of digital infrastructure. Additionally, we conduct robustness checks using methods including PSM-DID, instrumental variable approach, placebo tests, and exclusion of confounding factors. For the mechanism analysis, we also use both macro and micro data such as the The Peking University Digital Financial Inclusion Index of China and Baidu Index.
The main findings are as follows: First, digital infrastructure significantly enhances household allocation to risky financial assets. The policy increased the probability of households investing in risky financial assets by 3.5 percentage points (25% of the pre-policy mean), the investment amount by 41%, and the portfolio share by 1.6 percentage points (29% of the pre-policy mean). Crucially, the policy effect exhibits a time-progressive dynamic pattern, revealing the long-term cumulative nature of technological penetration and institutional arrangements. Second, compared to low-income, low-education, and rural households, high-income, high-education, and urban households exhibit significantly higher participation rates in risky financial markets. This finding provides micro-level evidence supporting the digital divide theory and indicates that resource endowment disparities profoundly shape the real-world effectiveness of technology-driven inclusive finance policies. Third, mechanism analysis demonstrates that digital infrastructure reshapes household investment behavior through multiple channels: promoting digital finance development (especially expanding coverage and deepening implementation), broadening information access channels, enhancing financial literacy, and strengthening social networks and social trust.
Policy implications are as follows: (1) Reinforce the strategic supporting role of digital infrastructure, advancing R&D and application of technologies deeply integrated with financial services to solidify the foundational ecosystem of digital finance. (2) Optimize the digital financial ecosystem by upgrading inclusive finance platforms and the credit reporting system to precisely respond to household needs (e.g., credit, wealth management) and enhance service inclusivity. (3) Bridge the digital dividend imbalance by employing targeted subsidies to promote the penetration of low-threshold financial services into rural areas, and implementing digital skills and financial literacy training programs to activate the investment capabilities of vulnerable groups. (4) Foster a secure financial environment by strengthening regulation of digital finance businesses and high-risk investments, preventing financial fraud, cultivating social trust, and guiding rational investment.
Keywords:  Digital Infrastructure    Household Risky Financial Assets    Digital Finance    Information Environment    Social Networks
JEL分类号:  G11   H54   O38  
基金资助: *本文感谢国家自然科学基金面上项目“人力资本外部性与经济高质量增长:现象、机制和影响”(72373003)、国家社会科学基金重大专项“生育友好型社会背景下生育支持政策体系和激励机制研究”(24ZDA091)的资助。感谢匿名审稿人的宝贵意见,文责自负。
通讯作者:  黄炜,经济学博士,长聘副教授,北京大学国家发展研究院,E-mail:huangwei@nsd.pku.edu.cn.   
作者简介:  李青原,经济学博士,助理研究员,中国社会科学院民族学与人类学研究所,E-mail:liqingyuan@cass.org.cn.
喻淼,博士研究生,北京大学国家发展研究院,E-mail:myu2021@nsd.pku.edu.cn.
董燕飞,博士研究生,北京大学国家发展研究院,E-mail:yfdong2021@nsd.pku.edu.cn.
引用本文:    
李青原, 喻淼, 董燕飞, 黄炜. 数字基础设施与家庭风险金融资产投资——基于“宽带中国”政策的证据[J]. 金融研究, 2025, 540(6): 133-151.
LI Qingyuan, YU Miao, DONG Yanfei, HUANG Wei. Digital Infrastructure and Household Investment in Risky Financial Assets: Evidence from the “Broadband China” Policy. Journal of Financial Research, 2025, 540(6): 133-151.
链接本文:  
http://www.jryj.org.cn/CN/  或          http://www.jryj.org.cn/CN/Y2025/V540/I6/133
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