1. Introduction
China’s economic development over the last quarter century has been phenomenal, making it the world’s second-largest economy (World Bank, 2022). At the same time, Fintech in China has made great progress and has had a great influence on the world [
1]. Ant Financial Services, WeBank, JD Finance and other leading financial technology enterprises among rank the world’s leaders in the fields of mobile payment, credit and investment. In 2019, the transaction scale of China’s mobile payment market exceeded CNY 200 trillion (The data comes from <The Research Report on the Value of China’s Financial Technology in 2019> by We-Bank&iResearch; <Global Financial Technology Top 100 (2018)> by KPMG and H2 Ventures). Among them, WeBank directly puts in and connects the transaction information (such as capital flow and information flow) of small- and medium-sized enterprises through relevant modules, bypasses the traditional financial institutions to capture key information from core enterprises, and provides services such as cash management, payment and settlement, and credit support. By 2020, WeBank had established a docking and cooperation network with more than 200 core enterprises in the supply chain, providing nearly CNY 65 billion in financing support for more than 100,000 small and micro enterprises in the upstream and downstream, which increased their financing limit by nearly 70% and reduced the financing cost by nearly 15%.
Fintech is the integration of “finance” and “technology” [
2]. The advantages of Internet and big data technology applied to financial services such as mobile payment, digital insurance, investment and information lending are obvious. Many studies have shown that emerging technologies have changed financial services by making transactions cheaper, more convenient and safer [
3,
4]. However, some studies believe that the promotion of Fintech in developed financial markets will increase the vulnerability of existing financial institutions and destroy their stability. Fintech can be regarded as a direct competitor of traditional financial institutions [
5], and market discipline can mitigate this effect [
6].
Fintech can enjoy the opportunity of rapid development. Only when the existing or traditional financial system is underdeveloped can it affect enterprise financing, especially in most developing countries. Therefore, as mentioned above, especially in developing economies such as China, the relationship between Fintech and traditional financial systems can be complicated.
In view of the imperfection of the capital market and the high external financing cost of enterprises, the financing constraint problem [
7], which leads to investment lower than the optimal investment level, has always been an important research topic in the field of corporate finance. In recent years, as an emerging financial industry, Fintech has optimized the traditional financial service mode [
8] by relying on cloud computing, big data and other information technologies, and it breaks through the bottleneck of the traditional financial system and expands the scope of financial supply for enterprises blocked by credit channels [
9]. However, detailed research on the mechanism, heterogeneity characteristics and financing types of the new financial formats affecting the financing decision-making behavior of enterprises is still relatively limited, which will undoubtedly lead to the passivation of relevant policies. This research is just trying to make up for it.
As far as corporate financing constraints are concerned, existing researchers believe that competition in the banking industry, financial linkages, and the size and structure of the financial system block corporate financing behavior. Therefore, improving the level of financial development and increasing the financing proportion of small and medium-sized banks with high operational flexibility can effectively alleviate corporate financing constraints [
10,
11]. Recent researchers have included Fintech into the research on the availability of micro-enterprise financing. Fintech has played a role in alleviating the financing difficulties of enterprises by optimizing the direct and indirect financing system, corporate transparency and corporate social responsibility [
12].
Whether and how Fintech can play a mitigating effect on the financing difficulties faced by enterprises is discussed in this paper. Based on this, this paper matches the data of A-share non-financial listed companies in the Shanghai and Shenzhen Stock Exchanges in China from 2011 to 2018 with relevant urban data, aiming to analyze the mitigation effect of Fintech as a new financial format in corporate financing constraints, and to discuss the intermediary mechanism between Fintech and corporate financing constraints. The different impacts of Fintech on corporate financing constraints in terms of regional attributes, senior executives’ financial background, property rights attributes, stock market segment, and the competitive position of enterprises in the industry is explored. At the same time, this paper provides new evidence for the relationship between the Fintech, commercial credit and bank loans.
The parts of this paper are arranged as follows:
Section 2 reviews the relevant literature on Fintech and corporate financing constraints, and puts forward research assumptions accordingly;
Section 3 is the research methods of this paper;
Section 4 is the empirical results and analysis;
Section 5 is the mechanism test of Fintech to ease the financing constraints of enterprises;
Section 6 discusses the influence of Fintech on the types of enterprise financing;
Section 7 is conclusions and discussion.
2. Literature Review
2.1. The Logic Relationship of Fintech and Corporate Financing Constraints
Due to the imperfection of the capital market, there is a significant difference between the internal and external financing costs of a company. Therefore, external financing is not a perfect substitute for internal financing. There is no complete substitution between the two financing ways. At this time, the enterprise will face financing constraints, and credit rationing occurs in credit markets under competitive equilibrium [
13]. Credit resources are biased towards enterprises with an abundant cash flow and prevent enterprises from strong capital needs [
14]. On the demand side, the financing needs of state-owned enterprises with invisible guarantees have squeezed out enterprises with a shortage of collateral and low financial transparency, and the “crowding out effect” of small and medium-sized private enterprises occurs when enterprises are subjected to financial discrimination. The difficulty of obtaining the funds needed for enterprise operation [
15] seriously weakens the competitiveness of an enterprise.
The internal evolution of Fintech will alleviate the above corporate financing constraints to a certain extent. First of all, the integration of Fintech and deep learning algorithms is convenient for intelligently identifying the needs of many and scattered investors in the financial market to broaden the scope of investment needs and expand financing increments; secondly, blockchain technology has driven the capital market in the direction of information transparency and clear rules, which has improved the quality of financing. Fintech has promoted the integration and innovation of credit services. Digital technologies have empowered traditional financial institutions through tracking enterprise operating conditions and credit information, which optimize the identification problems of bank-enterprise information asymmetry and credit risk.
From the perspective of enterprise information mining, enterprise-structured data is generally represented by quantitative data, which can be mined with low value, while non-structured data is represented by data with variable fields, which usually accounts for more than half of the enterprise data and has a large value but a higher demand for mining tools. Fintech can use text mining technology to transform unstructured information to structured information [
16] for financial institutions to grasp more corporate financial conditions and have future profitability. The text mining technology using multi-dimensional data make credit decisions easier and let enterprises achieve credit self-certification in order to gain access to credit resources.
From the perspective of financial risk control, under at level of traditional bank risk-control technology, the existence of factors such as high information search cost, lagging information acquisition and a single credit standard makes the credit assessment of enterprises biased, and it is difficult to suppress credit risks. The risk control principles of traditional financial institutions mostly rely on corporate collateral, and bank credit is mostly favored by large enterprises, but it is more difficult for small and medium-sized enterprises that lack sufficient collateral to obtain bank institutional loans [
17]. In addition, internal corporate governance affects access to capital and the investment portfolio of enterprises (Dang, 2021). From an information sharing perspective, adequate loan information can reduce the cost of monitoring [
18]. With the help of big data, cloud computing, and Internet technology, Fintech has reconstructed the credit system and the risk early warning mechanism of the credit market, effectively alleviating credit risk problems.
This paper proposes:
Hypothesis 1.
Fintech can effectively alleviate corporate financing constraints.
2.2. The Mechanism of Fintech to Alleviate the Financing Constraints of Enterprises: Information Effect
The theory of financial advantage under imperfect markets was first introduced into the study of information asymmetry in the capital market, and it was believed that the degree of financing constraints faced by enterprises was positively correlated with the degree of information asymmetry [
19,
20]. In an imperfect capital market, the information asymmetry of banks and enterprises has led to adverse selection and moral hazard problems, and enterprises will face financing constraints [
21]. At the same time, credit markets are so inherently asymmetrical in information that banks can get a “winner’s curse” when competing for customers [
22]. That is to say, in order to achieve the goal of winning the number of customers in the competitive market structure, it is impossible to avoid obtaining low-quality customers under the condition that the real information of the enterprise is not complete, and the bank will suffer the loss of benefits and fall into the “winner’s curse” [
23]; thus, mining more business information is a prerequisite for making credit decisions.
First of all, the digital technology endowment of Fintech has a natural advantage in corporate information collection. The advantage of economies of scale in financial intermediary information collection alleviates the information asymmetry between the supply and demand sides of funds [
24]. Fintech uses big data technology to accurately identify the operating conditions of enterprises, intelligently collect the multidimensional data of enterprise operating conditions, dynamically monitor the structured data of enterprises, dig into unstructured information, and transform transaction information such as enterprise capital flow, commodity flow, and information flow into credit records. The higher the value of credit capital, the greater the probability of credit support for enterprises [
25].
Secondly, Fintech has the function of signal transmission, which significantly alleviates the degree of information asymmetry. When the financial ecological environment and the financial system are still imperfect, informal systems make up for the deficiencies of formal systems, such as the supervision of collateral in the credit market in corporate financing. Informal system factors such as political capital, corporate culture, corporate social responsibility and so on, which are the source channels of corporate signal transmission behavior, often appear less in the formal information disclosure of enterprises. Big data technology can improve the recognition of external investors to a certain extent and send an “efficiency” reputation signal to the capital market.
Finally, Fintech restricts corporate defaults and forces them to improve the quality of information disclosure. With the application and popularization of big data technology in the credit appraisal system, the coupling degree between the market value of enterprises and the credit appraisal system has been increased, and the lack of information between banks and enterprises in identifying credit risks has been improved. Specifically, Fintech empowers financial products and financial services through big data technology, and its integrated development gets rid of the dependence of the capital supply side on corporate collateral. Enterprises pay more attention to improving their credit rating through the detailed disclosure of operating conditions, thus encouraging managers to practice the principle of integrity and provide high-quality disclosure information for the obtaining and broadening of financing channels.
This paper proposes:
Hypothesis 2.
Fintech effectively alleviates the corporate financing constraints by reducing the internal and external information asymmetry of enterprises.
2.3. Mechanism of Fintech to Alleviate Corporate Financing Constraints: Cost Effect
High financing costs and high leverage are related to enterprises making business decisions and cultivating competitive advantages, which are important indicators for measuring corporate liabilities and operational risks, and are also the key basis for external investors’ financial support decisions. The increase in leverage will compress corporate profits and increase corporate operational risks [
26].
However, the tightening of credit policies and the stickiness of corporate costs have led to high financing costs for enterprises. First of all, the high level of credit risk leads to the marginal contraction of credit, and financial institutions will increase the threshold and cost of borrowing for credit risk considerations, and they will increase the cost pressure of capital acquisition for enterprises. The tightening of credit policies has led enterprises to meet credit or regulatory requirements, giving rise to the multi-channel nesting of financing businesses, lengthening the credit intermediary chain and thus bringing about the problem of excessive financing costs; in addition, credit resources are skewed towards large enterprises to squeeze out the financing needs of small and medium-sized enterprises, indirectly raising the cost of obtaining funds. Second, the viscosity of enterprise costs damages the short-term value of enterprises and raises the cost of using funds when acquiring credit capital. Cost stickiness refers to the asymmetry phenomenon that the proportion of cost changes with the fluctuation of business volume, which is manifested as the proportion of cost and expense increase when the business volume increase is greater than the proportion of the cost and expense decrease when the business volume decreases. Corporate executives, out of self-interest, often over-invest when the company’s sales increase; when sales decline, they do not cut the input, resulting in the generation of cost stickiness, which leads to the increase in unit costs when the volume of business decreases, and corporate profits are greatly compressed. Therefore, the cost stickiness of the enterprise expands the decline in corporate surpluses [
27,
28,
29], which undermines the corporate value in credit markets and is not conducive to the obtaining of external financing.
Fintech based on big data technology reduces the cost of using funds for enterprises. On the one hand, “data” is the carrier of the financial market. Digital technology empowers traditional financial institutions to classify users’ accurate portraits according to demand scenarios and intelligently mine enterprise credit data, providing a feasible way to reduce market friction and reduce the financing threshold [
30]. Particularly, the application of cloud computing and blockchain technology has expanded the scope of information sharing, which is conducive to achieving scale economies in the process of information collection and transaction matching in the credit market, and reducing the information processing costs [
31,
32]. On the other hand, the equity crowdfunding, wealth management functions, and payment and settlement functions covered by Fintech provide diversified financing channels for enterprise operations and inhibit the leverage financing needs of enterprises. Among them, the equity crowdfunding function of Fintech provides enterprises with effective funds, increases the proportion of equity assets in the balance sheet, increases the total assets and profits of enterprises, and reduces the leverage ratio of enterprises. Similarly, wealth management adds additional benefits to a company’s idle funds and helps reduce leverage. Additionally, the new payment and settlement methods break through the shackles of time and space, and they are better than traditional cash, remittance, cheques and other payment methods in terms of capital turnover speed, settlement efficiency, security and stability, which forms a network scale effect and reduces the transaction cost and capital usage cost for the enterprises [
33].
This paper proposes:
Hypothesis 3.
Fintech enhances the financial acquisition ability of enterprises by reducing the financial cost of enterprises and reducing the leverage ratio of enterprises.
2.4. Literature Gap
There are three differences that distinguish our research from other studies on Fintech and corporate financing constraints. Compared with the existing literature, the following are the marginal contributions of this paper: First, the relationship between Fintech and traditional financial systems can be complicated, especially in developing economies, so we focus on China and expand the research regarding developing economies. Second, the existing literature on the information asymmetry in capital market is mostly seen in experience analysis [
34]. This paper uses the research of financial market micro-structures for reference [
35] and uses the daily frequency trading data of the securities market to construct the information asymmetry index between funds’ supply and demand. In addition, the intermediary mechanism identification of information asymmetry and financing cost enriches the research on corporate financing constraints. Thirdly, commercial credit and bank loans are the two main external financing methods for enterprises. The existing literature on the interaction between Fintech development and commercial credit and bank loans is still lacking. This paper analyzes the impact of Fintech on corporate debt financing (mainly including commercial credit and bank credit) under the internal control quality of enterprise heterogeneity, as well as the alternative relationship between the two debt financing methods.
6. Further Discussion: The Impact of Fintech on the Corporate Financing Types
The existing research only studies Fintech providing financial support for enterprises. The further question worth asking pertains to which financing methods of enterprises, bank loans and commercial credit alleviate the enterprises’ financing problems. In order to answer this question, this paper constructs the following empirical strategies to identify. In Formula (2), Type means the type of enterprise financing, which is specifically divided into commercial credit (NTC) and bank loan level (Loan), to verify the way Fintech works on two types of debt financing, such as bank loans and commercial credit obtained by enterprises; Formula (3) explores the interactive relationship between the development of Fintech, commercial credit and bank loans by constructing an interactive item between Fintech and bank loans (Loan). This paper uses (accounts payable + notes payable)/liabilities to measure the business credit (NTC) obtained by enterprises from business partners, and (short-term loans + long-term loans)/gross operating income to measure the level of bank loans (Loan) of enterprises, and conducts a 1% tail off treatment to avoid regression bias caused by extreme values. The identification strategy is as follows:
The alternative financing theory holds that in the case of credit rationing, some borrowers with a strong ability to pay interest on loans may not be able to obtain the bank loans required for business activities, and enterprises turn to business partners to obtain funds, so the existence of credit rations makes commercial credit an important alternative to bank loans [
54].
The internal control level of enterprises is closely related to commercial credit financing.
Table 12 takes whether the type of internal control defects of non-financial listed companies is 0 (When the internal control defect type = 0, it means there is no internal control defect; when the internal control defect type ≠ 0, it means there is an internal control defect, including: 1 = major defect; 2 = important defect; 3 = general defect) as the classification basis. The samples are divided into two groups: internal control defects and internal control defects. The estimated coefficients of FINTECH_1 in columns (1) and (3) are significant, showing that Fintech has a positive impact on enterprises’ access to bank loans and commercial credit. Fintech will help enterprises without internal control defects to obtain commercial credit and bank loans, but it is not significant for enterprises with internal control defects.
Columns (5) and (6) in
Table 12 examined the interaction between the development of Fintech, commercial credit and bank loans. In the group without internal control defects (5), the commercial credit obtained by enterprises increased significantly (the estimated coefficient of FINTECH_1 is 0.0840, which is significantly positive at the 1% significance level), and the amount of bank loans obtained decreased significantly (the estimated coefficient of loan is −0.1471, which is significantly negative at the 1% significance level), At this time, the substitution effect of business credit and bank loans of enterprises is significant (the coefficient of FINTECH_1*loan is 0.0108, which is significantly positive at the 5% significance level), indicating that the Fintech has promoted enterprises to use more business credit to obtain funds and reduced the use of bank loans to alleviate financing difficulties. However, in the group with internal control defects (6), the above conclusions are not significant.
7. Conclusions and Discussion
7.1. Conclusions
On the basis of clarifying the relevant theoretical mechanisms of Fintech and corporate financing constraints, this paper empirically tests the logical relationship and micro mechanism between Fintech and the corporate financing constraints using the data of Chinese A-share listed companies from 2011 to 2018 as research samples.
Firstly, as mentioned earlier, especially in developing economies such as China, the relationship between Fintech and traditional financial systems can be complicated. The conclusion of the article shows that Fintech can relieve corporate financing constraints, which is still valid after further robustness tests.
Secondly, we also examined intermediary effects. The mechanism research shows that Fintech “enabling” financial institutions achieve the purpose of easing corporate financing constraints by reducing the information asymmetry between the funds’ supply and demand and by reducing financing cost.
Furthermore, this paper analyzes the heterogeneity factors such as regional attributes, senior executives’ financial background, property rights attributes, stock market segment and competitive status of enterprises in the industry, and finds that the mitigation effect of Fintech on corporate financing constraints is more significant in eastern regions, senior executives with high financial literacy, private enterprises, non-main-board-listed enterprises, and enterprises with high competitive status.
Finally, considering the Fintech’ impact on the types of enterprise financing, it is observed that enterprises facing financing constraints tend to get more commercial credit and bank loans under the condition of higher internal control quality, but not significantly among enterprises with lower internal control quality. When enterprises are faced with credit rationing, or when it is difficult to obtain bank loans, commercial credit has become an alternative financing method for bank loans, promoting the transfer of credit resources from traditional mortgage guarantees to enterprise commercial credit.
7.2. Limitations
However, this research has some limitations. First, we used the data of listed companies to analyze the financing constraints. However, the financing constraints may also exist in non-listed companies, so we should expand the research perspective to non-listed companies in the future to verify the robustness of the research conclusions. Second, the sample in this study was from one single country, and future studies could extend the study to more countries, especially developing countries. Finally, the enterprise financing constraints were not only due to the problems of the existing financial system, so the existing model can incorporate other exogenous variables (such as enterprise project risk, industry type and accounting system).