Research on Social Credit System and Venture Capital Investment
Efficiency
Yifan Gong and Yingkai Yin
*
School of Economics, Shanghai University, Shanghai, China
Keywords: Social Credit System, Credit Information Sharing, Venture Capital.
Abstract: The research of the social credit system can not only analyze the problem of information asymmetry
theoretically, but also provide more entrepreneurial characteristics information for entrepreneurial investors
in practice. This article selects Changsha as a sample city and uses data from 2010 to 2019 to regress and
analyze the relationship between the social credit system and the scale of venture capital. The empirical
analysis results show that if a city’s credit score increases, the proportion of venture investment that a city
receives in the country’s venture capital will increase; the proportion of a city’s credit ranking decline in the
amount of venture investment in the country’s venture capital will also decrease accordingly. Moreover, the
increase in the absolute level of the social credit system has a greater impact on the scale of venture capital
than the increase in the relative level.
1 INTRODUCTION
Mass entrepreneurship and innovation have become
an inevitable requirement for economic development
transformation and improving the quality of
economic development. The “Opinions of the State
Council on Promoting the High-quality Development
of Innovation and Entrepreneurship and Creating an
Upgraded Version of ‘Double Entrepreneurship’”
clearly stated that the role of venture capital in
supporting innovation and entrepreneurship should
be fully utilized. The information asymmetry faced
by venture capital institutions often faces obstacles to
expanding the scale of venture capital when
investing. Therefore, in-depth study of the
relationship between the improvement of the social
credit system and the expansion of the scale of
venture capital has a positive guiding significance for
giving full play to the role of credit as a new
production factor, optimizing the allocation of
resources, and improving the efficiency of investment
and financing.
In 2014, the State Council issued the “Plan for the
Construction of a Social Credit System (2014-2020)”
to vigorously promote the construction of social
credit system. Changsha is located in the central
region of China. In 2020, the amount of venture
capital investment in Changsha is 21.286 billion
yuan, ranking 10 in China, which is far from the
previous ones (Table 1). In terms of proportions,
Changsha only accounts for 2.2% of the total
investment amount in the country, indicating that the
scale of venture capital in Changsha is relatively
small. Judging from the number of investment cases,
there were 4,567 investment events in China in 2020,
of which only 35 were in Changsha,
accounting for
0.8%
of the country. At the same time, we found that
the number of investment events in Changsha reached
the
highest in 2015 and 2016, and continued to
Table 1: Top 10 City Venture Capital Private Equity
Amount in 2020.
Rank City
Amount
(100 million yuan)
1 Beijing 2075.51
2 Shanghai 1049.37
3 Jinan 1019.56
4 Shenzhen 501.05
5 Hefei 492.32
6 Guangzhou 391.82
7 Suzhou 345.62
8 Hangzhou 337.81
9 Nanjing 234.28
10 Changsha 212.86
Gong, Y. and Yin, Y.
Research on Social Credit System and Venture Capital Investment Efficiency.
DOI: 10.5220/0011161900003440
In Proceedings of the International Conference on Big Data Economy and Digital Management (BDEDM 2022), pages 99-104
ISBN: 978-989-758-593-7
Copyright
c
2022 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
99
Figure 1: Venture Capital Private Equity Amount and Investment Events of Changsha in 2010-2020
decline in the next few years, reflecting the low level
of overall investment development in Changsha (Fig.
1). This article uses empirical analysis and selects
relevant data from Changsha from 2010 to 2019 to
study the relationship between the construction of the
social credit system and the efficiency of Changsha’s
venture capital, aiming to promote the further
improvement of China’s social credit system.
2 LITERATURE REVIEW
2.1 Social Credit System and Function
The core of the credit system is credit reporting, the
essence of which is the sharing of credit information.
The credit information sharing mechanism alleviates
the problem of information asymmetry in the
transaction process between the borrower and the
lender by sharing the borrower’s information
between lenders.
In China, the traditional credit evaluation system
based on quantitative financial data and hard
information is not suitable for small and medium-
sized enterprises, causing them to face a large
financing gap. In order to solve this problem, the
Social Credit System (SCS) was formally proposed in
2014 (Síthigh, Siems, 2019). The system combines
the economic aspects of credit (involving financial
creditworthiness and trust in the market) with
measures to promote social harmony and effective
government. Its core function is to establish a system
to supervise the credit behavior of individuals and
enterprises, and the untrustworthy behavior will be
punished quickly and effectively (Chen, Grossklags,
2020). The current research shows that the use of big
data, blockchain and other technologies to
comprehensively evaluate the credit status of SMEs
can effectively reduce the information costs and
transaction costs between SMEs and lenders (Sun,
2021).
2.2 Factors That Affect the Decision-
Making of Venture Capital
The current literature on such issues mainly uses two
methods. The first method is the multiple regression
method. By using multiple regression model, scholar
empirically finds that financial literacy has a positive
relationship with investment decision-making to a
certain extent because of its ability to accurately
control information quality and rationally select
investment sectors (Alaaraj, Bakri, 2020).
The second method is to use statistical analysis.
With a survey of 749 venture capitalists, research
used experimental conjoint analysis to find that
corporate revenue growth is the most important
investment criterion, followed by the added value of
products/services, the performance and profitability
of the management team (Block, et al, 2019). 885
institutional venture capitalists were surveyed and the
results show that when choosing investments, venture
capitalists believe that the management team is more
important than business-related features such as
products or technology, and the ultimate success or
failure of investments depends on the team rather
than the business. Moreover, although deal sourcing,
deal selection, and post-investment value-added all
28,2
37,42
9,09
8,41
8,07
14,33
30,86
64,28
47,19
107,17
212,86
29
25
21
12
54
108
113
87
90
69
35
0
20
40
60
80
100
120
0
50
100
150
200
250
2010 2011 2012 2013 2014 2015 2016 2017 2018 2019 2020
Amount(100 million yuan) Events
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100
contribute to value creation, VCs believe that deal
selection is the most important of the three
(Grompers, et al, 2020).
2.3 Social Credit System and
Investment and Financing
Efficiency
Scholars mostly use a combination of qualitative
analysis and quantitative analysis to study such
problems. An empirical research based on XBRL
(Internet-based computer language dedicated to the
preparation, disclosure and use of financial reports,
which can be entered once and used multiple times)
shows that the higher the efficiency of credit
information processing, the more efficient the
company’s investment efficiency (Cheng,
et al, 2021).
By taking top 500 listed companies in China as the
research object, the research constructs a DID model
to study the relationship between information sharing
and corporate investment efficiency. Research shows
that credit information sharing can effectively
improve the investment efficiency of enterprises (Ye,
et al, 2020).
3 MODEL SETTING
3.1 Research Hypothesis
If a social credit system, including the credit
investigation system, has established a shared credit
information collection, and with the continuous
improvement of this system, the availability of
corporate credit information and even more
characteristic information continues to increase, then
adverse selection The problem will be alleviated.
With a relatively complete social credit system, it is
easier for venture investors to screen start-ups and
make investment decisions. This means that the
improvement of the social credit system also means
that the default cost of start-ups will increase, and the
problem of moral hazard will also be alleviated.
Therefore, this article makes the following
assumptions:
H1: The higher the degree of Changsha’s social
credit system, the larger the scale of venture capital.
3.2 Sample Selection and Data Sources
Considering the representativeness of the sample
cities’ regional geographic location and venture
capital scale, as well as the availability and
completeness of data, this article chooses Changsha
as the analysis object. All the investment events of all
venture capital institutions in the sample cities from
2010 to 2019, the per capita GDP data of the sample
cities from 2010 to 2019, and the proportion of the
output value of the secondary and tertiary industries
in GDP are all taken from the wind database. The City
Business Credit Environment Index (CEI) is mainly
taken from the “CEI Blue Book”. For years with
missing data, the mean value of two consecutive
years is used as an interpolation substitute. In
particular, due to the lack of data in 2014, data of
2013 is the average of previous years, and the 2014’s
is the average of 2013 and 2015.
3.3 Variable Definition and Model
Setting
According to the research purpose and related
literature, this paper chooses the ratio of venture
capital investment to the national total venture capital
investment to measure the scale of entrepreneurship.
This article chooses city’s commercial credit
index as the measure of the level of social credit
system construction. The Urban Commercial Credit
Index is jointly compiled by the Integrity Research
Center of the Chinese Academy of Management
Science and other institutions. It is based on the
theory of social credit system, urban credit system,
and enterprise credit management theory. It provides
financial credit instruments, commercial credit sales,
and enterprise comprehensive evaluation of factors.
Finally get the social credit score of each city and
rank it. The social credit score ranges from 1 to 100.
The higher the score, the higher the construction level
of the city’s social credit system. Existing research
results show that CEI is a reliable indicator to
measure the degree of perfection of the city’s credit
system and the results of its operation. Considering
that the changes in the social credit system may not
have an immediate impact on the decision-making of
venture investors, this article chooses the first-order
lag and second-order lag of CEI as explanatory
variables.
The model established in this article is as follows:
112 23
y
ttt tt
a b CEI b CEI b Controls
ε
−−
=+ + + +
(1)
Among them, is the explained variable, which
measures the scale of venture capital.
1t
CEI
,
2t
CEI
as
two explanatory variables, they measure the degree of
perfection of the city’s social credit system. This
paper selects per capita GDP (ten thousand yuan), the
proportion of secondary industry output
value in GDP,
and the proportion of tertiary industry output value in
y
t
Research on Social Credit System and Venture Capital Investment Efficiency
101
Table 2: Variable Definitions.
Variable types Variable names Variable symbols Variable definitions
Explained variable Scale of venture investment y
The permillage of venture
capital amount to total
venture capital amoun
t
(‰)
Explanatory variables
CEI ranking cei_ran
k
Ranking of CEI
CEI score cei_score Score of CEI
First order lag of CEI score L1_score First order lag of CEI score
Second order lag of CEI score L2_score
Second order lag of CEI
score
First order lag of CEI ranking L1_ran
k
First order lag of CEI ranking
Second order lag of CEI score ranking L2_rank
Second order lag of CEI
score ranking
Control variables
GDP per capita gdp_pc
GDP per capita (ten thousand
yuan)
Proportion of secondary industry second_pro
Proportion of secondary
industry output value in GDP
Proportion of tertiary industry tetiary_pro
Proportion of tertiary
industry output value in GDP
Table 3: Descriptive Statistics of Variables.
mean std min max
y 4.45 3.05 1.69 10.96
CEI_score 73.78 1.23 71.27 75.52
CEI_rank 27.84 2.46 23 32
gdp_pc 10.64 2.33 6.72 13.99
second_pro 50.20 5.82 38.36 56.13
tertiary_pro 45.83 6.23 39.58 58.54
GDP as control variables
t
Controls
in order to exclude
the influence of local economic development level
and industrial structure on the scale of venture capital.
The variable names, symbols and definitions in
model (1) are shown in Table 2.
4 EMPIRICAL ANALYSIS
In the sample cities selected in this article, the average
value of the city’s venture capital investment to the
country’s total venture capital is 4.45‰. The
maximum value is 10.96‰, and the minimum value
is only 1.69‰, which is quite different. The average
CEI score of the city is 73.78, and the standard
deviation is 1.23. The average value of CEI ranking
is 27.84, and the standard deviation is 2.46. The social
credit scores of the selected sample cities are
relatively close. The average per capita GDP is
106,400 yuan, and the standard deviation is 2.33,
which is a small difference. From the perspective of
industrial structure, the average value of the
secondary industry’s output value in GDP is 50.20%,
the minimum is 38.36%, and the maximum is
56.13%.
The average value of the output value of the tertiary
industry as a proportion of GDP is 45.83%, the
minimum is 39.58%, and the maximum is 58.54%.
The secondary and tertiary industries in the sample
cities have a relatively large proportion, and the
output value of the secondary industry is relatively
higher.
4.1 Regression Results
Table 4 shows the multiple regression results of
Changsha’s social credit system and venture capital
scale.
4.2 Descriptive Statistical Analysis
It can be seen from Table 4 that in the case of column
(5), the city credit ranking lags first, the city credit
ranking lags first, per capita GDP, the proportion of
the secondary industry, and the tertiary industry can
all be reached at the 1% significant level.
The coefficients of the proportion of the
secondary industry and the proportion of the tertiary
industry are 7.107 and 5.992 respectively. This means
that when the proportion of the secondary industry
increases by 1, it will increase the proportion of
venture capital received by Changsha to the national
venture capital by 0.71% when the proportion of the
tertiary industry increases by 1, it will increase the
proportion of venture capital investment obtained by
Changsha
City to the national venture capital
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Table 4: Regression Results of Changsha.
(1) (2) (3) (4) (5) (6) (7)
y y y y y y y
L1_score
-2.16**
(0.56)
-0.22
(1.10)
-0.97
(0.51)
gdp_pc
-0.45*
(0.1768)
-0.43
(0.16)
-0.43**
(0.13)
-1.33***
(0.18)
-1.35***
(0.03)
-1.02**
(0.22)
-0.66*
(0.32)
second_pro
-4.42
(3.99)
-1.73
(3.47)
-1.38
(2.48)
6.75*
(3.11)
7.11***
(0.32)
2.58
(3.27)
0.43
(6.92)
tetiary_pro
-4.25
(3.71)
-1.53
(3.28)
-1.19
(2.30)
5.79
(2.86)
5.99***
(0.28)
2.02
(2.98)
0.25
(6.38)
L2_score
0.29
(0.46)
0.28
(0.38)
L1_rank
-0.44***
(0.08)
-0.43***
(0.02)
-0.29*
(0.09)
L2_rank
-0.14***
(0.01)
cei_score
-0.711
(1.054)
_cons
584.64
(383.98)
158.95
(369.07)
110.15
(229.85)
-571.84
(285.10)
-593.92***
(27.70)
-126.08
(323.15)
29.74
(621.43)
Obs. 9 8 8 9 8 9 10
R
2
0.88 0.90 0.90 0.937 0.99 0.97 0.54
Adj-R
2
0.77 0.64 0.75 0.873 0.99 0.92 0.17
F 7.62 3.48 6.38 14.78 1548.9 20.23 1.45
Standard errors are in parenthesis
*** p<0.01, ** p<0.05, * p<0.1
investment by 0.60%. The improvement of the urban
industrial structure will also expand the scale of
venture capital.
The coefficients of L1_rank and L2_rank are -
0.432 and -0.138, respectively. When the first-order
lag and second-order lag of a city’s credit ranking
increase by one place (ranking decline), the
proportion of venture capital investment obtained by
Changsha in the country’s venture capital investment
declines 0. 0432%, 0.0138%.
The coefficient of gdp_pc is -1.352, which means
that when the per capita GDP increases by 10,000
yuan, the proportion of venture capital investment in
Changsha will decrease by 0.135%.
5 CONCLUSIONS
This paper selects Changsha as the sample city and
uses data from 2010 to 2019 to conduct empirical
tests on the research hypotheses. The results show
that if the city’s credit score increases, the proportion
of the city’s venture capital investment in the
country’s venture capital will increase; the city’s
credit ranking declines the proportion of the city’s
venture capital investment in the country’s venture
capital will also decrease accordingly. Moreover, the
increase in the absolute level of the social credit
system has a greater impact on the scale of venture
capital than the increase in the relative level. The
empirical results also show that the relationship
between urban GDP per capita and the scale of
venture capital presents a more complicated form,
which requires further research to determine.
Based on the above conclusions, this article has
the following three policy recommendations:
5.1 Improving the Credit Guarantee
System
The credit guarantee system is an important way to
solve the problem of corporate financing, and it is
also an important link to perfect and perfect the social
credit system. Relevant departments should improve
laws and regulations to provide policy guarantees for
the credit guarantee mechanism. By building a credit
information sharing platform, strengthen the
circulation of credit data, alleviate the problem of
information asymmetry, and promote the smooth
flow of the guarantee process. In addition, make good
use of the advantages of supervision, streamline
handling procedures, implement classified
supervision, dynamic supervision, and precise
supervision of credit subjects; strengthen the whole-
process supervision before and after the event,
improve the credit commitment before the event, the
Research on Social Credit System and Venture Capital Investment Efficiency
103
credit supervision during the event, and the credit
reward and punishment mechanism after the event.
5.2 Improving the Construction of
Credit Information Sharing System
Whether the credit data is perfect or not is related to
the long-term and healthy development of China’s
credit service agencies, and the construction of the
credit data system can promote the improvement of
China’s entire credit system. Currently, information
between government departments cannot be shared,
social information is not transparent enough, and it is
difficult for credit service agencies to obtain relevant
credit data. Therefore, we should vigorously support
the construction of industry credit databases,
encourage credit service agencies to cooperate with
Internet platforms, and promote the construction of
credit data. Second, establish a characteristic credit
database. Credit service agencies should study the
credit data that is urgently needed in China, especially
the data that is urgently needed by national
development strategies, and the current credit data
needed for corporate development, and establish a
distinctive professional credit database to be more
effective to improve the social credit system.
5.3 Guiding Enterprises to Enhance
Their Credit Awareness
Corporate credit awareness is the fundamental
support point of China’s credit system construction.
By continuously enhancing its credit awareness,
encouraging them to improve their credit records,
accelerating credit accumulation, enhancing mutual
trust between banks and enterprises, and reducing
information opacity. At the same time, speed up the
development of the credit guarantee industry, speed
up the establishment of corresponding circulation and
disposal platforms for intellectual property, accounts
receivable and other intangible assets and current
assets, and standardize its evaluation, registration,
and management procedures. In addition, financial
product innovation should also be increased. When
banks design financial products, they should develop
and design products in a targeted manner according
to the characteristics of the investment and financing
activities of different types of enterprises. Promote
the orderly development of digital finance, improve
the digital financial credit system, and create
diversified digital financial products on the premise
of abiding by financial ethics.
ACKNOWLEDGEMENT
The paper is supported by the National Social Science
Foundation of China (Grant No. 17BJY062).
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