Inclusive Finance and Enterprise Technological Innovation in the
Context of Big Data: Evidence from Listed Companies
Fangxin Shi
Shaan Xi Normal University, Xi an, Shaan Xi, China
Keywords: Digital Financial Inclusion, Enterprise Technology Innovation, Economic Growth.
Abstract: Computer software engineering development projects involve many fields, and there are many risks and
complex and unknowable factors. In this systematic project, due to the particularity of software products, it is
necessary to pay attention to and apply various digital and modern technologies to make computer software
engineering become a Leading the driving force of innovation and development in various industries and
meeting the needs of modern development. Based on the development and application of digital technology
in computer software engineering, this paper elaborates the methods and technologies commonly used in
engineering development, and proposes corresponding optimization strategies for the application of digital
technology.
1 INTRODUCTION
A lot of convenience has come, and it has played an
irreplaceable key role in the context of the rapid
development of information and modern society.
Computer software engineering is a new thing. After
it entered our country, it has achieved great
development and progress at the technical level. On
the platform of modern and digital technology
application, through the linking and sharing of
information, a new industrial chain and core have
gradually formed. With the extensive development of
digital technology, computer software engineering
has replaced and surpassed traditional technology.
However, in the process of digital technology
development of computer software engineering, there
are still some problems and defects. Considering the
innovation of some application technologies
themselves The lack of performance limits the
application and development of machine software
engineering to a certain extent. To this end, it is
necessary to strengthen the computer digitization
technology independently developed and innovated
in our country. Only on the premise of grasping the
independent and innovative digitization and
modernization technology can we promote the
forward and healthy development of computer
software engineering and safeguard the national
security and defense forces of our country. Escort and
promote the progress and development of my
country's modernization cause.
2 LITERATURE REVIEW
Many scholars have actively explored the causes of
the financing difficulties of enterprises and put
forward corresponding solutions. Due to bank credit
rationing, enterprises can't get access to loan, their
collateral value is the root cause of suffering to bank
credit rationing (Stiglitz, 1981, Weiss, 1981, Wang,
2003, Zhang, 2003). Lack of " hard information"
caused by information asymmetry is also an important
factor restricting its financing (Lin, 2001, Li, 2001).
The banks which use relational loans can ease the
enterprises’ financing dilemma, because the relational
loan depends on the "soft information" of the
enterprise (Berger, 1995, Udell, 1995)
.
During the
epidemic, China's Central Bank also implemented
preferential credit policies such as reserve reduction,
aiming to help enterprises acquire loan and alleviate
their pressure of cash flow, but said most of the
enterprises have not acquired bank loans, its cash flow
pressure has not been eased (Zhu, 2020, Zhang, 2020,
Li, 2020, Wang, 2020).
Inclusive finance provides a new way to solve the
financing problems of enterprises. The concept of
inclusive finance was proposed by the United Nations
194
Shi, F.
Inclusive Finance and Enterprise Technological Innovation in the Context of Big Data: Evidence from Listed Companies.
DOI: 10.5220/0011170600003440
In Proceedings of the International Conference on Big Data Economy and Digital Management (BDEDM 2022), pages 194-198
ISBN: 978-989-758-593-7
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
in 2005, and its essence is to resolve financial
exclusion. In recent years, commercial Banks have
set up inclusive finance institutions, using digital
financial means to provide finance to enterprises
(Zhu, 2020, Zhang, 2020, Li, 2020, Wang, 2020). The
inclusive finance institutions have dedicated risk
management and compensation mechanism, this
mechanism reduce the bank risk bearing level,
improve the credit availability (Yu, 2020, Kang,
2020, Zhou, 2020). Digital financial advantage
continuously emerging, on the one hand, digital
financial in the information gathering has
incomparable advantage over traditional financial,
this advantage allows it to effectively identify risks,
according to the data collected for the credit quality
of the enterprises to provide financing support (Yu,
2020, Dou, 2020). On the other hand, digital finance
with the help of the Internet technology, can reduce
the cost of financing of enterprises, improve the
financing efficiency (Liang, 2018, Zhang, 2018). In
addition, digital financial also broke through the
traditional financial institutions physical network
restrictions on financial services, it is not limited to
offline services model make it possible for financial
services of universal coverage, many scholars believe
that commercial banks use digital inclusion financing
is feasible to resolve enterprise financing difficulties.
3 RESEARCH DESIGN
3.1 The Source of Data
In this paper, the annual data of listed companies from
2011 to 2017 are taken as sample data, and the sample
data are screened as follows: First, the listed ST and
delisted as well as the financial, real estate and
insurance categories during 2011-2017 are excluded;
Second, the variables in the data are Winsorized.
Third, for the missing financial information of a large
number of enterprises, this paper will be removed. The
financial and patent application data of enterprises
used in this paper come from Guotai 'an Database, and
the digital Financial Inclusion Index adopts The
Digital Financial Inclusion Index (2011-2018)
compiled by Peking University.
3.2 Model Setting and Variable
Definition
Based on existing studies, this paper constructs the
following model:
01 2
j
tijtjt
innov difi control
ββ β
ε
=+ + +
(1)
Where, i, j, t represent company, region and year.
The explained ariable inov is the innovation capability
of enterprises, and the explained variable difi is digital
inclusive finance. Control is the Control variable,
including enterprise size, profitability roa, Cash flow
cash, fixed asset share fas, corporate leverage lev, and
Capital intensity Capital. In addition, the model
controls the fixed effects of time and industry, and ε is
the error term.
Among them, the explained variable innov
represents the innovation ability of enterprises.
Existing literatures usually measure enterprise
innovation by the innovation input and output of
enterprises, but the data statistics of enterprise
innovation input and output in current databases are
missing. At the same time, patent application can
represent the innovation ability of enterprises.
Therefore, this paper uses the total number of three
types of patent applications of listed companies to
measure enterprise innovation.
The core explanatory variable difi represents the
digital financial inclusion index. Since the digital
financial inclusion index value at the provincial level
is too large compared with other variables, this paper
takes logarithm of the digital financial inclusion
index.
Control is a series of enterprise-level data to
reduce the endogenous problem of the model. The
following variables are selected in this paper:
Profitability (roa), capital intensity (cap), enterprise
age (age), enterprise size (size) and enterprise
leverage (lev), Cash flow (cash), fixed asset share
(fas). In addition, the model controlled for annual and
industry fixed effects.
Table 1: Variable Definition.
Variable name
Variabl
e
symbol
Variable definition
The innovation
ability
innov
The total number of
patents filed by
enterprises (including
inventions, practical
shapes and designs) is
logarithmic
Profitability roa
Net profit margin on
total assets
Capital intensity cap
Ratio of total assets to
total operating income
Enterprise age age
Year of observation
minus year of
establishmen
t
The enterprise scale size
Take the logarithm of
total enterprise assets
Corporate leverage
ratio
lev
Corporate asset-liability
ratio
Cash flow cash
Net cash flows from
operating activities
Inclusive Finance and Enterprise Technological Innovation in the Context of Big Data: Evidence from Listed Companies
195
Variable name
Variabl
e
symbol
Variable definition
Share of fixed assets fas
Fixed assets account for
the proportion of total
assets
4 RESULTS AND ANALYSIS
Table 1 shows the empirical test results of the impact
of digital financial inclusion on enterprise
technological innovation. In Model (1), the fixed
effect of "time-industry" is controlled. The results
show that the regression coefficient of digital
inclusive finance (difi) on enterprise patent
application is positive, and passes the significance
test of 1%, which indicates that the development of
digital inclusive finance helps promote enterprises to
improve their independent innovation ability.
From the perspective of control variables, some
factors of enterprises themselves will also affect the
local technology innovation of enterprises. The
regression coefficient of capital intensity, leverage
ratio and cash flow of an enterprise is significantly
positive, which indicates that the more capital
intensity, the higher the share of fixed assets and the
more cash flow of an enterprise, the more beneficial
it is to technological innovation.
Table 2: Results of Regression.
(1)(2)
innov innov
difi 30.43
***
17.69
***
(6.54) (4.33)
roa 62.19
(1.35)
cap 2.34e-08
***
(32.63)
age -0.193
(-0.52)
size 59.72
(0.22)
lev 97.90
***
(7.95)
cash 4.26e-08
***
(7.72)
fas 48.35
(0.15)
cons -49.79
*
-95.85
Industry, Yea
r
(-1.99)
control
(-0.29)
control
N
adj.R
2
8287
0.005
8287
0.266
Note: The brackets are t values, where *, ** and *** represent significance levels of
10%, 5% and 1% respectively
5 RSULTS AND ANALYSIS
Table 2 shows the empirical test results of the impact
of digital financial inclusion on enterprise
technological innovation. In Model (1), the fixed
effect of "time-industry" is controlled. The results
show that the regression coefficient of digital
inclusive finance (difi) on enterprise patent
application is positive, and passes the significance
test of 1%, which indicates that the development of
digital inclusive finance helps promote enterprises to
improve their independent innovation ability.
From the perspective of control variables, some
factors of enterprises themselves will also affect the
local technology innovation of enterprises. The
regression coefficient of capital intensity, leverage
ratio and cash flow of an enterprise is significantly
positive, which indicates that the more capital
intensity, the higher the share of fixed assets and the
more cash flow of an enterprise, the more beneficial
it is to technological innovation.
6 THE APPLICATION PROCESS
OF DATA MINING
1) Data mining environment. Data mining refers to a
complete process that mines previously unknown,
effective, and practical information from a large
database, and uses this information to make decisions
or enrich knowledge.
2) Data mining process diagram. The figure below
describes the basic process and main steps of data
mining.
Figure 1. The basic process and main steps of data mining.
3) Workload of data mining process
The business object being studied in data mining
is the foundation of the entire process. It drives the
entire data mining process. It is also the basis for
testing the final results and guiding the analysts to
complete the data mining and consultants. The steps
in Figure 2 are completed in a certain order, of course.
There will also be feedback between steps in the
whole process. The process of data mining is not
BDEDM 2022 - The International Conference on Big Data Economy and Digital Management
196
automatic, and most of the work needs to be done
manually. Figure 3 shows the ratio of the workload of
each step in the whole process, which can be seen as
60% Time is spent on data preparation, which shows
that data mining has strict requirements for data, and
subsequent mining work only accounts for 10% of the
total workload.
Figure 2. Proportion of workload in the data mining
process.
4) The general content of each step in the data
mining process is as follows:
(1) Determine the business object
Clearly define business problems. Recognizing
the purpose of data mining is an important step in data
mining. The final structure of mining is
unpredictable, but the problems to be explored should
be foreseeable. For data mining, data mining is blind.
(2). Data preparation
1) Data selection. Search all internal and external
data information related to business objects, and
select data suitable for data mining applications.
2) Data preprocessing. The quality of the research
data is prepared for further analysis, and the type of
mining operation to be carried out is determined.
3) Data conversion. The data is converted into an
analysis model. This analysis model is established for
the mining algorithm. The establishment of an
analysis model that is really suitable for the mining
algorithm is the key to the success of data mining.
(3). Data mining
Except for the selection of the appropriate mining
algorithm for mining the obtained converted data, all
other tasks can be completed automatically.
(4). Result analysis
The analysis method used to interpret and
evaluate the results should generally be determined
by data mining operations, and visualization
techniques are usually used.
(5). Assimilation of knowledge
Integrate the knowledge obtained from the
analysis into the organizational structure of the
business information system. The step-by-step
implementation of the data mining process requires
personnel with different expertise in different steps.
They can be roughly divided into three categories.
Business analysts: required to be proficient in
business, able to explain business objects, and
determine the business requirements for data
definition and mining algorithms based on each
business object.
Data analysis personnel: proficient in data
analysis technology, have a relatively proficient grasp
of statistics, and have the ability to transform business
requirements into various steps of data mining, and
select the appropriate technology for each operation.
Data management personnel: proficient in data
management techniques, and collect data from
databases or data warehouses. It can be seen from the
above that data mining is a process of cooperation
between a variety of experts, and it is also a process
of high investment in capital and technology. This
process must be repeated in the repeated process,
constantly approaching the essence of things, and
constantly prioritizing problems. Data reorganization
and subdivision, adding and splitting records,
selecting data samples, visualization, data
exploration, clustering analysis, neural network,
decision tree mathematical statistics, comprehensive
interpretation and evaluation of time series
conclusions, data knowledge, data sampling, data
exploration, data adjustment, modeling evaluation.
For example: Relevance Analysis. Relevance
analysis is to give the similarity of items or objects.
There are mainly the following application scenarios.
Providing different services or advertisements to the
target audience. Movie recommendation or Taobao
product recommendation. Genetic analysis to
discover common ancestors. To simplify the code, we
only consider two items at the same time. Let's say
that user A buys milk and bread. We want to follow
the principle that if user A buys X, then he is likely to
buy Y as well.
Figure 3. Code set.
7 CONCLUSIONS AND
RECOMMENDATIONS
In recent years, the development of digital inclusive
finance has attracted high attention from all walks of
life, it also has a profound influence on China's
economic development. This paper studies the impact
of digital inclusive finance on enterprises' innovation
ability, empirically tests the impact of digital
inclusive finance on enterprises' technological
Inclusive Finance and Enterprise Technological Innovation in the Context of Big Data: Evidence from Listed Companies
197
innovation with the help of the data of Chinese listed
companies from 2011 to 2017, and draws the
following conclusions. The development of digital
inclusive finance plays a significant role in promoting
the technological innovation of enterprises. The
possible mechanism of digital inclusive finance to
promote technological innovation of enterprises is
that it alleviates the financing constraints of
enterprises and enables enterprises to increase
investment in R&D activities. It is worth mentioning
that there are still some shortcomings in this paper.
This paper does not test the influence mechanism of
digital inclusive finance on enterprise technological
innovation, which is also the next research of the
author.
Combined with the test results of digital inclusive
finance on enterprise technological innovation, This
paper puts forward the following policy suggestions.
First, we should actively promote the development of
big data technology, encourage financial institutions
to provide financing services to enterprises by means
of digital inclusive finance, and provide full financial
support for technological innovation activities of
enterprises. According to the Plan for Promoting The
Development of Inclusive Finance (2016-2020)
issued by The State Council, inclusive finance refers
to providing appropriate and effective financial
services at an affordable cost to all social strata and
groups in need of financial services based on equal
opportunities and the principle of business
sustainability. Small and micro enterprises, farmers,
urban low-income groups, poor people, the disabled,
the elderly and other special groups are the key
service objects of inclusive finance in China. It is of
great significance to develop inclusive finance to help
those who have long been outside the formal financial
system to obtain effective financial support.
Second, the characteristics of digital inclusive
finance, such as low threshold and high convenience,
make it have a positive impact on many aspects of the
economy. However, the distorted development of
Internet companies blindly pursuing profits not only
has a huge impact on traditional commercial banks,
but also endangers the stability of the entire financial
system. From the liability side of banks, various
financial products launched by digital inclusive
finance make the deposit competition faced by
commercial banks increasingly fierce. Financial
products represented by Yu'ebao have been highly
sought after by investors since their issuance. They
not only promise flexible access to investors' funds,
but also bring investors returns higher than bank
deposits, leading to continuous loss of savings
deposits in commercial banks. From the asset side of
the bank, the bank may choose the assets with high
risk and high return to make up for the loss of its
liability side. From the point of view of payment end,
Alipay, wechat Pay and other third-party payment
platforms have formed a situation of competing with
banks. Banks' fee income has been slashed by the fact
that most payments are bypassing the banking
system, with no fees charged and money transferred
immediately to their accounts. The digitalization of
finance makes high-risk behaviors more hidden.
Regulators should be alert to non-performing asset
securitization and financial products of commercial
banks. Although these financial products are covered
with the cloak of inclusive finance, they are
essentially Ponzi Financing, which undermines the
stability of commercial banks and even the entire
financial system. Therefore, the management's
supervision of the financial field should follow
closely the financial innovation and prevent financial
risks.
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