Research on the Development Level of Big Data Industry and Its
Contribution to the Economy in China's Provinces
Sen Li
1,2
a
, Hongyuan Liang
1
, Yu Yan
1
and Haiying He
1
1
Management School, Shenyang Jianzhu University, Shenyang, China
2
Institute of Applied Ecology, Chinese Academy of Sciences, Shenyang, China
Keywords: Big Data, Economic Growth, Heterogeneity.
Abstract: Based on the endogenous growth theory of economics, this paper puts forward that labor, capital and
technology are the main driving forces to promote economic development.As the symbolic industry of the
fourth technological revolution, big data has been integrated into every corner of the society and become the
core technology element to promote regional economic development. This paper uses judgment matrix and
other methods to calculate the development level of big data in each province. In order to study the
contribution of big data industry to regional economy, this paper constructs a multiple regression model,
taking the regional economic development level as the explained variable, the big data development level as
the core explanatory variable, and labor and capital investment as the control variable. It is found that the big
data industry has become an important force to promote regional economic development. At the same time,
there is heterogeneity in the promotion efficiency of various regions. On this basis, it puts forward some
suggestions on how to accelerate the development of big data industry and promote the coordinated
development of China's provincial economy strategies and suggestions.
1 INTRODUCTION
Big data is a high-tech industry, and China will focus
on its development as a strategic industry. Big data is
the comprehensive application of modern
technologies such as the Internet and cloud computing
to classify and organize massive amounts of data,
thereby providing solid data support for national
management, social governance, and corporate
management. Compared with European and
American countries, China’s big data industry started
late, but after entering the 21st century, China’s
mutual big data industry has made great progress,
especially in the fields of Internet shopping, mobile
payment, e-commerce logistics, etc. Alibaba, JD,
Tencent and other companies have become world-
renowned companies in their respective fields, and
their business scope covers most countries and regions
in the world. The big data industry has become an
important force in promoting the steady and healthy
development of China's economy. (Wang 2021)
believes that big data industry can not only promote
the development of regional economy, but also
a
https://orcid.org/0000-0002-4391-2582
provide more scientific support for economic
decision-making and help people find the best
solution in complex social economy. Therefore, the
development quality of big data industry has an
important impression on the sustainable development
of economy.
At the same time, we should note that there are
obvious regional differences in the development level
of China's economy. The development level of the
southeast coastal areas is relatively high, and the
development level of the inland areas is relatively low.
The development of China's big data industry also has
a similar situation. Therefore, from the perspective of
the development of the big data industry, we analyze
the heterogeneity of China's provincial economic
growth momentum, and then propose
countermeasures and suggestions to promote the
coordinated development of various regions.
Big data is an emerging industry. At present, from
the perspective of big data industry, it is rare to study
the impact of big data industry on regional economic
and industrial development. For example, (Zhang,
2020) proposed that big data industry is an important
Li, S., Liang, H., Yan, Y. and He, H.
Research on the Development Level of Big Data Industry and Its Contribution to the Economy in China’s Provinces.
DOI: 10.5220/0011179200003440
In Proceedings of the International Conference on Big Data Economy and Digital Management (BDEDM 2022), pages 377-382
ISBN: 978-989-758-593-7
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
377
cornerstone of China's digital economy in the future,
which can drive the transformation and upgrading of
other industries. (Wu, et al., 2020) used the research
method of big data to predict the growth of local
economy. (Zhu, et al., 2020) proposed that big data
industry can optimize the socialist market economy,
and as a tool of macro-control, it can achieve a win-
win situation between "government" and "market". At
the same time, with the increasingly significant trend
of economic globalization, the role of big data in
international trade is becoming more and more
prominent. (Zhang, 2021) proposed that information
technology plays an important role in the operation of
multinational enterprises. Big data provides important
decision-making basis for enterprises in import and
export trade. At the same time, big data can also help
enterprises explore overseas markets and understand
the different product needs of various countries.
The big data industry can not only become a new
driving force for regional economic development, but
also drive the transformation and upgrading of
traditional entrepreneurship. (Wang, 2020) believes
that based on big data analysis, traditional industries
can more accurately find out the changes loved by
consumers and the trend of market development,
which can help them improve product
competitiveness and enhance the profitability of
enterprises.
It can be seen from the above literature that the
current academic circles generally agree that big data
industry is one of the key areas of future economic and
industrial development, which can inject new power
into the development of regional economy. At the
same time, most of the existing studies are based on
theory, and rarely use the method of data analysis to
conduct empirical research on the contribution of big
data industry to the economy. Therefore, based on the
establishment and evaluation of the development level
of big data industry in various regions of China, this
paper will study the heterogeneity of China's
economic development under the background of big
data.
2 MODEL CONSTRUCTION AND
DATA SOURCE
2.1 Model Construction
The empirical analysis of this paper is divided into two
parts. The first part is to evaluate the development
level of China's provincial big data industry. Build the
index evaluation model of the development level of
big data industry, collect and sort out relevant data to
evaluate the development level of big data industry in
China's provinces and cities.
In order to improve the scientific evaluation of the
development level of big data industry in various
provinces and cities, this paper, based on the analytic
hierarchy process, consults experts and scholars in the
field of big data, re determines the weight of the three
dimensions, and then evaluates the development level
of big data industry in various provinces and cities in
China.
After the judgment matrix is constructed, the
weight of each index is further determined. The
formula is as follows:
=
=
=
n
j
n
k
kl
ij
i
a
a
n
W
1
1
1
(1)
In the analytic hierarchy process, after obtaining
the index weight, it is necessary to further test the
consistency of the results.The calculation process is as
follows:
Firstly, Calculate the consistency index C.I.,
1
..
max
=
n
n
IC
λ
(2)
Among them, λ
max
is the largest characteristic root
of the matrix constructed in the previous section, and
n is the number of indicators.
Secondly, look up the table to determine the
corresponding average random consistency index R.I.
(random index).
Table 1: Average random consistency index R.I.
Matrix
order
1 2 3 4 5
R.I. 0 0 0.52 0.89 1.12
Finally, calculate the consistency ratio C.R.
(consistency ratio), and compare the calculated
consistency result with 0.1. If C.R.<0.1, the result is
considered to have passed the consistency test.
The second part is the heterogeneity analysis of
China's provincial economic development, which
constructs a multiple regression model, takes the
development level of big data as an important
influencing factor, and analyzes the differences in the
driving factors of China's provincial and municipal
economic development.
In this article, we use the level of development of
big data as an indicator of technological progress.
Therefore, we constructed a model of influencing
factors of China's economic development.
ε
β
β
β
α
++++=
332211
xxxy
(3)
BDEDM 2022 - The International Conference on Big Data Economy and Digital Management
378
Among them, x
1
is capital investment, x
2
is human
investment, x
3
is the big data development index, and
y is GDP.
2.2 Data Sources
All the data are from China Statistical Yearbook 2019
and Big data Blue Book: China big data development
report No.3.All indicators are cross-sectional data in
2018, and the analysis software is spss19.0.
3 DEVELOPMENT LEVEL OF
BIG DATA INDUSTRY IN EACH
PROVINCE
To evaluate the development level of big data
industry, we need to collect relevant data of big data
industry firstly. At present, as an emerging industry,
the big data industry is still lack of relevant official
statistics. Therefore, this paper get the data from Big
data Blue Book: China big data development report
No.3, which is compiled by the Key Laboratory of big
data strategy. In this report, the development level of
big data industry in each province is evaluated from
three dimensions of government application(GM),
commercial application(CE) and civil application (CI)
from the perspective of big data application. However,
in this report, the weights of the three ways of use are
simply treated, the weights of the three are equal, and
the sum of the three is taken as the comprehensive
evaluation result, as shown in the table below.
Table 2: Big data application level index.
Region GM CE CI Region GM CE CI
BEIJING 24.9 25.2 24.1 HAINAN 13.6 9.8 13.1
GUANGDONG 26.5 22.3 20.6 SHAANXI 12.9 11.2 11.9
ZHEJIANG 14.1 19.3 20.2 YUNNAN 11.1 9.4 15.5
SHANGHAI 22.1 15.5 15.7 HUNAN 12.3 12.4 11.1
GUIZHOU 28.9 7.7 16.2 NINGXIA 8.9 8.4 17.6
JIANGSHU 10.8 20.3 18.4 HUBEI 12.3 11.2 10.6
CHONGQING 20.7 11.7 14.5 QINGHAI 9.7 6.8 14.7
TIANJIN 19.7 11.6 15.5 SHANXI 12.6 5.7 11.0
SHANDONG 15.9 15.2 13.4 JIANGXI 10.8 9.4 8.7
HEBEI 18.6 10.6 13.6 JILIN 9.7 3.9 14.9
HENAN 22.3 9.0 11.5 GANSU 11.3 6.9 9.6
LIAONING 18.9 7.42 14.2 GUAGNXI 12.7 5.2 9.8
FUJIAN 11.3 12.5 14.7 HEILONGJIANG 9.5 3.9 12.8
ANHUI 14.1 14.5 9.4 XINJIANG 5.9 3.7 9.8
SICHUAN 13.4 12.3 12.2 XIZANG 1.5 7.4 1.7
NEIMENGGU 18.0 5.1 13.8
As can be seen from table 2, there are great
differences in the level of Internet application in
various regions. In terms of government application,
Guizhou, Guangdong and Beijing have the highest
index; In terms of commercial application, Beijing,
Guangdong and Jiangsu rank high in the index; In
terms of XX application, Beijing, Guangdong and
Zhejiang rank among the top three in the index. At
the same time, the indexes of these provinces have
exceeded 20, indicating a high level of development.
The three Internet indexes of western inland
provinces such as Tibet and Xinjiang did not exceed
10, ranking the last two of all provinces and cities.
After consulting experts in the field of big data,
we obtained the judgment matrix, and the results are
shown in the table below.
Table 3: Judgment matrix.
GM CE CI
GM 1.00 0.20 0.33
CE 5.00 1.00 2.00
CI 3.00 0.50 1.00
After calculation, the weights of government
applications, commercial applications and civil
applications are (0.1096, 0.5813, 0.3092)
T
, which
shows that experts generally believe that the
application of big data in the commercial field is the
most important. At the same time,the value of C.R. is
0.0036, so the previous calculation result is correct.
Through the above calculation, we get the weight
of the big data development level indicator, and then
we can determine the big data development index of
each province and city. The calculation results are as
follows:
Table 4: Big data comprehensive development index.
Region Score Region Score Region Score
BEIJING 24.80 LIAONING 10.78 QINGHAI 9.56
GUANGDONG 22.23 FUJIAN 13.07 SHANXI 8.11
ZHEJIANG 19.01 ANHUI 12.86 JIANGXI 9.35
SHANGHAI 16.25 SICHUAN 12.41 JILIN 7.95
GUIZHOU 12.68 NEIMENGGU 9.17 GANSU 8.25
JIANGSHU 18.67 HAINAN 11.26 GUAGNXI 7.42
CHONGQING 13.53 SHAANXI 11.60
HEILONGJIAN
G
7.22
TIANJIN 13.68 YUNNAN 11.46 XINJIANG 5.85
SHANDONG 14.71 HUNAN 12.00 XIZANG 4.99
HEBEI 12.41 NINGXIA 11.29
HENAN 11.22 HUBEI 11.39
As can be seen from the Table 4, there is a large
gap in the development level of big data industry
Research on the Development Level of Big Data Industry and Its Contribution to the Economy in China’s Provinces
379
among China's provinces. Beijing, Guangdong,
Zhejiang, Jiangsu and other economically developed
regions have higher big data index values and rank
high, while Tibet, Xinjiang, Heilongjiang and other
economically underdeveloped regions have lower
values and rank last. Therefore, it can be
preliminarily judged that there is a correlation
between the development of big data industry and the
level of regional economic development, which needs
to be further tested by regression analysis.
4 ANALYSIS ON THE
CONTRIBUTION OF BIG DATA
TO THE ECONOMY
There is a certain gap in the level of economic
development in various regions of China. In order to
facilitate research, according to the classification
method of the China Bureau of statistics, China's
provinces and cities are divided into four parts: the
eastern region, the central region, the western region
and the northeast region. In traditional economic
theory, capital investment and human investment are
important forces to promote economic growth and
industrial development, and technological progress is
another important factor.
Meanwhile, since China's provinces and cities are
divided into four regions, in the regression analysis,
China, the eastern region, the central region, the
western region and the northeast region are taken as
the research objects to study the heterogeneity of the
contribution of big data to the economic growth of
various regions in China.
4.1 Descriptive Statistical Analysis
Before performing regression analysis, first perform
statistical descriptive analysis on relevant data.
According to the previous division of provinces and
cities in China, the average value of the four main
indicators in each region is calculated. The
calculation results are shown in Table 5.
Table 5: Descriptive statistical analysis.
GDP
(Ten
billion)
Human
Investment
(Million)
Capital
Investment(T
en billion)
Big
Data
Index
East 481.00 20.22 619.12 16.61
Central 321.10 12.50 361.52 10.82
West 153.59 6.25 191.46 9.85
Northeast 189.17 7.32 228.62 8.65
It can be seen from Table 5 that there are obvious
gaps in the economic development levels of various
regions in China. The eastern region has obvious
advantages, its total economic output is even twice
that of the western region or the northeast region.The
central and northeastern regions rank second and
third, and the western region ranks last. At the same
time, human resources, resources and big data index
also showed the same situation. The eastern and
central regions ranked the top two, and the western
and northeastern regions ranked the bottom two.
4.2 Regression Analysis
After descriptive statistical analysis, further
regression analysis of the heterogeneity of economic
development in various regions of China from the
perspective of the big data industry is carried out.As
shown in Table 6, the goodness of fit and F value of
the four regression models are at a high level, and the
significance of each regression coefficient is good.
Table 6: Regression analysis results.
East Central West Northeast
C 9807.43
***
(2.863)
-9814.26
**
(3.453)
-2415.46
(-0.725)
-
6579.711
(-0.925)
β
1
5.045
**
(2.324)
4.136
***
(2.912)
12.313
***
(3.660)
26.337
***
(4.234)
β
2
0.612
***
(7.925)
0.550
**
(2.312)
0.588
***
(5.897)
1.804
***
(3.453)
β
3
589.01
***
(2.497)
171.338
***
(4.321)
120.65
***
(6.234)
167.87
***
(3.654)
Adjusted
R
2
0.998 0.697 0.929 0.926
F 423.41 57.7481 382.699 134.34
Note: the standard deviation in brackets, ******
indicate the significance level of 1%, 5%, and 10%
respectively.
From Table 6, it can be seen that the driving forces
of economic growth in various regions of China are
obviously heterogeneous. On the whole, the big data
industry has played a key role in the economic
development of various regions. The influencing
factor of the level of big data development has been
tested in the four models, which can show that the
development of the big data industry has a positive
impact on the growth of the regional economy,and the
result passed the test. At the same time, in the eastern
region, the big data industry contributes the most to
the development of the regional economy,the
coefficient is 589.01; while the western region has the
BDEDM 2022 - The International Conference on Big Data Economy and Digital Management
380
least contribution to the regional economy,the
coefficient is 120.65. This is also consistent with the
current distribution of the development level of the
big data industry in various regions in China.
Therefore, in order to accelerate the economic
development level of China's central and western
regions and northeast regions and promote the
coordinated development of China's economy, the
development of the big data industry in these regions
should be accelerated.
5 CONCLUSIONS AND
RECOMMENDATIONS
In this paper, Judgment matrix, multiple linear
regression analysis are adopted to study the
development level of big data industry and its
contribution to regional economy. The main
conclusions can be summarized as follows:
(1)There are great differences in the development
level of big data industry among provinces and cities.
The comprehensive development level of big data
industry is high in economically developed provinces
such as Beijing, Guangdong and Zhejiang. At the
same time, it also ranks high in subdivided fields such
as government application, commercial application
and civil application. The development of big data
industry in inland provinces such as Xinjiang,Tibet
and Heilongjiang is relatively poor and has great room
for improvement.
(2)The development of big data industry has a
positive impact on regional economic growth. At the
same time, among the four regions, the big data
industry contributes the most to the economic
development of the eastern region; The contribution
to the western region is the smallest, and the
contribution to the central region and the northeast
region ranks second and third, which is also in line
with the current distribution of the development level
of big data industry in various regions of China.
Based on the above empirical analysis results, in
order to accelerate the development of big data
industry and promote the high-quality economic
development of provinces and cities, the following
countermeasures and suggestions are put forward.
(1)The big data industry should be included in the
key development plan of the 14th five year plan. At
present, Chinese governments at all levels are
preparing the 14th five year plan. As a medium and
long-term development plan,big data industry should
be regarded as a key industry for governments at all
levels to develop in the next 5-10 years. Support the
big data industry in terms of funds and policies.
Especially in the central and western regions, the local
government should fully understand the importance of
big data industry, and strive to achieve leapfrog
economic development through big data industry.
(2)All regions should take big data enterprises as
key investment targets. Big data related enterprises
have high added value, green environmental
protection and other outstanding advantages, which
meet the requirements of national high-quality
development. All regions should attract and cultivate
big data related enterprises in combination with the
current situation of economic and industrial
development. Actively learn from Guizhou, Inner
Mongolia and other inland provinces the experience
of big data industry investment, and promote the
coordinated development of China's big data industry.
(3)Further strengthen the big data talent training.
Big data industry is a technology intensive industry,
and its high-quality development is inseparable from
excellent talents in the field of big data. At present,
some universities in eastern provinces have opened
big data related majors, which have trained a large
number of talents for the society. Therefore, the
central and western provinces should also add big data
related majors in time according to the needs of the
market to meet the development needs of the local big
data industry.
ACKNOWLEDGMENT
This work was financially supported by 1. Liaoning
Federation of Social Sciences—Study on the
coupling of coordinated development of real estate
and urban economy in Liaoning
Province(NO.2022lslwtkt-049) 2.Department of
Education of Liaoning Province—Research on
coupling development of strategic emerging
industries and traditional industries in Liaoning
Province (NO.lnqn202031).
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