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).
REFERENCES
AA Anoushiravani, J Patton, Z Sayeed, MM El-Othmani,
KJ Saleh (2016). Big Data, Big Research:
Implementing Population Health-Based Research
Models and Integrating Care to Reduce Cost and
Improve Outcomes. Orthopedic Clinics of North
America, vol. 4, pp:717-724.
Anthony G. Picciano (2012). The Evolution of Big Data
and Learning Analytics in American Higher Education.