Research on the Impact of Digitization and Intelligentization on the
Creation of Shared Value by Small, Medium-sized and Micro
Enterprises
Shicheng Liu
a
and Mengting Jin
College of Literature Law & Economics, Wuhan University of Science & Technology, Wuhan, China
Keywords: Digitization, Intelligentization, Shared Value.
Abstract: With the development of a new round of industrial upgrading and technological revolution, China's
manufacturing enterprises are also gradually moving towards the direction of digital and intelligent
transformation and upgrading. Can such enterprises benefit the society and create shared value while carrying
out transformation and upgrading? Based on the sample data of the top three representative enterprises of
China's intelligent manufacturing enterprises in 2019, this paper uses the content analysis method to measure
the shared value measures of the sample enterprises, calculates the intelligence degree of the enterprises
according to the intelligence degree im formula, and empirically analyzes the impact of the intelligence degree
of manufacturing enterprises on the shared value created by enterprises. It is found that the degree of
digitization and intelligence of enterprises plays a positive role in creating shared value. Therefore, we put
forward ten possible ways to promote enterprises to realize shared value by implementing digitization and
intelligence.
1 INTRODUCTION
In today's era, the world is rapidly entering the era of
digital economy, and the opportunities and challenges
of enterprise digital intelligent transformation and
upgrading are also coming one after another. Based
on the "Internet plus" era, the popularity of new
technologies and the impact of innovation driven, the
matching efficiency of idle resources has also been
improved, thus promoting the creation of shared
value. In the context of modern economy, shared
value plays a complementary role. It can not only
assist the government in social management, reform
the operating environment of traditional industries
and improve social welfare, but also ease labor
relations, optimize transaction relations, develop
green economy and broaden the boundary of public
goods.
Reviewing the current research status of shared
value in China, domestic scholars have provided
analysis ideas and model construction of various
industries, and provided a large number of theoretical
a
Fund project: Key projects of Hubei SME research center in
2022(Project No: HBSME2022B02)
ideas on how to create and realize and how to measure
shared value. But for possible new ways (combined
with digitization and intelligentization) is still rarely
involved. Therefore, this paper aims to analyze the
impact of the digitization and intelligentization of a
specific enterprise on the creation of shared value,
hoping to contribute to this research, provide some
suggestions on how to realize a more intelligent
shared value strategy, and help enterprises integrate
their own economic goals with social goals work
together.
2 LITERATURE REVIEW
Domestic and foreign scholars' research on shared
value is common in many disciplines, such as
corporate strategic management, corporate economy,
corporate social responsibility and so on. At present,
the relevant research on the concept of shared value
has not been clearly defined. The debate on relevant
research is mainly divided into two factions: one is to
890
Liu, S. and Jin, M.
Research on the Impact of Digitization and Intelligentization on the Creation of Shared Value by Small, Medium-sized and Micro Enterprises.
DOI: 10.5220/0011356400003440
In Proceedings of the International Conference on Big Data Economy and Digital Management (BDEDM 2022), pages 890-894
ISBN: 978-989-758-593-7
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
accept Porter's point of view, that is, shared value is
that enterprises can not only achieve their own
economic goals, but also contribute to the
improvement of community economic and social
conditions (Porter, 2011, Kramer, 2011); Others
believe that shared value is only a way to create their
own value for all stakeholders. Some scholars choose
to vaguely define shared value as a new path to help
enterprises or organizations achieve economic
achievements. So far, foreign academic circles have
still failed to give a unanimously recognized
definition of shared value. The core reason is that
three questions have not been well answered, that is,
what is the specific way to create shared value? What
results can shared value bring to us? Who are the
beneficiaries of this result?
After reviewing many foreign studies on shared
value, it can be found that although many disciplines
use the concept of shared value to enrich the relevant
theories of this discipline, they are often
misunderstood and over understood due to the lack of
unified recognition and definition. Looking at the
relevant domestic research on shared value, we can
also find that no matter what perspective the shared
value research is based on, the quantitative research
is very limited, and there are few qualitative and
quantitative studies. Therefore, this paper attempts to
adopt the generally recognized definitions and
theories of Porter and others on shared value, analyze
the specific path that enterprises can create shared
value while transforming and upgrading digital and
intelligent, and integrate the evaluation index system
of digital, intelligent and shared value to measure the
concept of shared value, Verify the impact of the
digital and intelligent development of manufacturing
enterprises on the creation of shared value.
3 RESEARCH DESIGN
Porter and others believe that shared value is a
conceptual model for enterprises to realize their own
economic interests by creating shared value to meet
social interests, which can not only help enterprises
achieve economic success, but also improve
enterprise efficiency and expand the scale of product
market. Porter believes that if enterprises want to
create shared value, they can mainly start from the
following three ways: first, rethink products and
markets; Second, redefine the productivity of the
value chain; Third, improve the local industrial
cluster environment and promote the development of
industrial clusters.
To sum up, can enterprises improve their business
efficiency, reduce their costs, expand their market
scale, increase their performance and create shared
value by taking more measures related to improving
their digital and intelligent degree, starting from the
above three ways? Therefore, this paper hopes to
conduct factor influence research from the two
directions of digitization and intelligence, obtain
certain theoretical results, and put forward
assumptions:
H1: the degree of digitization and intelligence has
a positive impact on enterprises to create shared
value. That is, the higher the degree of digitization
and intelligence of the enterprise, the more shared
value the enterprise creates.
This paper selects the top three Chinese intelligent
manufacturing enterprises from the "top 100 Chinese
intelligent manufacturing enterprises in 2019"
released by Lyon business school in France as the
research object, They are Foxconn Technology
Group (Industrial Fulian), Haier Group Corporation
and Huawei Technology Co., Ltd. obtain the text
content such as shared value measures related to
digitization and intelligence adopted by the enterprise
from the official website of the sample enterprise, the
2019 annual report released by the enterprise, the
2019 corporate social responsibility report or the
sustainable development report, and then use the
content analysis method to extract and analyze the
content analysis.
According to the current research status at home
and abroad, few studies can directly quantify the
degree of digitization and intelligence, and
digitization and intelligence are not separated.
Digitization is the basis of intelligence, and
digitization and intelligence are different stages of
enterprise development. These two stages are not
completely progressive, but also overlap to a certain
extent, Therefore, intelligence is the development
trend of digitization. In order to facilitate quantitative
research, this paper combines the digitization degree
and intelligence degree of the enterprise into the
variable of intelligence degree, constructs the
research model as shown in Fig.1, and reduces the
digitization and intelligence factors to an
intermediary factor, intelligence degree IM, so as to
analyze its impact on the creation of shared value SV.
Research on the Impact of Digitization and Intelligentization on the Creation of Shared Value by Small, Medium-sized and Micro
Enterprises
891
Figure 1: Research model.
4 VARIABLE MEASUREMENT
This paper selects the shared value of the sample
enterprises as the explained variable. Because this
variable is difficult to measure directly, this paper
mainly measures the effect of the shared value
measures implemented by the sample enterprises.
On the basis of reviewing and learning the
research results in this research field, this paper refers
to the three shared value approaches proposed by
Porter and the refinement results of these three
approaches (Fu, 2013) with reference to the research
results of Fu Hongzhen, endows the factors related to
the degree of digital intelligence, and considers the
measures taken by enterprises related to digital
intelligence, Ten shared value measures are
summarized, as shown in Tab.1. Finally, the
evaluation team will evaluate and discuss the shared
value measures implemented by the three sample
enterprises, rate them according to the
implementation and effect of a certain measure
(divided into high, medium and low levels), and
count the rating of each sample.
The explanatory variable is intelligence IM,
Referring to the research results of Deng Xiang et al.
(Deng, et al, 2019), which used the number of patent
applications related to artificial intelligence to
measure the level of artificial intelligence (Deng,
2019, Huang, 2019), Zhao Gang verified the action
mechanism of R&D investment, human capital and
intelligent equipment on the intelligent
transformation of high-end equipment manufacturing
enterprises (Zhao, 2020). Therefore, based on the
research of these scholars, this paper adds dimensions
such as R&D investment and R&D personnel, hoping
to reflect the intelligence level of intelligent
manufacturing enterprises from a more
comprehensive dimension. Finally, five indicators
are selected to construct the comprehensive
intelligence index IM of the sample enterprises: the
cumulative number of patents, the number of R&D
personnel, the ratio of the number of R&D personnel
to the total number of employees, R&D investment,
and the ratio of R&D investment to operating
revenue. According to the results of principal
component analysis conducted by Lou Yong, etc., the
component score coefficient matrix (Lou, 2021,
Wang, 2021, Hao, 2021) obtained is adopted, as
shown in Table 2. In order to make the model easy to
test, this paper takes the natural logarithm as the
comprehensive index of intelligence, and the
calculation formula of the comprehensive index of
intelligence is as follows:
IM=ln(0.325*patent+0.414*rdstaff+0.395*rdstad
en+0.024*rd+0.013rddensity)
Referring to the relevant research of Li Qinghua
et al. (Li, 2021, Guo, 2021, Liu, 2021) and Fu
Hongzhen, this paper takes the enterprise scale,
enterprise age and enterprise nature as the control
variables of the research model, and its measurement
method is shown in Tab. 2.
According to the measurement method of control
variables provided in Table 2, the measurement
results of the three sample enterprises as of 2019 are
obtained. The enterprise scale difference rate of the
three intelligent manufacturing enterprises is less
than 0.1, the enterprise age difference rate is also
within 0.1, and the nature of the enterprises is also
non-state-owned. Therefore, it can be considered that
the three enterprises have similar enterprise scale,
similar enterprise age and consistent enterprise
nature. It can be considered that these three variables
are at the same level, and there is no significant
difference in the effect on the explained variables.
Table 1: Measurement methods of control variables.
Control variable Measurement method
Enterprise scale
Natural logarithm of total assets of the enterprise at the end of 2019
Enterprise age
Number of years from establishment to 2019
Nature of enterprise
If the enterprise is state-owned or state-controlled, the value is 1, while
the value of non-state-owned or non-state-controlled is 0
BDEDM 2022 - The International Conference on Big Data Economy and Digital Management
892
Table 2: Measures of shared value.
Three ways to create
shared value (number and
content)
Measurement of specific measures of
shared value (number and content)
Measurement example
Path 1: Reimagine products
and markets
SV1
Provide intelligent products or
services that meet social needs.
Provide smart electrical appliances
and smart terminal products.
SV2
Provide corresponding intelligent
products or services for the edge market.
Invest in the field of intelligence
and participate in the construction of
new concept equipment for the Internet
of Everything.
Path 2: Redefine the
productivity of the value chain
SV3
Incentivize outstanding employees
who have contributed to the process of enterprise
intelligence.
By formulating a series of
measures to effectively reward and
stimulate employees' potential, mobilize
employees' enthusiasm for work,
improve their innovation ability, and
retain innovative talents.
SV4
Develop the application of artificial
intelligence and the industrial Internet.
Establish intelligent laboratories,
robotics research institutes, etc.
SV5
Through the intelligent management
and innovation of the product production process,
the utilization rate of resources is improved and
the cost is reduced.
Improve the utilization rate of raw
materials through the intelligent plan
transformation of the production
process.
SV6
Research and develop smart devices to
save or provide energy.
Construct solar power stations and
other facilities.
Path 3: Improve the
environment of local industrial
clusters and promote the
development of industrial
clusters
SV7
Provide intelligent solutions for
upstream and downstream enterprises, improve
their management efficiency, and indirectly help
the enterprises themselves.
Provide suppliers with intelligent
professional talents and promote
common development and progress
with partners.
SV8
Cooperate with scientific research
institutions in the field of intelligence and
intelligence research institutes in universities.
Jointly establish smart project
research and development funds with
universities, organize or sponsor smart
robot competitions, etc.
SV9
Cooperate with universities and
vocational schools to train intelligent professional
and technical personnel.
Establish cooperative relations
with universities or vocational schools,
provide internship bases, and oriented
training of intelligent-related
professionals required by enterprises.
SV10
Promote the transformation and
upgrading of industrial intelligence.
Participate in the formulation of
certain technical standards for
intelligent equipment.
This paper uses the content analysis method to
collect the variable data of shared value measures of
three intelligent manufacturing sample enterprises in
2019, draws lessons from the relevant methods of
domestic scholar Zhang Yin (Zhang, 2012, Huang,
2012), and establishes a two person review group to
analyze and comment on the collected text content. In
the end, the two reviewers reached an agreement on
the evaluation results, accounting for about 97% (29
items in total). For the text content of which the
remaining 3% (1 item in total) could not reach a
consensus, a senior expert in enterprise management
was invited to assist in the analysis, and the final
evaluation results were subject to the expert opinions.
The items with different opinions of the two
reviewers were (sample 1, sv9). According to the
judgment of enterprise management experts, the
effect of this measure taken by sample 1 enterprises
is poor, and the final evaluation result is "low".
According to the calculation formula of the
explanatory variable intelligence degree IM, after
collecting five data of the three intelligent
manufacturing enterprises in 2019, including the
cumulative number of patents, the number of R&D
Research on the Impact of Digitization and Intelligentization on the Creation of Shared Value by Small, Medium-sized and Micro
Enterprises
893
personnel, the ratio of the number of R&D personnel
to the total number of employees, R&D investment,
and the ratio of R&D investment to operating
revenue, the intelligence degree rating of each
sample, the index data and the intelligence degree im
rating results are obtained, As shown in Tab.
, the
final statistical results are drawn into a composite
diagram, as shown in Fig. 2.
Table 3: Analysis results of intelligence degree of each
sample.
Name Sample 1 Sample 2 Sample 3
patent
4276 53000 85000
rdstaff
40000 16679 96000
rdstaden
21.71% 16.72% 49.00%
rd
9,427 6,711 131,659
rddensity
2.31% 3.34% 15.30%
IM
9.8 10.1 11.16
Figure 2: SV rating times and IM rating.
It can be seen from the above figure that the
shared value SV rating of sample 3 is generally high,
ranking first; The shared value SV rating of sample 2
is slightly lower than that of sample 3, ranking
second; Sample 1 had the lowest shared value SV
rating. According to the intelligence im rating results
of the three samples, enterprises with higher
intelligence will perform better in creating shared
value.
5 CONCLUSIONS
It is found that the higher the development degree of
digitization and intelligence of manufacturing
enterprises, the more it can promote enterprises to
create shared value. In addition, this paper also
summarizes 10 possible ways for manufacturing
enterprises to improve shared value by implementing
shared value measures related to digitization and
intelligence. Enterprises taking shared value
measures is conducive to improve corporate social
responsibility and ease the conflict between corporate
social responsibility and corporate performance.
Enterprises can create more shared value while
improving the degree of digitization and intelligence,
so as to improve the social evaluation of enterprises
and bring performance growth to enterprises.
ACKNOWLEDGEMENTS
Special thanks to the funding of Key projects of
Hubei SME research center in 2022 (Project No:
HBSME2022B02).
REFERENCES
G. Zhao, Research on key influencing factors and
mechanism of intelligent transformation of high-end
equipment manufacturing enterprises” D. Harbin
Engineering University,2020.139-140.
H. B. Hu and H. T. Lu, “Research on value co creation in
the evolution of enterprise business ecosystem -- from
the perspective of digital empowerment” J. Economic
Management,2018,40(08):55-71.
H. Z. Fu, “Research on the relationship between shared
value and enterprise performance -- An Empirical
Analysis of Listed Companies in China's electrical
machinery and equipment manufacturing industry” J.
Western Forum,2013,23(05):102-108.
Porter M, Kramer M R, “Creating Shared Value: How to
Reinvent Capitalism - and Unleash a Wave of
Innovation and Growth” J. Harvard Business Review,
2011,89(1-2):62-77.
Q. H. Li, F. Guo and K. P. Liu, “Is the innovation level of
companies using derivatives higher -- from the
perspective of financing constraints and executives'
willingness to take risks” J. Accounting
Research,2021(02):149-163.
X. Deng and Z. Huang, “Analysis on the effect of artificial
intelligence technology innovation on industry income
gap -- Empirical Evidence from China's industry level”
J. Soft Science,2019,33(11):1-5+10.
Y. Lou, C. Q. Wang and F. X. Hao, “The impact of
industrial intelligence on Enterprise Performance -- A
Study on the intermediary effect from the perspective
of salary” J. Industrial Technology
Economy,2021,40(03):3-12.
Y. Zhang and M. X. Huang, “Review of multi perspective
research on enterprise product recall” J. Economic
Review,2012(04):121-124.
0
5
10
15
Sample1 Sample2 Sample3
low middle high IM
BDEDM 2022 - The International Conference on Big Data Economy and Digital Management
894