Research on the Influencing Factors of Heilongjiang Provincial
Government Data Openness in the Era of Big Data
Ping Liu
a
and Fangqi Li
*b
Institute of Finance and Public Management, Harbin University of Commerce, Xuehai Street, Harbin, China
Keywords: Big Data Era, Open Government Data, Influencing Factors.
Abstract: With the advent of the era of big data and the rapid development of science and technology and the Internet,
government data openness is an important part of the digital transformation of the government. Government
data disclosure has become an important means of government reform. This paper uses the fuzzy set
qualitative comparison method (FSQCA) to analyze the factors affecting the data openness of the
Heilongjiang provincial government from the perspective of configuration, so as to improve the level of the
data openness of the Heilongjiang provincial government, improve the governance capacity of the
Heilongjiang provincial government, and promote the digital construction of Longjiang.
1 INTRODUCTION
1
Government data openness is an important part of
the government's innovative governance model in
the big data environment, and it is also the key to
building a digital government. Combined with the
background of the era of big data, actively realize
the openness of government data, improve the
utilization rate of government data resources, and
give full play to the value of government data
resources. In recent years, the Heilongjiang
provincial government has actively responded to
national policies and continuously implemented the
state's task of promoting government data openness.
In the 2021 Heilongjiang Provincial Government
Work Report, we continue to explore how to
improve the level of government governance faster
and provide more effective government services to
the public. (Pu, 2022) This paper mainly studies the
main influencing factors of Heilongjiang Provincial
Government Data Opening and its development path
model. Using some data from China Statistical
Yearbook and Fuzzy Qualitative Comparative
Analysis (FSQCA), the conditional configuration
analysis of 12 prefecture-level government data
open platforms in Heilongjiang Province was carried
out. Exploring the influencing factors of
a
https://orcid.org/0000-0001-8317-6906
b
https://orcid.org/0000-0002-9738-9061
Heilongjiang provincial government data disclosure,
exploring differentiated development paths
according to the influencing factors, and improving
the government's administrative efficiency and
service quality are the key measures to promote
Heilongjiang provincial government data openness.
2 THEORETICAL BASIS OF
OPEN GOVERNMENT DATA
Government data, also known as public data or
public service data, refers to the original data
actively or passively collected by government
departments or public departments in the process of
exercising public power, such as information
registered by individuals and organizations and
collected statistics, population, geography,
meteorology, medical care, social security,
education and other data. (Shangguan, 2022) Data
openness is a new trend in the field of information
and communication technology, especially for the
opening of government data, which has great
potential in improving government transparency,
strengthening supervision and accountability
mechanisms, and stimulating economic growth. (Tan
2018)
Data openness is a new trend in the field of
information and communication technology,
especially for the opening of government data,
Liu, P. and Li, F.
Research on the Influencing Factors of Heilongjiang Provincial Government Data Openness in the Era of Big Data.
DOI: 10.5220/0012072200003624
In Proceedings of the 2nd International Conference on Public Management and Big Data Analysis (PMBDA 2022), pages 211-217
ISBN: 978-989-758-658-3
Copyright
c
2023 by SCITEPRESS – Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)
211
which has great potential to improve government
transparency, strengthen supervision and
accountability mechanisms, and stimulate economic
growth. Based on the optimistic benefits and
positive effects of government data openness, more
and more countries are turning their attention to
creating greater social and business value and
improving social governance through data openness.
In the era of big data, government data openness has
set off a wave of heated discussions in the field of
public management. The research on the influencing
factors of government data openness has received
extensive attention from the academic community.
3 RESEARCH METHODS AND
DATA SOURCES
3.1 Research Methods
In this paper, 12 prefecture-level cities in
Heilongjiang Province are used as case samples, and
the fuzzy set qualitative comparison method
(FSQCA) is used to explore the robust relationship
between different explanatory variables and better
explore the research details of typical cases.
3.2 Data Sources and Calibration
Data cut-off date 2021. The data are mainly from the
China Statistical Yearbook 2021 and the China
Local Government Data Open Report 2021.
3.2.1 Result Variablestitle
Starting from the research logic of qualitative
comparative analysis of fuzzy sets, the data
openness level of each municipal government is the
result variable that needs to be explained, and the
government data openness index is selected as the
result variable to discuss the effectiveness of
government data openness. Using continuous
variable assignment can better present the
configuration effect of QCA analysis results.
3.2.2 Condition Variables
The diversity factor of the level of data openness of
the municipality is the conditional variable. In this
paper, four representative conditional variables are
selected, namely leadership support, public demand,
financial support and human support, so as to
facilitate the regular and comprehensive analysis and
interpretation of the effectiveness of government
data opening.
a. Leadership support
This article uses whether the government has
established a special data open management agency
to measure the importance of leaders, and the data
comes from the government's official website and
public news reports. The attention of key
government leaders has an important impact on the
level of data openness of local governments.
Existing studies have found that support from senior
leadership can drive governments to choose data
open strategies and promote sustainable
development goals. Leadership authority can
facilitate coordination and cooperation between
groups, and the influence of individual leaders will
affect the development of the organization.
b. Public demand
The era of big data has put forward new
requirements for the opening of government data.
The public's demand for government data has
strongly promoted the process of data openness. The
size of public demand is linked to the size of the
population. This paper uses the year-end population
of each province to express public demand, and the
data is from the China Statistical Yearbook 2021.
c. Financial support
With limited resources, the organization's day-to-
day administrative expenditures and necessary items
for the provision of public services will be
prioritized to meet basic public needs, while
innovative activities similar to open government
data will be limited. When the government's
financial resource capacity is strong, there are
enough surplus resources to invest in development
areas such as open data, so as to realize economic
and social value. This indicator is expressed in
general public budget revenue per capita in each
district.
d. Human support
Manpower is the backbone of improving the
level of government data openness, and manpower is
the most active and active production factor in an
organization. Human resources are measured by
calculating the proportion of employment in
information transmission, software and information
technology services in each province to total
employment. Data from China Statistical Yearbook
2021.
PMBDA 2022 - International Conference on Public Management and Big Data Analysis
212
3.2.3 Data Calibration
In this paper, direct calibration was chosen to
convert the data into fuzzy membership scores. The
calibration standard for the intersection of leadership
support, public demand, financial support, and
human support is 0.5 percentile, 0.75 for fully
subordinate and 0.25 for fully unaffiliated
calibration standards. (Yang, 2020)
Table 1
summarizes calibration information for each
condition and results.
Table 1: Selection and Calibration of Variables.
Conditional and result
variables
Calibration information
Full affiliation Intersection Not affiliated at all
Open level of
government data
41.645 11.723 6.625
Leadership support 1 / 0
Public demand 7732.7 4959 3223.8
Financial support 0.7629 0.5724 0.463
Human support 0.005 0.0032 0.00265
4 EMPIRICAL ANALYSIS AND
MODEL BUILDING
4.1 Empirical Analysis
4.1.1 Necessity Analysis of Conditional
Variables
Before performing a conditional configuration
analysis, analyze how well a single condition
variable explains the outcome variable. When the
consistency is greater than 0.9, the condition
variable is considered necessary for the result, and
vice versa, when the consistency is less than 0.9, the
variable needs to be interpreted in combination with
other variables. (Yang, 2020) The consistency and
coverage of each condition variable are shown in
Table 2. The level of agreement for all conditional
variables is below the cut-off value of 0.9 and
therefore does not constitute a necessary condition
for affecting the level of openness of government
data.
Table 2: Requirements analysis.
Condition variables consistency Coverage
High leadership support 0.874623 0.623784
Low leadership support 0.118267 0.132008
Strong public demand 0.540920 0.500027
Weak public demand 0.478231 0.478900
High financial support 0.612180 0.673512
Low financial support 0.492388 0.402817
High manpower support 0.692187 0.682630
Low human support 0.492039 0.412987
4.1.2 Adequacy Analysis of Conditional
Variables
The adequacy analysis of the conditioned
configuration attempts to reveal the influence of
different combinations of conditions on the results.
0.75 is the minimum acceptable consensus
threshold. In addition, frequency threshold is also an
important analysis and evaluation indicator. In this
paper, the consistency threshold is determined to be
0.8 and the frequency threshold to be 1. To reduce
the potential contradiction configuration, the PRI
(Proportional reduction in inconsistency) threshold
is introduced to filter the configuration. Truth table
rows with PRI greater than or equal to 0.75 are taken
into account. The intermediate and simplified
solutions that generate high-level data open paths in
FSQCA are shown as follows, as shown in Table 3
and Table 4.
Research on the Influencing Factors of Heilongjiang Provincial Government Data Openness in the Era of Big Data
213
Table 3: Intermediate path results for high-level government data openness.
Model: Open data=f (leader, public, fiscal, human)
Algorithm: Quinc-McCluske
y
---INTERMEDIATE SOLUTION---
Frequency cutoff 1
Consistency cutoff:0.896211
Raw unique
Coverage coverage consistency
~fiscal*~human*~leader 0.177239 0.177239 0.177239
fiscal*~public*~leader 0.27239 0.0257295 0.929176
fiscal*~human*~public 0.0428255 0.0428255 0.921811
*~leader
solution coverage: 0.628876
solution consistency: 0.864399
Table 4: Produces simple path results that produce a high level of government data openness.
ModelOpen data=fleaderpublicfiscalhuman
AlgorithmQuinc-McCluskey
---INTERMEDIATE SOLUTION---
Frequency cutoff 1
Consistency cutoff0.896211
Raw unique
Coverage coverage consistency
human*~leader 0.628173 0.543211 0.879665
fiscal*~public*~leader 0.155538 0.0611132 0.977654
solution coverage: 0.728192
solution consistency: 0.842938
Table5 results show that the path to a high level
of government data openness is diverse, with three
different conditional configurations. The consistency
of the solution is 0.864399 and the coverage of the
solution is 0.628876, both above the critical value.
The three configurations can be regarded as
sufficient combination of conditions, and the high
degree of government data openness is a
differentiated synergy relationship of common path
and multiple concurrency.
Table 5: Configuration analysis of high-level government data openness.
Condition
variables
untie
Configuration
one
Configuration
two
Configuration
three
Leadership
support
Public
deman
d
Financial
su
pp
ort
Human
su
pp
ort
consistency 0.934793 0.915572 0.9
Original coverage 0.27239 0.177239 0.0428255
Unique coverage 0.0257295 0.198843 0.0428255
Consistency of solutions 0.864399
The covera
g
e of the solution 0.681967
Note: √ indicates that the condition exists, indicates that the condition is absent.
Condition 1 shows that for the government with
both good financial resources and human resources,
if more leadership attention can be devoted to the
behavior of data openness, the government can also
have good data open performance.
Condition 2 shows that leadership support plays a
central role, and the existence of public demand
PMBDA 2022 - International Conference on Public Management and Big Data Analysis
214
plays a supporting role. For the topic of government
data openness, if the government does not have
sufficient financial resources and human resources
support, relying on the great attention of the main
leaders to the government data openness, it can bring
a higher level of government data opening
performance, thereby bringing better data opening
performance.
Condition 3 shows that the performance of the
government with a high degree of open data
development is in the forefront in all aspects, which
is generated by the joint efforts of various
conditional elements. The superior conditions in all
aspects have laid a solid foundation for good
government data opening performance. If the main
leaders attach more importance to the open data
work, a special data open management organization
has been established. Governments governed by the
dynamics of competition and cooperation will
enhance the autonomy and initiative of governments
to develop the region's economy. The formation of
open government data platforms with high levels of
utilization is possible.
4.1.3 Robustness Test
Fuzzy set qualitative comparison studies may vary
depending on the threshold, so a robust test is
required for the above results. Drawing on the
existing research experience, this paper adjusts the
PRI threshold to perform a robust test. The
difference between the necessity analysis results of a
single condition and the original result is small, and
there are only slight changes between the
consistency and coverage of the single configuration
and the overall solution and the original result in the
analysis results of the conditioned configuration. In
view of this, we can judge that the impact of the
above combination of conditions on the level of
local government data openness is robust.
4.1.4 Study Results
According to the core conditions contained in the
above three condition combinations, this paper
further determines the differentiated matching
relationship to promote a high level of government
data openness. Combined with the actual situation,
two data opening paths of the Heilongjiang
provincial government are summarized:
organization-driven and coordinated with guarantee
elements.
4.2 Model Building
4.2.1 Organization-Driven
Organized-driven governments are able to
demonstrate a high level of data openness even
without good economic and human resources. The
support of government leaders and the needs of the
public In the process of government public
governance, the support and decision-making of
leaders will promote the effective solution of many
things. (Zhou, 2017)
Therefore, leadership support
can be understood as a realistic form of governance.
The government's implementation and continuous
promotion of data openness is a good demonstration
of leadership. Government actions are always rule-
based and lack sensitivity and responsiveness to the
needs of the public. Harbin has built a unified data
open platform for the whole city, opened 53
government functional departments,3.17million data
in 14 fields, and led the level of openness, basically
achieving full coverage of data openness, thanks to
the government's great attention to the construction
of the data open platform.
4.2.2 Guarantee Element Coordination
The performance of government data openness is
mainly facilitated by rich financial support and
human support, and appropriate resource
redundancy provides the government with flexibility
to seize opportunities and grasp the market.
Government data openness is a new public
governance activity aimed at promoting the
development and utilization of data resources, better
meeting high-level needs, and enhancing public
interests, whether such interests are political or
economic. Government data openness is a kind of
government innovation, which requires financial
support. At the same time, considering that
innovation does not happen overnight, especially in
the short term, and that organizations need to be
strong and able to bear the risks and costs associated
with it, financial investment is essential.
5 RESEARCH CONCLUSIONS
AND RECOMMENDATIONS
5.1 Conclusion of the Study
Based on the above analysis, the following
conclusions can be drawn.
Research on the Influencing Factors of Heilongjiang Provincial Government Data Openness in the Era of Big Data
215
First, local government data openness is a
coordinated development of multiple factors, and
leadership support, market demand, financial
support and human support cannot be used as
necessary conditions for influencing local
government data openness alone. The behavior of
local government data openness is the result of a
combination of conditions. There are three different
paths to promote high-level local government data
openness, and each path is composed of multiple
factors, and the effective integration and interaction
between different factors have increased the degree
of government data openness.
Second, organizational drive is a key condition
for promoting local government data openness. That
is, the support of government leadership and the
needs of the public play an important role. The
emphasis on senior leadership brings innovation to
the public policy agenda, and the two work together
to implement open government data. The overall
level of data opening of the Heilongjiang provincial
government is not high, and it is still in the early
stage of high-quality development as a whole.
Third, ensuring resources is an important driving
force for promoting the opening of local government
data. Any local government can be regarded as a
resource aggregate, and appropriate resource
redundancy enables the government to seize more
innovation opportunities and better promote the
implementation of local government data openness.
The government's own diversified organizational
resources, the attention and support of senior
leaders, and the external environmental pressure
jointly drive the implementation of data openness
behavior and promote sustainable development.
5.2 Suggestion
In order to promote the opening of government data
in Heilongjiang Province, this study puts forward the
following two suggestions.
5.2.1 Optimize the Differentiated
Decision-Making Mechanism of the
Government
For Harbin, Qiqihar, Mudanjiang, Jiamusi, Daqing
and Jixi in Heilongjiang Province, the key factor of
government data openness lies in the integration and
optimal allocation of resources. For the
underdeveloped areas of Shuangyashan, Yichun,
Qitaihe, Hegang, Heihe and Suihua cities, the
attention of government leaders is crucial due to the
lack of support from resources and capacity.
Government data openness is a kind of government
innovation, and the government needs to base on the
actual situation, choose a suitable development path
and targeted measures according to its own resource
conditions and external development conditions, and
ultimately realize the balanced development of
governance capacity in Heilongjiang Province.
5.2.2 Improve the Supply Capacity of
Guarantee Factors
The performance of government data openness is
mainly promoted by rich financial support and
human support, so the construction of the
government's own ability to guarantee factors is
crucial. The government is not only concerned with
opening up capabilities, but also emphasizing the
use of capabilities. First of all, the government needs
to regulate the open data work, ensure the smooth
development of relevant work, and promote the
implementation of the open government data work
with the normative and mandatory force of the law.
Secondly, the government explores an
informatization promotion system suitable for the
city, integrates data resources and comprehensively
coordinates the data sharing and application of
multiple subjects by establishing a special big data
management organization. Finally, the government
needs to improve the data capabilities of department
personnel, improve the performance appraisal and
supervision mechanism of data openness, and
promote the digitalization process of local
governments in the above ways.
REFERENCES
Pu Hongyu, Majie, Hu Mo. Research on the supernetwork
model of collaborative governance of government data
[J]. Library construction,2022(03):161-173.
Shangguan Lina, Xia Benqian.Research on the driving
factors and improvement paths of local government
data openness[J]. Digital Library Forum,2022(09):13-
20.
Tan Biyong, Liu Rui.Research on open data policy of
local governments in China--Take 15 sub-provincial
cities as an example[J]. Intelligence Theory and
Practice, 2018,41(11):51-56.
Yang Changyong. Exploration of government governance
innovation in the era of big data [J]. Journal of
Shanghai Institute of Administration, 2020, 21(01):33-
43.
Yang Yi. Research on smart governance of local
governments under the background of big data [D].
Northwestern University, 2020.
PMBDA 2022 - International Conference on Public Management and Big Data Analysis
216
Zhou Zhifeng.Analysis of countermeasures to promote the
development and utilization of government open data
from the perspective of innovation and
entrepreneurship [J]. Intelligence Magazine, 2017,
36(06): 141-147.
Research on the Influencing Factors of Heilongjiang Provincial Government Data Openness in the Era of Big Data
217