Modeling of Open Government Data for Public Sector Organizations Using the Potential Theories and Determinants—A Systematic Review
Abstract
:1. Introduction
2. Methodology
2.1. Review Protocol
- Define search term
- Select digital libraries on which search is to be performed
- Apply search terms on the selected sources and
- Select primary studies applying the inclusion and exclusion criteria
2.2. Inclusion and Exclusion Criteria
2.3. Search Strategy
- ○
- Web of Science
- ○
- SCOPUS
- ○
- Emerald Insight
- ○
- JSTOR
- ○
- ScienceDirect
- ○
- SAGE
- ○
- SpringerLink
- ○
- IEEE Xplore Digital Library
- ○
- Wiley
- ○
- Tylor and Francis
- ○
- AIS Conferences
2.4. Study Selection Process
2.5. Quality Assessment
3. Findings/Results
3.1. General Findings
3.1.1. Publication Source Overview
3.1.2. Temporal View of Publications
3.1.3. Research Methods
3.1.4. Geographical Distribution of Articles
3.2. Key Findings Addressing the Research Questions
3.2.1. Potential Theories/Models used in the OGD Research
3.2.2. Identified Determinants for the OGD Adoption
3.3. Proposed Conceptual Model and Theoretical Model
4. Discussion
4.1. Theoretical Implications
4.2. Practical Implications
5. Research Limitations and Future Research Directions
6. Conclusions
Supplementary Materials
Funding
Conflicts of Interest
References
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Criteria | Description |
---|---|
Inclusion Criteria |
|
Excluded Criteria |
|
Sr. No. | Publication Type | References | Frequency |
---|---|---|---|
1 | Journal Article | [1,2,4,5,7,8,9,10,11,14,15,16,17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,43,44] | 40 |
2 | Conference Paper | [6,45,46,47,48,49,50,51,52,53,54,55] | 12 |
3 | Book Section/Chapter | [56,57,58,59] | 4 |
Sr. No. | Year of Studies | References | Frequency |
---|---|---|---|
1 | 2020 | [23,40,50,59] | 4 |
2 | 2019 | [2,5,9,10,14,25,27,28,37,38,39,41,52,53,58] | 15 |
3 | 2018 | [7,8,11,18,26,32,44,55] | 8 |
4 | 2017 | [31,33,35,36,42,46,54] | 7 |
5 | 2016 | [1,20,21,24,29,30,43,48,49,51] | 10 |
6 | 2015 | [4,17,34,45] | 4 |
7 | 2014 | [6,15,19,47,56] | 5 |
8 | 2013 | [22,57] | 2 |
9 | 2012 | [16] | 1 |
Sr. No. | Research Methods | References | Frequency |
---|---|---|---|
1 | Literature Review | [23,52,56] | 3 |
2 | Mixed | [20,41,43,46,53] | 5 |
3 | Qualitative | [4,6,7,8,10,15,16,17,18,24,26,27,28,29,31,34,35,36,40,42,44,45,47,48,49,51,54,55,57,59] | 30 |
4 | Quantitative | [1,2,5,9,11,21,22,25,30,32,33,37,38,39,58] | 15 |
5 | Action Research | [19] | 1 |
6 | Conceptual or Theoretical paper | [14] | 1 |
7 | Unclear | [50] | 1 |
Sr. No. | Research Methods | References | Frequency |
---|---|---|---|
1 | Empirical Research | [1,2,4,5,6,7,8,9,10,11,15,16,17,18,20,21,22,24,25,26,27,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49,51,53,55,56,57,58,59] | 50 |
2 | Non-Empirical | [14,23,52] | 3 |
3 | Design Science | [19] | 1 |
4 | Unclear | [50,54] | 2 |
Sr. No. | Country Name | References | Frequency | Sr. No. | Country Name | References | Frequency |
---|---|---|---|---|---|---|---|
1 | US | [6,20,22,31,38,40,55,59] | 8 | 14 | Germany | [30] | 1 |
2 | Netherlands | [14,16,19,24,27,41,57] | 7 | 15 | India | [8] | 1 |
3 | China | [11,25,33,36,48] | 5 | 16 | Indonesia | [18] | 1 |
4 | Malaysia | [10,23,46,50,53] | 5 | 17 | Saudi Arabia | [26] | 1 |
5 | Taiwan | [1,21,34,39] | 4 | 18 | Singapore | [5] | 1 |
6 | UK | [2,15,54] | 3 | 19 | Sweden | [35] | 1 |
7 | Australia | [7,45] | 2 | 20 | Korea | [37] | 1 |
8 | Chile | [4,49] | 2 | 21 | Turkey | [52] | 1 |
9 | Pakistan | [9,58] | 2 | 22 | Austria | [42] | 1 |
10 | Multiple Countries | [32,44] | 2 | 23 | Ireland | [51] | 1 |
11 | Brazil | [56] | 1 | 24 | US and Russia | [43] | 1 |
12 | Canada | [29] | 1 | 25 | Germany and Spain | [47] | 1 |
13 | EU | [17] | 1 | 26 | UK and US | [28] | 1 |
Sr. No. | Theories/Frameworks | Frequency | Citations |
---|---|---|---|
1 | Technology, Organization, Environment (TOE) Framework | 10 | [1,10,23,34,36,38,46,50,52,53] |
2 | Institutional Theory | 8 | [16,20,21,26,31,33,35,44] |
3 | Diffusion of Innovation Theory | 4 | [7,9,20,58] |
4 | Resource-Based Theory/View | 3 | [6,11,37] |
5 | Actor-Network Theory | 1 | [47] |
6 | Cognitive Theory | 1 | [30] |
7 | The New Public Management Theory | 1 | [35] |
8 | The Structuration Theory | 1 | [35] |
9 | The System Theory | 1 | [16] |
10 | Resource-Dependency Theory | 1 | [5] |
11 | Stakeholders Theory / Analyses | 1 | [4] |
12 | Technology Acceptance Model (TAM) | 1 | [21] |
13 | Unified Theory of Acceptance and Use of Technology (UTAUT) | 1 | [21] |
14 | UTAUT2 | 1 | [21] |
15 | Strategic Niche Management Theory | 1 | [27] |
16 | Total Quality Management Model | 1 | [8] |
17 | Helix Models of Innovation | 1 | [32] |
18 | Information Orientation Perspective | 1 | [6] |
19 | Historical Institutionalism (Path Dependence Theory) | 1 | [49] |
20 | Known, Attainable, and Usable Framework | 1 | [24] |
21 | Social Network Analysis | 1 | [25] |
22 | Business Process Engineering | 1 | [19] |
23 | Theory of Organizational Design | 1 | [28] |
24 | Karl Popper’s View/Theory | 1 | [14] |
25 | Nissenbaum’s Contextual Integrity Framework | 1 | [54] |
26 | Sociological Theory | 1 | [15] |
27 | Sebastopol Principles Theory | 1 | [2] |
28 | Dynamic Capability Theory | 1 | [51] |
29 | Neo-Institutional Theory | 1 | [59] |
30 | Organizational Network Theory | 1 | [56] |
31 | The Window Theory | 1 | [41] |
32 | Platform Theory | 1 | [40,55] |
33 | Socio-technical Systems Theory | 1 | [43] |
34 | Organization Theory | 1 | [42] |
Determinants | Frequency | Citations |
---|---|---|
Organization’s Digit(i/ali)zation Capacity | 27 | [1,4,6,10,11,15,16,17,18,21,22,23,24,25,27,31,33,37,38,45,47,48,50,51,52,53,57] |
Compliance Pressure | 21 | [1,5,6,7,10,18,20,22,23,26,27,31,33,34,45,48,50,52,53,56,59] |
Financial Resources | 18 | [1,6,7,10,15,17,18,21,23,24,25,37,38,45,47,48,50,52] |
Legislation, Policy, and Regulations | 18 | [7,10,16,17,22,23,25,27,30,31,34,38,47,48,50,52,53,56] |
Organizational Culture | 12 | [7,10,15,21,23,27,30,34,50,52,53,57] |
Political Leadership Commitment | 10 | [7,17,24,26,27,37,45,47,48,57] |
Top-Management Support | 10 | [6,17,22,23,29,45,50,52,53,57] |
Data Quality | 10 | [2,5,9,10,15,23,25,47,53,57] |
Perceived Effort/Complexity | 9 | [15,16,19,21,23,25,34,52,53] |
Perceived Benefits | 8 | [1,16,21,23,26,34,53,56] |
Perceived Risks | 6 | [6,15,21,22,34,47] |
Financial Rewards | 6 | [10,18,22,23,50,53] |
Communication and Collaboration with Stakeholders | 6 | [4,8,17,18,24,57] |
Security and Privacy | 6 | [7,15,19,23,25,57] |
Need for Transparency | 4 | [5,7,30,31] |
Vision | 4 | [15,24,26,57] |
Relative Advantage | 4 | [7,21,50,52] |
Perceived Loss | 4 | [15,22,25,34] |
Sensitivity of Function | 4 | [5,19,47,57] |
Organization Structure | 4 | [7,11,30,48] |
Trust | 4 | [18,23,52,53] |
Control of Information by Government | 4 | [7,25,27,57] |
Use and Participation Culture | 4 | [10,16,24,56] |
Perceived Technical Interoperability | 4 | [4,15,17,45] |
Civic Engagement and Public Value Creation | 4 | [7,18,48,57] |
Digital Technological Development | 3 | [32,38,45] |
Organization’s Intention | 3 | [21,22,45] |
Business Case/Models | 3 | [7,15,57] |
Awareness, Knowledge, and Understanding | 3 | [4,11,15] |
Monitoring, Evaluation and Sustainability | 3 | [17,29,39] |
Data Format and Metadata | 2 | [34,57] |
Gross Domestic Product | 2 | [32,38] |
City Population Size | 2 | [31,38] |
Organization Size | 2 | [5,52] |
Prioritization | 2 | [25,27] |
Compatibility | 1 | [50] |
Dependence on External Innovators | 1 | [5] |
Information Quality | 1 | [16] |
Centralized Department/Champion | 1 | [27] |
Perceived Barriers | 1 | [1] |
Level of Informatization | 1 | [34] |
OGD Principles | 1 | [50] |
Global Innovation Index | 1 | [32] |
Election Turnout | 1 | [38] |
Trialability | 1 | [57] |
Corruption | 1 | [32] |
Citizens Education Level | 1 | [38] |
Information System Outsourcing | 1 | [34] |
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Share and Cite
Khurshid, M.M.; Zakaria, N.H.; Rashid, A.; Ahmad, M.N.; Arfeen, M.I.; Faisal Shehzad, H.M. Modeling of Open Government Data for Public Sector Organizations Using the Potential Theories and Determinants—A Systematic Review. Informatics 2020, 7, 24. https://doi.org/10.3390/informatics7030024
Khurshid MM, Zakaria NH, Rashid A, Ahmad MN, Arfeen MI, Faisal Shehzad HM. Modeling of Open Government Data for Public Sector Organizations Using the Potential Theories and Determinants—A Systematic Review. Informatics. 2020; 7(3):24. https://doi.org/10.3390/informatics7030024
Chicago/Turabian StyleKhurshid, Muhammad Mahboob, Nor Hidayati Zakaria, Ammar Rashid, Mohammad Nazir Ahmad, Muhammad Irfanullah Arfeen, and Hafiz Muhammad Faisal Shehzad. 2020. "Modeling of Open Government Data for Public Sector Organizations Using the Potential Theories and Determinants—A Systematic Review" Informatics 7, no. 3: 24. https://doi.org/10.3390/informatics7030024
APA StyleKhurshid, M. M., Zakaria, N. H., Rashid, A., Ahmad, M. N., Arfeen, M. I., & Faisal Shehzad, H. M. (2020). Modeling of Open Government Data for Public Sector Organizations Using the Potential Theories and Determinants—A Systematic Review. Informatics, 7(3), 24. https://doi.org/10.3390/informatics7030024