Artificial Intelligence and Public Values: Value Impacts and Governance in the Public Sector
Abstract
:1. Introduction
2. Artificial Intelligence Systems and Public Values
2.1. Artificial Intelligence as Intelligent Systems
2.2. Public Values and Artificial Intelligence Systems in the Public Sector
3. Artificial-Intelligence-Affected Public Values and Artificial Intelligence Governance Challenges and Solutions
3.1. Systematic Literature Review
3.2. Public Values and Artificial Intelligence Systems
3.3. Governance Challenges
3.4. Governance Solutions
4. Perspectives of Government Employees on Artificial Intelligence Value Impacts and Governance Challenges and Solutions
4.1. Artificial Intelligence Governance and Public Values from the Government Employees’ Perspective
4.2. Public Value Impacts of Artificial Intelligence Use in Government
4.3. Governance Challenges of Artificial Intelligence Use in Government
4.4. Transparency and Participation as Governance Solutions to Artificial Intelligence Use in Government
5. Discussions
5.1. Implications of the Results from the Systematic Literature Review
5.2. Implications of the Results on the Perspective of Government Employees
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Public Values | |
---|---|
Duty Orientation | Responsibility to citizens [1,12,23,35,59,60,61,62,63,64] Compliance with laws [1,35] |
Service Orientation | Transparency [1,17,35,50,60,63,65,66,67,68,69,70,71,72,73,74] Effectiveness [15,23,39,75] Efficiency [15,39] |
Social Orientation | Accountability to public [1,12,15,35,49,50,61,63,66,69,71,72,74,76,77,78] Privacy [3,12,49,50,60,64,74,79,80,81] Equality of treatment and access [3,12,15,39,49,72,79,82] Fairness [9,17,50,60,61,63,66,74,76] Justice [35,60,64,79] Due process [35] Inclusiveness [23,74] Security [64] |
Governance Challenges | |
---|---|
Public Value Challenges | Lack of transparency [3,15,36,50,65,68,70,73,83] Lack of accountability [1,12,15,24,36,59,61] Privacy concerns [3,12,36,50,72,79,80,81] Inequity concerns [3,12,73,77,79] Lack of responsibility [1,3,12,61,64] Safety concerns [3,12,84] Malicious use of AI [1,77] Moral dilemmas [3,12] Social acceptance and trust concerns [3,12] Administrative evil [9,39] Cybersecurity risks [85] Discrimination in recruitment, promotion, and dismissals in organizations [82] Fairness concerns in data processing [76,86] Lack of AI expertise and knowledge [3] Lack of responsiveness [59] Principal–agent problem [87] Sustainability challenges [88] Violation of laws [60] |
Data Quality, Processing, and Outcome Challenges | Data quality and management [3,17,49,50,71,83,85,89] AI rule-making concerns [3,12] Lost control of AI [12,64] Adverse impacts, difficulty of measuring the performance of AI, and uncertain human behavioral responses to AI-based interventions [85] Financial feasibility [3] Interaction problem with humans [12] |
Societal Governance Challenges | Replacing human jobs [1,3,12,90,91] Insufficient regulation and “soft laws” [75] Replacing human discretion [39,64] Value judgment concerns [3,12] Authoritarian abuses [17] Cross-sector collaboration hardship [70] Power asymmetry [86] Threatening autonomy [81] |
Governance Solutions | |
---|---|
Public Values Solutions | Explainable AI [59,61,65,68,74,86] Inclusion of more public values [50,60,66,71,72,74] Ethical AI [46,61,74,77] Distributed, decentralized, and democratized market [73] Ethical agent [46] Impacts on bureaucratic discretion [39] Privacy by design [35] Trustworthy AI [92,93] |
Data Quality and Processing sSolutions | Regulation [12,17,35,74,76,78,82,88] Bias assessment [35,74] Data audit [74,81] Data-driven digital government [69] Data-sharing agreement [81] Human audition [61,74,94] Independent quality assurance [35] Oversight committee [74,81] Recognition and removal of bias [83] Understanding of AI [64] |
Societal Governance Solutions | Collaborative governance [66,70,80,82,95] Multilevel approach [49,85] Artificial discretion analysis [15] Facilitative leadership, alignment of goals and objectives, shared knowledge, socialization, expert insights, and strategies [74,96] Governance coordinating committee [75] Holistic industrywide solution with governmental involvement [23] Integration of workflow and governance [50] Levels of governance [23] Pluralist approach [87] Risk governance [88] Stakeholder participation [74,83] Systems dynamics approaches [85] Task characteristics (complexity and uncertainty) [39] |
No Improvement | Modest | Substantial | Transformative | Substantial and Transformative Combined | |
---|---|---|---|---|---|
Decision Making | 24 (7.43%) | 102 (31.58%) | 126 (39.01%) | 71 (21.98%) | 60.99% |
Effectiveness | 12 (3.72%) | 100 (30.96%) | 154 (47.68%) | 57 (17.65%) | 65.3% |
Efficiency | 9 (2.79%) | 63 (19.75%) | 147 (45.51%) | 104 (32.20%) | 77.7% |
Accountability | 43 (13.31%) | 106 (32.82%) | 123 (38.08%) | 51 (15.79%) | 53.8% |
Development of AI in Government Is Likely to Negatively Impact Transparency Due to the Technical Nature of the Algorithm | Use of AI in My Government Agency Will Take Away Your Discretionary Authority | Goal Setting of AI Use in Government Cannot Fully Consider Societal Values beyond Technical Efficiency | |
---|---|---|---|
1 (Strongly Disagree) | 22 (6.81%) | 27 (8.36%) | 13 (4.02%) |
2 (Disagree) | 40 (12.38%) | 29 (8.98%) | 33 (10.22%) |
3 (Slightly Disagree) | 37 (11.46%) | 46 (14.24%) | 54 (16.72%) |
4 (Neutral) | 68 (21.05%) | 55 (17.03%) | 70 (21.67%) |
5 (Slightly Agree) | 57 (17.65%) | 69 (21.36%) | 64 (19.81%) |
6 (Agree) | 67 (20.74%) | 54 (16.72%) | 52 (16.10%) |
7 (Strongly Agree) | 32 (9.91%) | 43 (13.31%) | 37 (11.46%) |
Mean | 4.32 | 4.37 | 4.37 |
Median | 4 | 5 | 4 |
Mode | 4 | 5 | 4 |
Do You Agree That the Information on the Development of Algorithms Used in the AI System Should Be Made Available to Government Managers? | Do You Agree That the Information on the Development of Algorithms Used in the AI System Should Be Made Available to the General Public? | Do You Agree That Information about the Data That the AI System Uses Should Be Made Available to the Government Managers Responsible for the Service? | Do You Agree That Information about the Data That the AI System Uses Should Be Made Available to the General Public? | |
---|---|---|---|---|
1 (Strongly Disagree) | 2 (0.62%) | 12 (3.72%) | 4 (1.24%) | 5 (1.55%) |
2 (Disagree) | 13 (4.02%) | 23 (7.12%) | 7 (2.17%) | 22 (6.81%) |
3 (Slightly Disagree) | 18 (5.57%) | 12 (3.72%) | 10 (3.10%) | 27 (8.36%) |
4 (Neutral) | 49 (15.17%) | 68 (21.05%) | 43 (13.31%) | 63 (19.50%) |
5 (Slightly Agree) | 86 (26.63%) | 77 (23.84%) | 101 (31.27%) | 70 (21.67%) |
6 (Agree) | 86 (26.63%) | 75 (23.22%) | 92 (28.48%) | 71 (21.98%) |
7 (Strongly Agree) | 69 (21.36%) | 56 (17.34%) | 66 (20.43%) | 65 (20.12%) |
Mean | 5.285 | 4.932 | 5.384 | 4.994 |
Median | 5 | 5 | 5 | 5 |
Participants /Stages | Public Officials | Members of the General Public | ||
---|---|---|---|---|
Stages | Count | Percentage | Count | Percentage |
Goal Setting for Government AI use | 47 | 14.55% | 47 | 14.55% |
Development of the AI System | 87 | 26.93% | 68 | 21.05% |
Use of AI Systems in Government Decisions | 50 | 15.48% | 83 | 25.70% |
Impact Assessment of AI-Enabled Decisions | 23 | 7.12% | 48 | 14.86% |
All of the Above | 116 | 35.91% | 77 | 23.84% |
Total | 323 | 100% | 323 | 100% |
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Chen, Y.-C.; Ahn, M.J.; Wang, Y.-F. Artificial Intelligence and Public Values: Value Impacts and Governance in the Public Sector. Sustainability 2023, 15, 4796. https://doi.org/10.3390/su15064796
Chen Y-C, Ahn MJ, Wang Y-F. Artificial Intelligence and Public Values: Value Impacts and Governance in the Public Sector. Sustainability. 2023; 15(6):4796. https://doi.org/10.3390/su15064796
Chicago/Turabian StyleChen, Yu-Che, Michael J. Ahn, and Yi-Fan Wang. 2023. "Artificial Intelligence and Public Values: Value Impacts and Governance in the Public Sector" Sustainability 15, no. 6: 4796. https://doi.org/10.3390/su15064796
APA StyleChen, Y.-C., Ahn, M. J., & Wang, Y.-F. (2023). Artificial Intelligence and Public Values: Value Impacts and Governance in the Public Sector. Sustainability, 15(6), 4796. https://doi.org/10.3390/su15064796