Human-Centered Artificial Intelligence: The Superlative Approach to Achieve Sustainable Development Goals in the Fourth Industrial Revolution
Abstract
:1. Introduction
2. Fourth Industrial Revolution, Artificial Intelligence, Sustainable Development, and the Global Goals
2.1. The Fourth Industrial Revolution (4IR)
2.2. The Background and Definition of Artificial Intelligence
2.3. The Three Main Groups of AI
2.4. Applications of AI in Real Life Situations
2.5. Research in Artificial Intelligence
2.6. Sustainable Development and the Global Goals
2.7. The Global Goals
3. Empirical Literature Review
4. Research Methodology
5. Results and Discussion
5.1. The Meaning of Human-Centred AI
5.2. How to Create AI That Is Human-Centred
6. The Policy Recommendations for Human-Centred AI to Assist in the Attainment of the SDGs
6.1. Increase Governments Investment in AI
6.2. Addressing Data and Algorithm Biases
6.3. Resolving Data Access Issues
6.4. Addressing Concerns of AI Ethics and Transparency
6.5. Maintaining Mechanisms for Human Oversight and Control
7. Conclusions and Policy Recommendations
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Number | Institution | Location | Share 2015–2019 | Count 2015-2019 | International Articles (%) |
---|---|---|---|---|---|
1 | Harvard University | United States of America (USA) | 331.08 | 937 | 57.0% |
2 | Stanford University | United States of America (USA) | 257.90 | 629 | 54.4% |
3 | Massachusetts Institute of Technology (MIT) | United States of America (USA) | 209.04 | 620 | 59.4% |
4 | Max Planck Society | Germany | 167.98 | 628 | 83.0% |
5 | University of Oxford | United Kingdom (UK) | 132.34 | 495 | 85.3% |
6 | University of Cambridge | United Kingdom (UK) | 130.68 | 485 | 84.9% |
7 | Chinese Academy of Sciences (CAS) | China | 130.00 | 492 | 73.2% |
8 | UCL | United Kingdom (UK) | 129.70 | 415 | 77.1% |
9 | Columbia University in the City of New York (CU) | United States of America (USA) | 127.56 | 386 | 61.9% |
10 | National Institutes of Health (NIH) | United States of America (USA) | 122.69 | 302 | 52.0% |
Number | Institution | Location | Share 2015–2019 | Count 2015–2019 | International Articles (%) |
---|---|---|---|---|---|
90 | Cold Spring Harbor Laboratory (CSHL) | United States of America (USA) | 23.15 | 54 | 44.4% |
91 | Dartmouth College | United States of America (USA) | 22.89 | 53 | 45.3% |
92 | Purdue University | United States of America (USA) | 22.78 | 98 | 74.5% |
93 | Carnegie Mellon University (CMU) | United States of America (USA) | 22.77 | 99 | 58.6% |
94 | Utrecht University (UU) | Netherlands | 22.61 | 87 | 83.9% |
95 | Mount Sinai Health System (MSHS) | United States of America (USA) | 22.38 | 108 | 63.9% |
96 | Fudan University | China | 22.14 | 77 | 72.7% |
97 | National Institute for Nuclear Physics (INFN) | Italy | 22.14 | 233 | 97.0% |
98 | Tel Aviv University (TAU) | Israel | 22.05 | 137 | 86.9% |
99 | National University of Singapore (NUS) | Singapore | 21.81 | 84 | 85.7% |
100 | University of Science and Technology of China (USTC) | China | 21.50 | 119 | 78.2% |
Journal Articles | Reports | Media Articles | Others |
---|---|---|---|
55 | 25 | 30 | 20 |
Journals articles used were those published in 2000 upwards. Work from previous years was also considered but the focus was mainly 2000 upwards. Publishers-Springer Nature, Multidisciplinary Publishing, Es, Elsevier Institute of Electrical and Electronics Engineers, etc. | Reports from United Nations, The World Bank, The World Economic Forum, and Development (OECD) among others were also considered in the study. | Media articles were also considered mainly from countries such as the United State of America, South Africa, and the United Kingdom among other nations. | Various other documents were consulted to come up with the ideas that shaped the trajectory of the study. |
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Mhlanga, D. Human-Centered Artificial Intelligence: The Superlative Approach to Achieve Sustainable Development Goals in the Fourth Industrial Revolution. Sustainability 2022, 14, 7804. https://doi.org/10.3390/su14137804
Mhlanga D. Human-Centered Artificial Intelligence: The Superlative Approach to Achieve Sustainable Development Goals in the Fourth Industrial Revolution. Sustainability. 2022; 14(13):7804. https://doi.org/10.3390/su14137804
Chicago/Turabian StyleMhlanga, David. 2022. "Human-Centered Artificial Intelligence: The Superlative Approach to Achieve Sustainable Development Goals in the Fourth Industrial Revolution" Sustainability 14, no. 13: 7804. https://doi.org/10.3390/su14137804
APA StyleMhlanga, D. (2022). Human-Centered Artificial Intelligence: The Superlative Approach to Achieve Sustainable Development Goals in the Fourth Industrial Revolution. Sustainability, 14(13), 7804. https://doi.org/10.3390/su14137804