Generative AI: Policy Formulation and Analysis

Kecerdasan Buatan Generatif: Perumusan dan Analisis Dasar

Authors

  • Syarbaini Ahmad FMKK UIS
  • Raja Ahmad Tariqi Raja Lope Ahmad Devlab Sdn. Bhd. Malaysia
  • Asrina Suriani Md. Yunus FMKK UIS
  • Farhana Abdullah Asuhaimi FMKK UIS

DOI:

https://doi.org/10.53840/ejpi.v12i3.269

Keywords:

Generative AI, Policy Making, Data Analysis, Public Sentiment, Decision-Making

Abstract

In the era of big data, policymakers face the challenge of navigating vast amounts of information to inform their decision-making processes. Traditional data analysis methods, such as manual surveys and focus groups, often fall short in capturing the complexity of public sentiment and are time-consuming and costly. This paper explores the transformative potential of Generative AI in policy formulation and analysis. By utilizing advanced algorithms capable of analyzing large datasets, identifying trends, and providing actionable insights, Generative AI offers a data-driven approach to policymaking. However, the integration of these technologies is not without challenges, including issues related to data quality, interpretability, and ethical considerations. This paper discusses these limitations and proposes best practices for policymakers to effectively harness the power of Generative AI, ensuring that policy decisions are informed, equitable, and reflective of diverse perspectives. Ultimately, the findings underscore the importance of balancing innovation with critical oversight in the pursuit of effective governance.

Downloads

Download data is not yet available.

References

A. Saxena, S. Chandra (2021), Artificial Intelligence and Machine Learning in Healthcare. Germany: Springer Nature Singapore.

Alhosani, K., & Alhashmi, S. M. (2024), Opportunities, challenges, and benefits of AI innovation in government services: A review. Discover Artificial Intelligence, 4(18). doi: 10.1007/s44163-024-00111-w.

Almeida, P. G. R. de, dos Santos, C. D., & Farias, J. S. (2021), Artificial Intelligence Regulation: A Framework for Governance. Ethics and Information Technology, 23(4), 505–525.

Aminoshariae, A., Kulild, J., & Nagendrababu, V. (2021), Artificial Intelligence in Endodontics: Current Applications and Future Directions. Journal of Endodontics, 47(9), 1352-1357.

Borges, A. F. S., Laurindo, F. J. B., Spínola, M. M., Gonçalves, R. F., & Mattos, C. A. (2021), The strategic use of artificial intelligence in the digital era: Systematic literature review and future research directions. International Journal of Information Management, 57, 102225.

Camilleri, M. A. (2023), Artificial intelligence governance: Ethical considerations and implications for social responsibility. Expert Systems. Advance online publication. https://doi.org/10.1111/exsy.13406.

Cui L.B., Zhu C.Z., Hare R., & Tang Y. (2023), MetaEdu: a new framework for future education. Discover Artificial Intelligence, 3(1): 10.

Espírito Santo, P., Melão, N., & Reis, J. (2019). Impacts of Artificial Intelligence on Public Administration: A Systematic Literature Review. In 2019 14th Iberian Conference on Information Systems and Technologies (CISTI) (pp. 1-6). Coimbra, Portugal: IEEE. doi: 10.23919/CISTI.2019.8760836.

G.H. Popescu, K. Valaskova, J. Horak (2022), Augmented reality shopping experiences, retail business analytics, and machine vision algorithms in the virtual economy of the metaverse, J. Self-Governance Manage. Econ. 10 (2) 67–81.

J. Oh, Y.S Choi (2021), Reusing monolingual pre-trained models by cross-connecting seq2seq models for machine translation, Appl. Sci. 11 (18) 8737.

Kitsios, F., & Kamariotou, M. (2021). Artificial Intelligence and Business Strategy towards Digital Transformation: A Research Agenda. Sustainability, 13(4), 2025. https://doi.org/10.3390/su13042025.

Kulkarni, M., Mantere, S., & Greenwood, M. (2024). The Future of Research in an Artificial Intelligence-Driven World. Journal of Management Inquiry, Online First. Retrieved from https://doi.org/10.1177/10564926231219622.

Lorenz, P., Perset, K., & Berryhill, J. (2023). Initial Policy Considerations for Generative Artificial Intelligence. OECD Artificial Intelligence Papers, No. 1, September.

Lv, Z. (2023). Generative artificial intelligence in the metaverse era. Cognitive Robotics, 3(June), 208–217. https://doi.org/10.1016/j.cogr.2023.06.001.

M. Castelli, L. Manzoni (2022), Generative models in artificial intelligence and their applications, Appl. Sci. 12 (9) 4127 .

M. Jovanovic, M. Campbell (2022), Generative artificial intelligence: trends and prospects, Computer (Long Beach Calif) 55 (10) 107–112.

M. Newell (2022), Wearable healthcare monitoring devices, 3D medical imaging data, and virtualized care systems in the decentralized and interconnected metaverse, Am. J. Med. Res. 9 (2) 137–152.

M. Newell (2022), Wearable healthcare monitoring devices, 3D medical imaging data, and virtualized care systems in the decentralized and interconnected metaverse, Am. J. Med. Res. 9 (2) 137–152.

P. Machado, J. Romero, G. Greenfield (2021), Artificial Intelligence for Designing Games, in: Artificial Intelligence and the Arts: Computational Creativity, Artistic Behavior, and Tools for Creatives, pp. 277–310.

S. Mondal, S. Das, V.G Vrana (2023), How to bell the cat? A theoretical review of generative artificial intelligence towards digital disruption in all walks of life,

Technologies 11 (2) 44.

Safdar, N. M., Banja, J. D., & Meltzer, C. C. (2020). Ethical considerations in artificial intelligence. European Journal of Radiology, 122, 108768.

Sharma, G. D., Yadav, A., & Chopra, R. (2020). Artificial intelligence and effective governance: A review, critique, and research agenda. Sustainable Futures, 2, 100004. doi: 10.1016/j.sftr.2019.100004

Talan T., Kalinkara Y. (2023), The role of artificial intelligence in higher education: ChatGPT assessment for anatomy course. Uluslararas ı Yönetim Bili ş im Sistemleri ve Bilgisayar Bilimleri Dergisi, 7(1): 33–40.

X. Huang, D. Zou, G. Cheng, X. Chen, H Xie (2021), Trends, research issues and applications of artificial intelligence in language education, Edu. Technol. Soc. 24 (3) 238–255 .

X.P. Nguyen, S. Joty, K. Wu, A.T Aw (2022), Refining low-resource unsupervised translation by language disentanglement of multilingual translation model, Adv. Neural Inf. Process. Syst. 35 36230–36242 .

Yanuarsyah, I., Ahmad, S., & Khalid, N. (2023). Usability Testing Design to Increase User Experience of a Mobile Landslide Application. Jurnal Teknik Informatika, 11(2), 74–83. https://doi.org/10.32832/krea-tif.v11i2.15160.

Zuiderwijk, A., Chen, Y.-C., & Salem, F. (2021). Implications of the use of artificial intelligence in public governance: A systematic literature review and a research agenda. Government Information Quarterly, 38, 101577. https://doi.org/10.1016/j.giq.2021.101577.

Downloads

Published

25-09-2025

How to Cite

Generative AI: Policy Formulation and Analysis: Kecerdasan Buatan Generatif: Perumusan dan Analisis Dasar. (2025). E-Jurnal Penyelidikan Dan Inovasi, 12(3), 208-218. https://doi.org/10.53840/ejpi.v12i3.269

Similar Articles

41-50 of 189

You may also start an advanced similarity search for this article.

Most read articles by the same author(s)