Ethical Implications of AI in Decision-Making
EOI: 10.11242/viva-tech.01.08.060
Citation
Sonia Dubey,Ujwal Khatri,Ketan Dubey, "Ethical Implications of AI in Decision-Making", VIVA-IJRI Volume 1, Issue 8, Article 1, pp. 1-10, 2025. Published by Master of Computer Applications Department, VIVA Institute of Technology, Virar, India.
Abstract
Keywords
Artificial Intelligence, ethics, decision-making, bias, transparency, accountability, privacy.
References
- A. Noble, “Bias in artificial intelligence: ethical implications for healthcare,” Journal of Healthcare Ethics, 12(3), 2022, pp. 45-57.
- J. Smith and K. Johnson, Artificial intelligence in healthcare: addressing the challenges of bias and transparency (New York: Springer- Verlag, 2020).
- P. Lee, “Ethical considerations in healthcare AI systems,” in J. Brown (Ed.), Handbook of AI Ethics, 3 (San Francisco: Wiley-Blackwell, 2021), pp. 221-239.
- S. Patel, Ethics of machine learning in healthcare applications, doctoral diss., Stanford University, Stanford, CA, 2021.
- R. Hughes, “Ensuring accountability in AI healthcare systems,” 32nd IEEE International Conference on AI and Ethics, London, UK, 2023, pp. 100-106.
- E. Zhao and T. Green, “Challenges of transparency in AI decision-making,” AI Journal of Ethics, 15(4), 2021, pp. 23-35.
- M. Kumar, A study on AI ethics in autonomous vehicles, thesis, University of California, Berkeley, CA, 2022.
- J. Torres, “Virtue ethics in artificial intelligence design,” Philosophical Studies in AI, 8(2), 2020, pp. 67-78.
- L. Wang, “Data privacy and AI systems in the digital age,” Journal of AI & Society, 19(1), 2023, pp. 91-105.
- C. Roberts and N. Singh, AI ethics: balancing innovation and responsibility (Oxford: Oxford University Press, 2022).
- K. Brown, “Bias detection in AI algorithms: methods and challenges,” Proceedings of the 2022 AI and Data Science Symposium, Boston, MA, pp. 89-94.
- A. Turner, “Deontological approaches to ethical AI design,” Journal of Moral Computing, 7(3), 2021, pp. 145-160.
- S. Gomez and D. White, The ethics of AI in global healthcare (Cambridge: Cambridge University Press, 2020).
- J. Carter, “AI accountability in the public sector,” International Journal of AI Governance, 10(2), 2023, pp. 34-50.
- T. Li and H. Chen, “Addressing ethical dilemmas in AI for autonomous vehicles,” AI Research Review, 6(1), 2022, pp. 12-26.
- P. Gupta, AI and ethical decision-making in corporate environments, master’s thesis, University of Toronto, Toronto, Canada, 2021.
- F. Martin and S. Reynolds, “Transparency in machine learning models,” IEEE Transactions on Ethics in Computing, 5(4), 2022, pp. 200- 211.
- D. Hall, “The role of utilitarianism in AI policy,” Journal of Applied Ethics and Technology, 11(2), 2020, pp. 99-112.
- A. Kapoor, Ethical considerations in AI-powered social media platforms, doctoral diss., University of Michigan, Ann Arbor, MI, 2022.
- G. Wilson, “AI ethics in the workplace: balancing efficiency and fairness,” Workplace AI Review, 13(3), 2021, pp. 56-68.
- H. Taylor, “Comparative study of ethical frameworks for AI systems,” Journal of AI and Ethics Research, 14(4), 2023, pp. 80-94.
- Evans, Accountability in AI systems: legal and ethical challenges (London: Routledge, 2021).
- R. Singh, “Machine learning bias in medical diagnostics: a case study,” Proceedings of the International Medical AI Symposium, Singapore, 2022, pp. 145-153.
- M. Foster, “Ethical concerns in AI and big data analytics,” Data Ethics Quarterly, 9(2), 2023, pp. 23-38.
- L. Davis and P. Cooper, AI ethics: challenges in the age of innovation (Boston: MIT Press, 2020).
