0 VIVA-Tech IJRI V1, E8 Article - 1

Ethical Implications of AI in Decision-Making



EOI: 10.11242/viva-tech.01.08.060

Download Full Text here



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

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