Gender Bias in AI Systems: A Critical Analysis of Regulatory Frameworks and Policy Responses
Аннотация
The rapid proliferation of artificial intelligence systems has exposed pervasive gender biases that reflect and amplify existing societal inequalities, posing significant threats to gender equality and women’s fundamental rights. This article examines gender bias in AI systems through both theoretical and regulatory lenses, analysing how these biases manifest and can be addressed through comprehensive policy frameworks. The first section provides a systematic literature review exploring how bias becomes embedded in algorithmic systems through biased training data, algorithmic design choices, and broader cultural contexts. The second section examines policy responses, comparing UNESCO’s comprehensive recommendations with the European Union’s Artificial Intelligence Act and referencing the Council of Europe Framework Convention on Artificial Intelligence. This analysis reveals a significant disconnect between aspirational frameworks and practical implementation, demonstrating that existing regulatory approaches inadequately address gender bias in AI and highlighting the urgent need for comprehensive integration of gender equality considerations into AI governance frameworks.Библиографические ссылки
Ahn, J., Kim, J., & Sung, Y. (2022). The effect of gender stereotypes on artificial intelligence recommendations. Journal of Business Research, 141, 50–59.
Andrews, L., & Bucher, H. (2022). Automating discrimination: AI hiring practices and gender inequality. Cardozo Law Review, 44, 145–178.
Bartoletti, I., & Xenidis, R. (2023). The Council of Europe’s Framework Convention on Artificial Intelligence: Equality and non-discrimination perspectives. European Equality Law Review, 1, 56–72.
Buolamwini, J., & Gebru, T. (2018). Gender shades: Intersectional accuracy disparities in commercial gender classification. Conference on Fairness, Accountability and Transparency, 81, 77–91.
Domnich, A., & Anbarjafari, G. (2021). Responsible AI: Gender bias assessment in emotion recognition. arXiv preprint. arXiv:2103.11436.
Fountain, J. E. (2004). Building the virtual state: Information technology and institutional change. Brookings Institution Press.
Karagianni, A. (2025a). Gender in a stereo-(gender)typical EU AI law: A feminist reading of the AI Act. Cambridge Forum on AI: Law and Governance, 1(e25), 1–18.
Karagianni, A. (2025b). The EU Artificial Intelligence Act through a gender lens. Friedrich-Ebert-Stiftung e.V. https://library.fes.de/pdf-files/bueros/bruessel/21887–20250304.pdf
Lau, P. L. (2023). AI gender biases in women’s healthcare: Perspectives from the United Kingdom and the European legal space. In E. Gill-Pedro & A. Moberg (Eds.), YSEC yearbook of socio-economic constitutions 2023: Law and the governance of artificial intelligence (pp. 247–274).
Lütz, F. (2024). The AI Act, gender equality and non-discrimination: What role for the AI office? ERA Forum, 25, 79–95.
Manasi, A., Panchanadeswaran, S., Sours, E., & Lee, S. J. (2022). Mirroring the bias: Gender and artificial intelligence. Gender, Technology and Development, 26(3), 295–305.
O’Connor, S., & Liu, H. (2024). Gender bias perpetuation and mitigation in AI technologies: Challenges
and opportunities. AI & Society, 39, 2045–2057.
Orlikowski, W. J. (1992). The duality of technology: Rethinking the concept of technology in organizations. Organization Science, 3(3), 398–427.
Otis, N. G., Delecourt, S., Cranney, K., & Koning, R. (2024). Global evidence on gender gaps and generative AI [Working paper 25–023]. Harvard Business School.
UN Women. (2025, 5 February). How AI reinforces gender bias – and what we can do about it: Interview with Zinnya del Villar on AI gender bias and creating inclusive technology. https://www.unwomen.org/en/news-stories/interview/2025/02/how-ai-reinforces-gender-bias-and-what-we-can-do-about-it
UNESCO. (2020). Artificial intelligence and gender equality: Key findings of UNESCO’s global dialogue. https://unesdoc.unesco.org/ark:/48223/pf0000374174/PDF/374174eng.pdf.multi