Published on: June 2026
BIAS IN AI RECRUITMENT SYSTEMS: CHALLENGES, IMPACTS, AND MITIGATION STRATEGIES
Ishita Saxena Poorva Batra Surbhi Gupta Shiv Kumar Sharma
Article Status
Available Documents
Abstract
To see how well each model worked, we looked at these usual evaluation measures For the fairness part, we ran demographic bias auditing across gender, race, and age cohorts, and not just one single view either. The outcomes showed, kind of clearly, that the MLP ended up with the best predictive performance, and it seemed particularly strong on candidate-to-job matching style tasks, which, honestly, is where it looked best. This study points at a pretty serious tension in AI hiring, so better prediction does not automatically mean more fair choices. It also says fairness reviews should go with transparency features and bias reduction methods built into the recruiting tech. Overall, by combining technical evals with ethical and managerial stuff, this work pushes for responsible, transparent AI hiring systems. These systems aim to keep org productivity while respecting social fairness too.
Keywords— Algorithmic Bias; AI Recruitment; Hiring Discrimination; Machine Learning Fairness; Disparate Impact; Neural Network.
How to Cite this Paper
Saxena, I., Batra, P., Gupta, S. & Sharma, S. K. (2026). Bias in AI Recruitment Systems: Challenges, Impacts, and Mitigation Strategies. International Journal of Creative and Open Research in Engineering and Management, <i>02</i>(6). https://doi.org/10.55041/ijcope.v2i6.059
Saxena, Ishita, et al.. "Bias in AI Recruitment Systems: Challenges, Impacts, and Mitigation Strategies." International Journal of Creative and Open Research in Engineering and Management, vol. 02, no. 6, 2026, pp. . doi:https://doi.org/10.55041/ijcope.v2i6.059.
Saxena, Ishita,Poorva Batra,Surbhi Gupta, and Shiv Sharma. "Bias in AI Recruitment Systems: Challenges, Impacts, and Mitigation Strategies." International Journal of Creative and Open Research in Engineering and Management 02, no. 6 (2026). https://doi.org/https://doi.org/10.55041/ijcope.v2i6.059.
References
[1] M. Soleimani, A. Intezari, J. Arrowsmith, D. J. Pauleen, and N. Taskin, “Reducing AI bias in recruitment and selection: An integrative grounded approach,” International Journal of Human Resource Management, vol. 36, no. 14, pp. 2480–2515, 2025.[2] M. M. A. A. M. Sony, M. B. Amin, A. Ashraf, K. M. A. Islam, N. C. Debnath, and G. C. Debnath, “Bias in AI-driven HRM systems: Investigating discrimination risks embedded in AI recruitment tools and HR analytics,” Social Sciences & Humanities Open, vol. 12, p. 102082, 2025.
[3] Z. Chen, “Ethics and discrimination in artificial intelligence-enabled recruitment practices,” Humanities and Social Sciences Communications, vol. 10, no. 1, p. 567, 2023.
[4] N. C. Deshmukh, S. S. Mhaske, L. S. Chandra, J. Rachapudi, T. Le Quy, and F. Hopfgartner, “Bias in recruitment systems utilizing large language models,” in Proc. 9th International Conference on Advances in Artificial Intelligence (ICAAI), Manchester, UK, 2025, pp. 126–131.
[5] F. Zheng, C. Zhao, M. Usman, and P. Poulova, “From bias to brilliance: The impact of artificial intelligence usage on recruitment biases,” IEEE Transactions on Engineering Management, vol. 71, pp. 14155–14167, 2024.
[6] S. Barocas and A. D. Selbst, “Big data's disparate impact,” California Law Review, vol. 104, no. 3, pp. 671–732, 2016.
[7] N. Mehrabi, F. Morstatter, N. Saxena, K. Lerman, and A. Galstyan, “A survey on bias and fairness in machine learning,” ACM Computing Surveys, vol. 54, no. 6, 2021.
[8] A. Köchling and M. C. Wehner, “Discriminated by an algorithm: A systematic review of discrimination and fairness by algorithmic decision-making in HR recruitment,” Business Research, vol. 13, no. 3, pp. 795–848, 2020.
[9] C. Rigotti and E. Fosch-Villaronga, “Fairness, AI and recruitment,” Computer Law & Security Review, vol. 53, p. 105966, 2024.
[10] E. K. Kelan, “Algorithmic inclusion: Shaping the predictive algorithms of artificial intelligence in hiring,” Human Resource Management Journal, vol. 34, no. 3, pp. 694–707, 2024.
Ethical Compliance & Review Process
- •All submissions are screened under plagiarism detection.
- •Review follows editorial policy.
- •Authors retain copyright.
- •Peer Review Type: Double-Blind Peer Review
- •Published on: Jun 05 2026
This article is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. You are free to share and adapt this work for non-commercial purposes with proper attribution.

