Algorithmic Bias and Social Stratification: How AI Shapes Inequality in Digital Societies

Authors

Keywords:

algorithmic bias, social stratification, artificial intelligence, digital inequality, machine learning, discrimination, social justice, technology ethics

Abstract

This paper examines the complex relationship between algorithmic bias and social stratification in contemporary digital societies. As artificial intelligence systems increasingly mediate access to employment, credit, healthcare, and education, their embedded biases risk perpetuating and amplifying existing social inequalities. Through analysis of case studies across multiple domains, this research demonstrates how algorithmic decision-making systems can systematically disadvantage marginalized groups, creating new forms of digital stratification. The paper proposes a framework for understanding algorithmic bias as both a technical and social phenomenon, arguing that addressing these issues requires interdisciplinary approaches combining technical solutions with policy interventions and social awareness. Findings suggest that without deliberate intervention, AI systems may entrench existing power structures while creating novel forms of discrimination that are harder to detect and challenge.

Author Biography

  • Parhlad Singh Ahluwalia

    School of Management and Business Studies, Jamia Hamdard, New Delhi, India

Downloads

Published

03-09-2025

How to Cite

Algorithmic Bias and Social Stratification: How AI Shapes Inequality in Digital Societies. (2025). Siddhanta’s International Journal of Advanced Research in Arts & Humanities, 3(1), 28-37. https://sijarah.com/index.php/sijarah/article/view/173

Similar Articles

91-100 of 114

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

Most read articles by the same author(s)

1 2 3 4 5 > >>