Fairness in Opinion Dynamics
Stanis{\l}aw St\k{e}pie\'n, Michalina Janik, Mateusz Nurek, Akrati Saxena, Rados{\l}aw Michalski

TL;DR
This paper investigates how a state-of-the-art opinion prediction model discriminates against minority groups in social networks, analyzing demographic and topological factors to identify bias patterns and improve fairness strategies.
Contribution
It introduces a comprehensive analysis of demographic, topological, and hybrid classifiers to predict bias in opinion models, highlighting the need for context-aware fairness approaches.
Findings
No single classifier outperforms others across all bias patterns.
Demographic and topological features both contribute to prediction inaccuracies.
A multi-faceted approach is necessary to reduce bias and enhance fairness.
Abstract
Ways in which people's opinions change are, without a doubt, subject to a rich tapestry of differing influences. Factors that affect how one arrives at an opinion reflect how they have been shaped by their environment throughout their lives, education, material status, what belief systems are they subscribed to, and what socio-economic minorities are they a part of. This already complex system is further expanded by the ever-changing nature of one's social network. It is therefore no surprise that many models have a tendency to perform best for the majority of the population and discriminating those people who are members of various marginalized groups . This bias and the study of how to counter it are subject to a rapidly developing field of Fairness in Social Network Analysis (SNA). The focus of this work is to look into how a state-of-the-art model discriminates certain minority…
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Taxonomy
TopicsComputational and Text Analysis Methods · Advanced Graph Neural Networks · Ethics and Social Impacts of AI
