Predictive Insights into LGBTQ+ Minority Stress: A Transductive Exploration of Social Media Discourse
S. Chapagain, Y. Zhao, T. K. Rohleen, S. M. Hamdi, S. F. Boubrahimi,, R. E. Flinn, E. M. Lund, D. Klooster, J. R. Scheer, C. J. Cascalheira

TL;DR
This paper introduces a hybrid GNN and BERT model to detect LGBTQ+ minority stress expressions in social media posts, leveraging linguistic nuances and transductive learning to improve accuracy and support health interventions.
Contribution
The study develops a novel RoBERTa-GCN hybrid model that enhances minority stress detection by capturing linguistic complexity and utilizing transductive learning on social media data.
Findings
Achieved 86% accuracy and F1 score in minority stress detection
Outperformed baseline models in classifying stress expressions
Demonstrated potential for digital health interventions for LGBTQ+ communities
Abstract
Individuals who identify as sexual and gender minorities, including lesbian, gay, bisexual, transgender, queer, and others (LGBTQ+) are more likely to experience poorer health than their heterosexual and cisgender counterparts. One primary source that drives these health disparities is minority stress (i.e., chronic and social stressors unique to LGBTQ+ communities' experiences adapting to the dominant culture). This stress is frequently expressed in LGBTQ+ users' posts on social media platforms. However, these expressions are not just straightforward manifestations of minority stress. They involve linguistic complexity (e.g., idiom or lexical diversity), rendering them challenging for many traditional natural language processing methods to detect. In this work, we designed a hybrid model using Graph Neural Networks (GNN) and Bidirectional Encoder Representations from Transformers…
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Taxonomy
TopicsSocial Media and Politics
