Socially-Informed Content Analysis of Online Human Behavior
By: Julie Jiang
Potential Business Impact:
Helps make online talk less angry and more helpful.
The explosive growth of social media has not only revolutionized communication but also brought challenges such as political polarization, misinformation, hate speech, and echo chambers. This dissertation employs computational social science techniques to investigate these issues, understand the social dynamics driving negative online behaviors, and propose data-driven solutions for healthier digital interactions. I begin by introducing a scalable social network representation learning method that integrates user-generated content with social connections to create unified user embeddings, enabling accurate prediction and visualization of user attributes, communities, and behavioral propensities. Using this tool, I explore three interrelated problems: 1) COVID-19 discourse on Twitter, revealing polarization and asymmetric political echo chambers; 2) online hate speech, suggesting the pursuit of social approval motivates toxic behavior; and 3) moral underpinnings of COVID-19 discussions, uncovering patterns of moral homophily and echo chambers, while also indicating moral diversity and plurality can improve message reach and acceptance across ideological divides. These findings contribute to the advancement of computational social science and provide a foundation for understanding human behavior through the lens of social interactions and network homophily.
Similar Papers
Dynamics and Inequalities in Digital Social Networks: A Computational and Sociological Review
Social and Information Networks
Fixes online echo chambers and fake news.
Modelling the Spread of Toxicity and Exploring its Mitigation on Online Social Networks
Social and Information Networks
Bots reduce online hate speech by changing its message.
Understanding Online Polarization Through Human-Agent Interaction in a Synthetic LLM-Based Social Network
Social and Information Networks
Shows how online arguments make people more sure.