Search:
Match:
1 results

Analysis

This paper addresses the challenges of studying online social networks (OSNs) by proposing a simulation framework. The framework's key strength lies in its realism and explainability, achieved through agent-based modeling with demographic-based personality traits, finite-state behavioral automata, and an LLM-powered generative module for context-aware posts. The integration of a disinformation campaign module (red module) and a Mastodon-based visualization layer further enhances the framework's utility for studying information dynamics and the effects of disinformation. This is a valuable contribution because it provides a controlled environment to study complex social phenomena that are otherwise difficult to analyze due to data limitations and ethical concerns.
Reference

The framework enables the creation of customizable and controllable social network environments for studying information dynamics and the effects of disinformation.