Publications

Stats

View publication

Title Simulating Conversations on Social Media with Generative Agent-Based Models
Authors Min Soo Jeon, Marcelo Mendoza, Miguel Fernández, Eliana Providel, Felipe Rodriguez, Nicolás Espina, Andres Carvallo, Andrés Abeliuk
Publication date November 2025
Abstract Large Language Models (LLMs) can generate realistic text
resembling human-produced content. However, the ability of these models to
simulate conversations on social media is still less explored. To
investigate the potential and limitations of simulated text in this domain,
we introduce network-simulator, a system to simulate conversations on social
media. First, we simulate the macro structure of a conversation using
Agent-Based Modeling (ABM). The generated structure defines who interacts
with whom, the type of interaction, and the agent's stance on the topic of
the conversation. Subsequently, using the simulated interaction structure,
our system generates prompts conditioned on the simulation variables,
producing texts that are conditioned on the parameters of the predefined
structure, guiding a micro simulation process. We compare human
conversations with those simulated by our system. Based on stylistic and
model-based metrics, we found that our system can simulate conversations on
social media in various dimensions. However, we detected differences in
metrics related to the predictability of text production. Furthermore, we
examine the effect of true and false framings within simulated
conversations, revealing that simulated discussions surrounding false
information exhibit a more negative collective sentiment bias than those
based on true content.
Pages article 79
Volume 14
Journal name EPJ Data Science
Publisher SpringerOpen, Springer-Verlag (Heidelberg, Germany)
Reference URL View reference page