Engagement-Driven Content Generation with Large Language Models
Large Language Models (LLMs) exhibit significant persuasion capabilities in one-on-one interactions, but their influence within social networks remains underexplored. This study investigates the potential social impact of LLMs in these environments, where interconnected users and complex opinion dyn...
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Zusammenfassung: | Large Language Models (LLMs) exhibit significant persuasion capabilities in
one-on-one interactions, but their influence within social networks remains
underexplored. This study investigates the potential social impact of LLMs in
these environments, where interconnected users and complex opinion dynamics
pose unique challenges. In particular, we address the following research
question: can LLMs learn to generate meaningful content that maximizes user
engagement on social networks?
To answer this question, we define a pipeline to guide the LLM-based content
generation which employs reinforcement learning with simulated feedback. In our
framework, the reward is based on an engagement model borrowed from the
literature on opinion dynamics and information propagation. Moreover, we force
the text generated by the LLM to be aligned with a given topic and to satisfy a
minimum fluency requirement.
Using our framework, we analyze the capabilities and limitations of LLMs in
tackling the given task, specifically considering the relative positions of the
LLM as an agent within the social network and the distribution of opinions in
the network on the given topic. Our findings show the full potential of LLMs in
creating social engagement. Notable properties of our approach are that the
learning procedure is adaptive to the opinion distribution of the underlying
network and agnostic to the specifics of the engagement model, which is
embedded as a plug-and-play component. In this regard, our approach can be
easily refined for more complex engagement tasks and interventions in
computational social science.
The code used for the experiments is publicly available at
https://anonymous.4open.science/r/EDCG/. |
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DOI: | 10.48550/arxiv.2411.13187 |