Fusing Dynamics Equation: A Social Opinions Prediction Algorithm with LLM-based Agents
In the context where social media is increasingly becoming a significant platform for social movements and the formation of public opinion, accurately simulating and predicting the dynamics of user opinions is of great importance for understanding social phenomena, policy making, and guiding public...
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Zusammenfassung: | In the context where social media is increasingly becoming a significant
platform for social movements and the formation of public opinion, accurately
simulating and predicting the dynamics of user opinions is of great importance
for understanding social phenomena, policy making, and guiding public opinion.
However, existing simulation methods face challenges in capturing the
complexity and dynamics of user behavior. Addressing this issue, this paper
proposes an innovative simulation method for the dynamics of social media user
opinions, the FDE-LLM algorithm, which incorporates opinion dynamics and
epidemic model. This effectively constrains the actions and opinion evolution
process of large language models (LLM), making them more aligned with the real
cyber world. In particular, the FDE-LLM categorizes users into opinion leaders
and followers. Opinion leaders are based on LLM role-playing and are
constrained by the CA model, while opinion followers are integrated into a
dynamic system that combines the CA model with the SIR model. This innovative
design significantly improves the accuracy and efficiency of the simulation.
Experiments were conducted on four real Weibo datasets and validated using the
open-source model ChatGLM. The results show that, compared to traditional
agent-based modeling (ABM) opinion dynamics algorithms and LLM-based opinion
diffusion algorithms, our FDE-LLM algorithm demonstrates higher accuracy and
interpretability. |
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DOI: | 10.48550/arxiv.2409.08717 |