Beyond Static Snapshots: Dynamic Modeling and Forecasting of Group-Level Value Evolution with Large Language Models
Qiankun Pi, Guixin Su, Jinliang Li, Mayi Xu, Xin Miao, Jiawei Jiang, Ming Zhong, Tieyun Qian

TL;DR
This paper introduces a novel dynamic modeling framework using large language models to predict long-term social value evolution at the group level, addressing the limitations of static snapshot approaches.
Contribution
It presents the first event-based prediction method integrating historical social trajectories into LLM responses for dynamic social simulation.
Findings
LLM-based models improved prediction accuracy by up to 33.97%.
U.S. groups show more volatility than Chinese groups.
Younger groups are more sensitive to external social changes.
Abstract
Social simulation is critical for mining complex social dynamics and supporting data-driven decision making. LLM-based methods have emerged as powerful tools for this task by leveraging human-like social questionnaire responses to model group behaviors. Existing LLM-based approaches predominantly focus on group-level values at discrete time points, treating them as static snapshots rather than dynamic processes. However, group-level values are not fixed but shaped by long-term social changes. Modeling their dynamics is thus crucial for accurate social evolution prediction--a key challenge in both data mining and social science. This problem remains underexplored due to limited longitudinal data, group heterogeneity, and intricate historical event impacts. To bridge this gap, we propose a novel framework for group-level dynamic social simulation by integrating historical value…
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Taxonomy
TopicsComputational and Text Analysis Methods · Opinion Dynamics and Social Influence · Language and cultural evolution
