Large language models for spreading dynamics in complex systems
Shuyu Jiang, Hao Ren, Yichang Gao, Yi-Cheng Zhang, Li Qi, Dayong Xiao, Jie Fan, Rui Tang, Wei Wang

TL;DR
This paper reviews how large language models are transforming the study of spreading dynamics in complex systems, including digital and biological epidemics, by enhancing modeling, detection, and prediction capabilities.
Contribution
It provides a comprehensive overview of recent advances in applying LLMs to spreading dynamics, highlighting new methodologies and insights across multiple research disciplines.
Findings
LLMs improve understanding of semantic influences in spreading processes
LLMs enable better detection and surveillance of misinformation and epidemics
LLMs assist in predicting and managing epidemic outbreaks
Abstract
Spreading dynamics is a central topic in the physics of complex systems and network science, providing a unified framework for understanding how information, behaviors, and diseases propagate through interactions among system units. In many propagation contexts, spreading processes are influenced by multiple interacting factors, such as information expression patterns, cultural contexts, living environments, cognitive preferences, and public policies, which are difficult to incorporate directly into classical modeling frameworks. Recently, large language models (LLMs) have exhibited strong capabilities in natural language understanding, reasoning, and generation, enabling explicit perception of semantic content and contextual cues in spreading processes, thereby supporting the analysis of the different influencing factors. Beyond serving as external analytical tools, LLMs can also act…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Misinformation and Its Impacts
