Abstract Multi-peak information diffusion unfolding over days is common yet mechanistically under-explained. There remains a lack of approaches that treat signals learned from large-scale data as first-order inputs to the dynamics and study the resulting nonlinear interactions with contact processes and endogenous mechanisms. Using 8.7 million timestamped digital traces, we first extract a platform-level diurnal–weekly activity field as an external driver. We build an interpretable, shock-aware dynamical model that couples this data-driven rhythm to finite-area external shocks while keeping exogenous inflow separate from peer-to-peer spread. A principal Floquet multiplier delineates absorbing and active regimes; a uniform-decay criterion guarantees that any finite-area shock relaxes without secondary surges; finite trains of shocks leave the long-term threshold unchanged. Calibrated on three multi-peak social-media events spanning 15 thousand to 136 thousand posts, the framework yields low error while retaining parsimony and interpretability. A phase-optimal launch rule maximises 24 h reach, and global sensitivity analyses expose a stage-wise relay: pulses and activation dominate early, rhythmic contrast shapes the middle stage, and active-lifetime decay with contact governs the tail. The analysis identifies efficient levers for crossing the extinction threshold by lowering contact or shortening active lifetime. Together, these results make long-period, multi-peak diffusion interpretable and actionable.
Building similarity graph...
Analyzing shared references across papers
Loading...
Yushi Sun
Bo Sun
EPJ Data Science
Building similarity graph...
Analyzing shared references across papers
Loading...
Sun et al. (Thu,) studied this question.
synapsesocial.com/papers/697460cebb9d90c67120aaa3 — DOI: https://doi.org/10.1140/epjds/s13688-026-00624-7