Modeling correlated human dynamics
Abstract
We empirically study the activity patterns of individual blog-posting and find significant memory effects. The memory coefficient first decays in a power law and then turns to an exponential form. Moreover, the inter-event time distribution displays a heavy-tailed nature with power-law exponent dependent on the activity. Our findings challenge the priority-queue model that can not reproduce the memory effects or the activity-dependent distributions. We think there is another kind of human activity patterns driven by personal interests and characterized by strong memory effects. Accordingly, we propose a simple model based on temporal preference, which can well reproduce both the heavy-tailed nature and the strong memory effects. This work helps in understanding both the temporal regularities and the predictability of human behaviors.
Cite
@article{arxiv.1007.4440,
title = {Modeling correlated human dynamics},
author = {Peng Wang and Tao Zhou and Xiao-Pu Han and Bing-Hong Wang},
journal= {arXiv preprint arXiv:1007.4440},
year = {2010}
}