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Phys. Rev. E 73, 036127 (2006) [19 pages]

Modeling bursts and heavy tails in human dynamics

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Alexei Vázquez1,2, João Gama Oliveira2,3, Zoltán Dezsö2, Kwang-Il Goh1,2, Imre Kondor4, and Albert-László Barabási1,2
1Center for Cancer System Biology, Dana Farber Cancer Institute, Harvard Medical School, 44 Binney St, Boston, Massachusetts 02115, USA
2Department of Physics and Center for Complex Networks Research, University of Notre Dame, Notre Dame, Indiana 46556, USA
3Departamento de Física, Universidade de Aveiro, Campus Universitário de Santiago, 3810-193 Aveiro, Portugal
4Collegium Budapest, Szentháromság u. 2, H-1014 Budapest, Hungary

Received 18 October 2005; published 24 March 2006

The dynamics of many social, technological and economic phenomena are driven by individual human actions, turning the quantitative understanding of human behavior into a central question of modern science. Current models of human dynamics, used from risk assessment to communications, assume that human actions are randomly distributed in time and thus well approximated by Poisson processes. Here we provide direct evidence that for five human activity patterns, such as email and letter based communications, web browsing, library visits and stock trading, the timing of individual human actions follow non-Poisson statistics, characterized by bursts of rapidly occurring events separated by long periods of inactivity. We show that the bursty nature of human behavior is a consequence of a decision based queuing process: when individuals execute tasks based on some perceived priority, the timing of the tasks will be heavy tailed, most tasks being rapidly executed, while a few experiencing very long waiting times. In contrast, priority blind execution is well approximated by uniform interevent statistics. We discuss two queuing models that capture human activity. The first model assumes that there are no limitations on the number of tasks an individual can hadle at any time, predicting that the waiting time of the individual tasks follow a heavy tailed distribution P(τw)∼τwα with α=3∕2. The second model imposes limitations on the queue length, resulting in a heavy tailed waiting time distribution characterized by α=1. We provide empirical evidence supporting the relevance of these two models to human activity patterns, showing that while emails, web browsing and library visitation display α=1, the surface mail based communication belongs to the α=3∕2 universality class. Finally, we discuss possible extension of the proposed queuing models and outline some future challenges in exploring the statistical mechanics of human dynamics.

© 2006 The American Physical Society

URL:
http://link.aps.org/doi/10.1103/PhysRevE.73.036127
DOI:
10.1103/PhysRevE.73.036127
PACS:
89.75.Da, 02.50.−r