| Literature DB >> 28618564 |
Fangjian Guo1,2, Dan Yang1,3, Zimo Yang1, Zhi-Dan Zhao1, Tao Zhou1,3.
Abstract
Many time series produced by complex systems are empirically found to follow power-law distributions with different exponents α. By permuting the independently drawn samples from a power-law distribution, we present nontrivial bounds on the memory strength (first-order autocorrelation) as a function of α, which are markedly different from the ordinary ±1 bounds for Gaussian or uniform distributions. When 1<α≤3, as α grows bigger, the upper bound increases from 0 to +1 while the lower bound remains 0; when α>3, the upper bound remains +1 while the lower bound descends below 0. Theoretical bounds agree well with numerical simulations. Based on the posts on Twitter, ratings of MovieLens, calling records of the mobile operator Orange, and the browsing behavior of Taobao, we find that empirical power-law-distributed data produced by human activities obey such constraints. The present findings explain some observed constraints in bursty time series and scale-free networks and challenge the validity of measures such as autocorrelation and assortativity coefficient in heterogeneous systems.Entities:
Year: 2017 PMID: 28618564 DOI: 10.1103/PhysRevE.95.052314
Source DB: PubMed Journal: Phys Rev E ISSN: 2470-0045 Impact factor: 2.529