To quantify the mechanism of a complex network growth we focus on the network
of citations of scientific papers and use a combination of the theoretical and
experimental tools to uncover microscopic details of this network growth.
Namely, we develop a stochastic model of citation dynamics based on
copying/redirection/triadic closure mechanism. In a complementary and coherent
way, the model accounts both for statistics of references of scientific papers
and for their citation dynamics. Originating in empirical measurements, the
model is cast in such a way that it can be verified quantitatively in every
aspect. Such verification is performed by measuring citation dynamics of
Physics papers. The measurements revealed nonlinear citation dynamics, the
nonlinearity being intricately related to network topology. The nonlinearity
has far-reaching consequences including non-stationary citation distributions,
diverging citation trajectory of similar papers, runaways or "immortal papers"
with infinite citation lifetime etc. Thus, our most important finding is
nonlinearity in complex network growth. In a more specific context, our results
can be a basis for quantitative probabilistic prediction of citation dynamics
of individual papers and of the journal impact factor.Comment: 26 pages, 24 figure