We generalize the poissonian evolving random graph model of Bauer and Bernard
to deal with arbitrary degree distributions. The motivation comes from
biological networks, which are well-known to exhibit non poissonian degree
distribution. A node is added at each time step and is connected to the rest of
the graph by oriented edges emerging from older nodes. This leads to a
statistical asymmetry between incoming and outgoing edges. The law for the
number of new edges at each time step is fixed but arbitrary. Thermodynamical
behavior is expected when this law has a large time limit. Although (by
construction) the incoming degree distributions depend on this law, this is not
the case for most qualitative features concerning the size distribution of
connected components, as long as the law has a finite variance. As the variance
grows above 1/4, the average being <1/2, a giant component emerges, which
connects a finite fraction of the vertices. Below this threshold, the
distribution of component sizes decreases algebraically with a continuously
varying exponent. The transition is of infinite order, in sharp contrast with
the case of static graphs. The local-in-time profiles for the components of
finite size allow to give a refined description of the system.Comment: 30 pages, 3 figure