We compute the stationary in-degree probability, Pin(k), for a growing
network model with directed edges and arbitrary out-degree probability. In
particular, under preferential linking, we find that if the nodes have a light
tail (finite variance) out-degree distribution, then the corresponding
in-degree one behaves as k−3. Moreover, for an out-degree distribution
with a scale invariant tail, Pout(k)∼k−α, the corresponding
in-degree distribution has exactly the same asymptotic behavior only if
2<α<3 (infinite variance). Similar results are obtained when
attractiveness is included. We also present some results on descriptive
statistics measures %descriptive statistics such as the correlation between the
number of in-going links, Din, and outgoing links, Dout, and the
conditional expectation of Din given Dout, and we calculate these
measures for the WWW network. Finally, we present an application to the
scientific publications network. The results presented here can explain the
tail behavior of in/out-degree distribution observed in many real networks.Comment: 12 pages, 6 figures, v2 adds a section on descriptive statistics, an
analisis on www network, typos adde