hv_net
- Sample a random graph with an assigned joint degree distribution
hv_net
graph_in [SHOW]
hv_net
samples a random graph whose joint degree distribution is
equal to that of another graph provided as input, using the
hidden-variable model proposed by Boguna ans Pastor-Satorras.
File containing the edge list of the existing graph. If equal to '-' (dash), read the edge list from STDIN.
If the second parameter is equal to SHOW
, the program prints on
STDERR the hidden variable and actual degree of each node.
Let us assume that we want to create a graph whose joint degree
distribution is equal to that of the graph contained in
AS-20010316.net
(i.e., the graph of the Internet at the AS level in
March 2001). We can use the command:
$ hv_net AS-20010316.net > AS-20010316.net_rand
which will sample a random graph with the same joint-degree
distribution and will save its edge list in the file
AS-20010316.net_rand
(notice the STDOUT redirection operator
>
). Additionally, we can also save the values of the hidden
variables and actual degrees of the nodes by specifying SHOW
as a
second parameter:
$ hv_net AS-20010316.net SHOW > AS-20010316.net_rand 2>AS-20010316.net_rand_hv
In this case, the file AS-20010316.net_rand_hv
will contain the
values of the hidden variable of each node and of the actual degree of
the node in the sampled graph, in the format:
h1 k1
h2 k2
....
conf_model_deg(1), conf_model_deg_nocheck(1)
M. Boguna and R. Pastor-Satorras. "Class of correlated random networks with hidden variables". Phys. Rev. E 68 (2003), 036112.
V. Latora, V. Nicosia, G. Russo, "Complex Networks: Principles, Methods and Applications", Chapter 7, Cambridge University Press (2017)
V. Latora, V. Nicosia, G. Russo, "Complex Networks: Principles, Methods and Applications", Appendix 14, Cambridge University Press (2017)
(c) Vincenzo 'KatolaZ' Nicosia 2009-2017 <v.nicosia@qmul.ac.uk>
.