The structural cut-off is a concept in network science which imposes a degree cut-off in the degree distribution of a finite size network due to structural limitations (such as the simple graph property). Networks with vertices with degree higher than the structural cut-off will display structural disassortativity.
The structural cut-off is a maximum degree cut-off that arises from the structure of a finite size network.
Let
Ekk'
k
k'
k ≠ k'
k=k'
Ekk'
mkk'
Then, the ratio can be written
rkk'\equiv
Ekk' | |
mkk' |
=
\langlek\rangleP(k,k') | |
min\{kP(k),k'P(k'),NP(k)P(k')\ |
\langlek\rangle
N
P(k)
k
P(k,k')=Ekk'/\langlek\rangleN
k
k'
To be in the physical region,
rkk'\leq1
The structural cut-off
ks
r | |
ksks |
=1
The structural cut-off plays an important role in neutral (or uncorrelated) networks, which do not display any assortativity. The cut-off takes the form
ks\sim(\langlek\rangleN)1/2
Thus, if vertices of degree
k\geqks
In a scale-free network the degree distribution is described by a power law with characteristic exponent
\gamma
P(k)\simk-\gamma
kmax\sim
| ||||
N |
\gamma<3
kmax
ks\simN1/2
kmax>ks
A network generated randomly by a network generation algorithm is in general not free of structural disassortativity. If a neutral network is required, then structural disassortativity must be avoided.There are a few methods by which this can be done: [2]
k>ks
In some real networks, the same methods as for generated networks can also be used. In many cases, however, it may not make sense to consider multiple edges between two vertices, or such information is not available. The high degree vertices (hubs) may also be an important part of the network that cannot be removed without changing other fundamental properties.
To determine whether the assortativity or disassortativity of a network is of structural origin, the network can be compared with a degree-preserving randomized version of itself (without multiple edges).Then any assortativity measure of the randomized version will be a result of the structural cut-off. If the real network displays any additional assortativity or disassortativity beyond the structural disassortativity, then it is a meaningful property of the real network.
Other quantities that depend on the degree correlations, such as some definitions of the rich-club coefficient, will also be impacted by the structural cut-off. [3]