Price's model


Price's model is a mathematical model for the growth of citation networks. It was the first model which generalized the Simon model to be used for networks, especially for growing networks. Price's model belongs to the broader class of network growing models whose primary target is to explain the origination of networks with strongly skewed degree distributions. The model picked up the ideas of the Simon model reflecting the concept of rich get richer, also known as the Matthew effect. Price took the example of a network of citations between scientific papers and expressed its properties. His idea was that the way an old vertex gets new edges should be proportional to the number of existing edges the vertex already has. This was referred to as cumulative advantage, now also known as preferential attachment. Price's work is also significant in providing the first known example of a scale-free network. His ideas were used to describe many real-world networks such as the Web.

The model

Basics

Consider a directed graph with n nodes. Let denote the fraction of nodes with degree k so that. Each new node has a given out-degree and it is fixed in the long run. This does not mean that the out-degrees can not vary across nodes, simply we assume that the mean out-degree m is fixed over time. It is clear, that, consequently m is not restricted to integers. The most trivial form of preferential attachment means that a new node connects to an existing node proportionally to its in-degrees. In other words, a new paper cites an existing paper in proportional to its in-degrees. The caveat of such idea is that no new paper is cited when it is joined to the network so it is going to have zero probability of being cited in the future. To overcome this, Price proposed that an attachment should be proportional to some with constant. In general can be arbitrary, yet Price proposes a, in that way an initial citation is associated with the paper itself. The probability of a new edge connecting to any node with a degree k is

Evolution of the network

The next question is the net change in the number of nodes with degree k when we add new nodes to the network. Naturally, this number is decreasing, as some k-degree nodes have new edges, hence becoming -degree nodes; but on the other hand this number is also increasing, as some -degree nodes might get new edges, becoming k degree nodes. To express this net change formally, let us denote the fraction of k-degree nodes at a network of n vertices with :
and
To obtain a stationary solution for, first let us express using the well-known master equation method, as
After some manipulation, the expression above yields to
and
with being the Beta-function. As a consequence,. This is identical to saying that follows a power-law distribution with exponent. Typically, this places the exponent between 2 and 3, which is the case for many real world networks. Price tested his model by comparing to the citation network data and concluded that the resulting m is feasible to produce a sufficiently good power-law distribution.

Generalization

It is straightforward how to generalize the above results to the case when. Basic calculations show that
which once more yields to a power law distribution of with the same exponent for large k and fixed.