Abstract
Many empirical studies have shown that in social, citation, collaboration, and other types of networks in real world, the degree of almost every node is less than the average degree of its neighbors. This imbalance is well known in sociology as the friendship paradox and states that your friends are more popular than you on average. If we introduce a value equal to the ratio of the average degree of the neighbors for a certain node to the degree of this node (which is called the ‘friendship index’, FI), then the FI value of more than 1 for most nodes indicates the presence of the friendship paradox in the network. In this paper, we study the behavior of the FI over time for networks generated by growth network models. We will focus our analysis on two models based on the use of the preferential attachment mechanism: the Barabási–Albert model and the triadic closure model. Using the mean-field approach, we obtain differential equations describing the dynamics of changes in the FI over time, and accordingly, after obtaining their solutions, we find the expected values of this index over iterations. The results show that the values of FI are decreasing over time for all nodes in both models. However, for networks constructed in accordance with the triadic closure model, this decrease occurs at a much slower rate than for the Barabási–Albert graphs. In addition, we analyze several real-world networks and show that their FI distributions follow a power law. We show that both the Barabási–Albert and the triadic closure networks exhibit the same behavior. However, for networks based on the triadic closure model, the distributions of FI are more heavy-tailed and, in this sense, are closer to the distributions for real networks.
Highlights
One of the non-trivial heterogeneous properties of complex networks is captured by the phenomenon of the friendship paradox which states that people, on average, have fewer friends than their friends do
The main research question of this paper is the following: does the use of preferential attachment and/or triadic closure mechanisms lead to the emergence of the friendship paradox phenomenon in growth networks? This paper examines the analytical properties of the friendship index in random networks generated by two models:
In contrast with the paper (Pal et al 2019) which examines the behavior of the Friendship index (FI) value averaged over all nodes, this paper examines the dynamics of the FI for any node of the Barabási–Albert network
Summary
One of the non-trivial heterogeneous properties of complex networks is captured by the phenomenon of the friendship paradox which states that people, on average, have fewer friends than their friends do. The analysis of Eq (9) allows us to draw the following conclusions regarding the behavior of the friendship index over time: 1 The trajectory of the expected value of βi(t) lies on the curve (9), and with the increase in the number of iterations t, i.e. with the growth of the network, the value of β i
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