| Literature DB >> 28717155 |
Xin-Zeng Wu1,2, Allon G Percus3, Kristina Lerman4.
Abstract
In numerous physical models on networks, dynamics are based on interactions that exclusively involve properties of a node's nearest neighbors. However, a node's local view of its neighbors may systematically bias perceptions of network connectivity or the prevalence of certain traits. We investigate the strong friendship paradox, which occurs when the majority of a node's neighbors have more neighbors than does the node itself. We develop a model to predict the magnitude of the paradox, showing that it is enhanced by negative correlations between degrees of neighboring nodes. We then show that by including neighbor-neighbor correlations, which are degree correlations one step beyond those of neighboring nodes, we accurately predict the impact of the strong friendship paradox in real-world networks. Understanding how the paradox biases local observations can inform better measurements of network structure and our understanding of collective phenomena.Entities:
Year: 2017 PMID: 28717155 PMCID: PMC5514029 DOI: 10.1038/s41598-017-06042-0
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Impact of assortativity on strong friendship paradox. The matrix e(k, k′) has bivariate log-normal distribution with parameters m = 2.5, s = 1.25, c ranges from −0.75 to 0.75, which corresponds to assortativity r in the range −0.18 to 0.6.
Observed fraction of nodes in real-world networks that experience the strong friendship paradox, compared to predictions of the two proposed models.
| Network | Type | Observed | 3K model | 2K model |
|---|---|---|---|---|
| LiveJournal | Social | 83.71% | 84.43% | 86.95% |
| Youtube | Social | 89.94% | 88.51% | 90.34% |
| Skitter | Internet | 88.62% | 90.35% | 95.79% |
| Web | 77.31% | 78.25% | 84.36% | |
| ArXiv HEP | Citation | 78.71% | 79.67% | 83.83% |
| English words | Semantic | 75.23% | 71.00% | 71.05% |
Figure 2Probability of the strong friendship paradox in six real-world networks, comparing observed fraction of degree-k nodes that are in the paradox regime (blue dots) to predictions of the 2K model (dotted red line) and the 3K model (solid red line).
Figure 3(Left) Neighbor-neighbor correlation coefficient by degree class for each network discussed in this paper. (Data have been smoothed). (Right) Distribution of at the critical degree k .
List of real world networks and their basic profiles.
| Name | Type | Nodes | Edges | Assortativity | |
|---|---|---|---|---|---|
| 1 | LiveJournal | Social | 3,997,962 | 34,681,189 | 0.045145 |
| 2 | Youtube | Social | 1,134,890 | 2,987,624 | −0.036910 |
| 3 | Skitter | Internet | 1,696,415 | 11,095,298 | −0.081422 |
| 4 | Hyperlink | 875,713 | 4,322,051 | −0.055089 | |
| 5 | ArXiv HEP | Citation | 34,546 | 420,877 | −0.005943 |
| 6 | WordNet | Semantic | 146,005 | 656,999 | −0.006286 |
Note that directed edges, if they exist, are treated as undirected edges.