2019
DOI: 10.1063/1.5107440
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Link prediction for tree-like networks

Abstract: Link prediction is the problem of predicting the location of either unknown or fake links from uncertain structural information of a network. Link prediction algorithms are useful in gaining insight into different network structures from partial observations of exemplars. However, existing link prediction algorithms only focus on regular complex networks and are overly dependent on either the closed triangular structure of networks or the so-called preferential attachment phenomenon. The performance of these a… Show more

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Cited by 53 publications
(66 citation statements)
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References 33 publications
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“…In what follows, we show network structures that are constructed via our model and their degree distributions. In regular networks (networks with many crossing links 16 ), with the increasing probability of the appearance of new communities, the degree of the hub node decreases-consistent with the hypothesis of our model. Surprisingly, our model can also construct a tree-like network with natural increasing new branches (communities).…”
Section: Articlesupporting
confidence: 88%
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“…In what follows, we show network structures that are constructed via our model and their degree distributions. In regular networks (networks with many crossing links 16 ), with the increasing probability of the appearance of new communities, the degree of the hub node decreases-consistent with the hypothesis of our model. Surprisingly, our model can also construct a tree-like network with natural increasing new branches (communities).…”
Section: Articlesupporting
confidence: 88%
“…Next, we set m = 1 and p = 1 and then directly construct a tree-like network. 16 As shown in Fig. 3, the surprising result is that our model is very similar to a naturally evolving tree.…”
Section: Fitness Of a Growing Modelmentioning
confidence: 61%
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“…In this paper we focus on the fact that links within a community are more predictable than external links (Yan and Gregory 2012;Cannistraci, Alanis-Lobato, and Ravasi 2013;Ding et al 2016) -due simply to the assumption that relationships within a real community are stronger (and perhaps more structured) than the external relationships. Hence, we adopt ideas from link prediction theory -where links can be predicted based on statistical characterisation of network structure (Liben-Nowell and Kleinberg 2007;Redner 2008;Lü et al 2015;Shang et al 2019) -to measure the predictability of network substructure. We propose a new metric for community detection which is based on the principle that links within a community should achieve a higher link prediction performance than external links (Yan and Gregory 2012;Cannistraci, Alanis-Lobato, and Ravasi 2013;Ding et al 2016).…”
Section: Introductionmentioning
confidence: 99%