2022
DOI: 10.1007/s41109-022-00471-1
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Influence of clustering coefficient on network embedding in link prediction

Abstract: Multiple network embedding algorithms have been proposed to perform the prediction of missing or future links in complex networks. However, we lack the understanding of how network topology affects their performance, or which algorithms are more likely to perform better given the topological properties of the network. In this paper, we investigate how the clustering coefficient of a network, i.e., the probability that the neighbours of a node are also connected, affects network embedding algorithms’ performanc… Show more

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Cited by 7 publications
(1 citation statement)
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“…The problem in (7.3) is thus solved by initializing the eigenvector centrality score values and iteratively recomputing them until the convergence is reached [99]. Next, the clustering coefficient, which is a measure of how well-connected the neighbors of the u-th sensor node are to each other, is further calculated in the following way [100]:…”
Section: Orphan Nodes' Coveragementioning
confidence: 99%
“…The problem in (7.3) is thus solved by initializing the eigenvector centrality score values and iteratively recomputing them until the convergence is reached [99]. Next, the clustering coefficient, which is a measure of how well-connected the neighbors of the u-th sensor node are to each other, is further calculated in the following way [100]:…”
Section: Orphan Nodes' Coveragementioning
confidence: 99%