2017
DOI: 10.1186/s13173-017-0055-x
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The strength of co-authorship ties through different topological properties

Abstract: Social networks are complex structures that describe individuals (graph nodes) connected in any social context (graph edges). Different metrics can be applied to those networks and their properties in order to understand behavior and even predict the future. One of such properties is tie strength, which allows to identify prominent individuals, analyze how relationships play different roles, predict links, and so on. Here, we specifically address the problem of measuring tie strength in co-authorship social ne… Show more

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Cited by 13 publications
(17 citation statements)
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“…In practice, simple metrics based on these ideas, such as frequency of interaction [8] and number of mutual friends [10], are commonly used to measure tie strength. Nevertheless, depending on the context, other factors can be considered when modelling tie strength [11][12][13][14][15]. Adamic et al [14] consider information such as membership of mailing lists and use of common phrases on personal Web pages to measure the similarity between users (or tie strength).…”
Section: Tie Strengthmentioning
confidence: 99%
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“…In practice, simple metrics based on these ideas, such as frequency of interaction [8] and number of mutual friends [10], are commonly used to measure tie strength. Nevertheless, depending on the context, other factors can be considered when modelling tie strength [11][12][13][14][15]. Adamic et al [14] consider information such as membership of mailing lists and use of common phrases on personal Web pages to measure the similarity between users (or tie strength).…”
Section: Tie Strengthmentioning
confidence: 99%
“…Adamic et al [14] consider information such as membership of mailing lists and use of common phrases on personal Web pages to measure the similarity between users (or tie strength). Brandão et al [15] measure the strength of coauthorship ties based on topological properties of academic networks. Gilbert and Karahalios [11] propose a tie strength metric based on specific information extracted from Facebook, such as the number of days since the last communication and the number of words exchanged in Wall posts.…”
Section: Tie Strengthmentioning
confidence: 99%
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“…co-authorship frequency or edge weight) have been largely used to measure the strength of ties. However, through empirical analyses, we identified four main problems with using solely neighborhood overlap and co-authorship frequency to measure tie strength [Brandão et al 2016, Brandão andMoro 2017b]: (Case 1) when a pair of collaborators does not have any common neighbor, neighborhood overlap will be zero; (Case 2) when determining if two collaborators are from the same community or not, co-authorship frequency considers only the absolute frequency of interaction; (Case 3) when there is little collaboration between a pair of collaborators and manyn common neighbors, neighborhood overlap and co-authorship frequency will present opposite results; and (Case 4) when the results are extreme values, neighborhood overlap may not represent the reality.…”
Section: Measuring Tie Strength In Non-temporal Snmentioning
confidence: 99%