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Generalization of bibliographic coupling and co-citation using the node split network

Authors
Yun, Jinhyuk
Issue Date
May-2022
Publisher
ELSEVIER
Keywords
Node split network; Bibliographic coupling; Co-citation; Neural embedding; Personalized PageRank
Citation
JOURNAL OF INFORMETRICS, v.16, no.2
Journal Title
JOURNAL OF INFORMETRICS
Volume
16
Number
2
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/42446
DOI
10.1016/j.joi.2022.101291
ISSN
1751-1577
Abstract
Bibliographic coupling (BC) and co-citation (CC) are the two most common citation-based coupling measures of similarity between scientific items. One can interpret these measures as second neighbor relations distinguished by the direction of the citation: BC is a similarity between two citing items, whereas CC is that between two cited items. A previous study proposed a two-layer node split network that can emulate clusters of coupling measures in a computationally efficient manner; however, the lack of intralayer links makes it impossible to obtain exact similarities. Here, we propose novel methods to estimate intralayer similarity on a node split network using personalized PageRank (PPR) and neural embedding (EMB). We demonstrate that PPR is strongly correlated with the coupling measures. Moreover, our proposed method can yield precise similarities between items even if they are distant from each other. We also show that many links with high similarity are missing in the original BC/CC network, which suggests that it is essential to consider long-range similarities. Comparative experiments on global and local edge sampling suggest that local sampling is stable for PPR in node split networks. This analysis offers valuable insights into the process of searching for significantly related items regarding each coupling measure.
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Yun, Jinhyuk
College of Information Technology (Department of AI Convergence)
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