Node similarity in the citation graph

被引:0
|
作者
Wangzhong Lu
J. Janssen
E. Milios
N. Japkowicz
Yongzheng Zhang
机构
[1] Faculty of Computer Science,Department of Mathematics and Statistics
[2] Dalhousie University,School of Information Technology and Engineering
[3] Dalhousie University,undefined
[4] University of Ottawa,undefined
来源
关键词
Networked information spaces; Document similarity metric; Citation graph; Digital libraries;
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学科分类号
摘要
Published scientific articles are linked together into a graph, the citation graph, through their citations. This paper explores the notion of similarity based on connectivity alone, and proposes several algorithms to quantify it. Our metrics take advantage of the local neighborhoods of the nodes in the citation graph. Two variants of link-based similarity estimation between two nodes are described, one based on the separate local neighborhoods of the nodes, and another based on the joint local neighborhood expanded from both nodes at the same time. The algorithms are implemented and evaluated on a subgraph of the citation graph of computer science in a retrieval context. The results are compared with text-based similarity, and demonstrate the complementarity of link-based and text-based retrieval.
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页码:105 / 129
页数:24
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