Grammar-based random walkers in semantic networks

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Semantic networks qualify the meaning of an edge relating any two vertices. Determining which vertices are most “central” in a semantic network is difficult because one relationship type may be deemed subjectively more important than another. For this reason, research into semantic network metrics has focused primarily on context-based rankings (i.e. user prescribed contexts). Moreover, many of the current semantic network metrics rank semantic associations (i.e. directed paths between two vertices) and not the vertices themselves. This article presents a framework for calculating semantically meaningful primary eigenvector-based metrics such as eigenvector centrality and PageRank in semantic networks using a modified version of the random walker model of Markov chain analysis. Random walkers, in the context of this article, are constrained by a grammar, where the grammar is a user-defined data structure that determines the meaning of the final vertex ranking. The ideas in this article are presented within the context of the Resource Description Framework (RDF) of the Semantic Web initiative.

论文关键词:Semantic networks,RDF/RDFS,Semantic Web,PageRank,Eigenvector centrality,Primary eigenvector

论文评审过程:Received 19 July 2007, Accepted 24 March 2008, Available online 8 April 2008.

论文官网地址:https://doi.org/10.1016/j.knosys.2008.03.030