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Grammar-based random walkers in semantic networks

机译:语义网络中基于语法的随机游动者

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摘要

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.
机译:语义网络限定了与任何两个顶点相关的边的含义。确定哪个顶点在语义网络中最“中心”是困难的,因为一种关系类型在主观上可能比另一种更为重要。因此,对语义网络指标的研究主要集中在基于上下文的排名(即用户指定的上下文)上。而且,许多当前的语义网络度量对语义关联(即,两个顶点之间的有向路径)进行排名,而不是对顶点本身进行排名。本文提出了一个框架,该框架使用Markov链分析的随机Walker模型的改进版本来计算语义网络中基于语义有意义的基于主要特征向量的度量,例如特征向量中心性和PageRank。在本文的上下文中,随机漫步者受到语法的约束,其中语法是用户定义的数据结构,该数据结构确定最终顶点排名的含义。本文中的想法是在语义Web计划的资源描述框架(RDF)的上下文中提出的。

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