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A measure of similarity between graph vertices: Applications to synonym extraction and web searching

机译:图顶点之间的相似性度量:在同义词提取和网络搜索中的应用

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摘要

We introduce a concept of similarity between vertices of directed graphs. Let CA and G(B) be two directed graphs with, respectively, n(A) and n(B) vertices. We define an n(B) x n(A) similarity matrix S whose real entry s(ij) expresses how similar vertex j (in G(A)) is to vertex i (in G(B)): we say that s(ij) is their similarity score. The similarity matrix can be obtained as the limit of the normalized even iterates of Sk+1 = BS(k)A(T) + B(T)S(k)A, where A and B are adjacency matrices of the graphs and So is a matrix whose entries are all equal to 1. In the special case where G(A) = G(B) = G, the matrix S is square and the score s(ij) is the similarity score between the vertices i and j of G. We point out that Klemberg's "hub and authority" method to identify web-pages relevant to a given query can be viewed as a special case of our definition in the case where one of the graphs has two vertices and a unique directed edge between them. In analogy to Kleinberg, we show that our similarity scores are given by the components of a dominant eigenvector of a nonnegative matrix. Potential applications of our similarity concept are numerous. We illustrate an application for the automatic extraction of synonyms in a monolingual dictionary.
机译:我们介绍了有向图的顶点之间的相似性的概念。令CA和G(B)为两个有向图,分别具有n(A)和n(B)个顶点。我们定义一个n(B)xn(A)相似矩阵S,其真实入口s(ij)表示顶点j(在G(A)中)与顶点i(在G(B)中)有多相似:我们说s( ij)是他们的相似度得分。可以将相似矩阵作为Sk + 1 = BS(k)A(T)+ B(T)S(k)A的标准化偶数迭代的极限来获得,其中A和B是图的邻接矩阵,因此是一个矩阵,其所有项均等于1。在G(A)= G(B)= G的特殊情况下,矩阵S为正方形,得分s(ij)为顶点i和j之间的相似性得分我们指出,在其中一个图具有两个顶点和唯一有向边的情况​​下,可以将Klemberg的“集线和权限”方法识别与给定查询相关的网页视为我们定义的特例。它们之间。类似于Kleinberg,我们证明了我们的相似性分数是由非负矩阵的主导特征向量的分量给出的。我们相似性概念的潜在应用是众多的。我们说明了一种在单语词典中自动提取同义词的应用程序。

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