PolarityRank: Finding an equilibrium between followers and contraries in a network

Information Processing & Management(2012)

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摘要
In this paper we present the relevance ranking algorithm named PolarityRank. This algorithm is inspired in PageRank, the webpage relevance calculus method used by Google, and generalizes it to deal with graphs having not only positive but also negative weighted arcs. Besides the definition of our algorithm, this paper includes the algebraic justification, the convergence demonstration and an empirical study in which PolarityRank is applied to two unrelated tasks where a graph with positive and negative weights can be built: the calculation of word semantic orientation and instance selection from a learning dataset.
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关键词
instance selection,negative weighted arc,webpage relevance calculus method,word semantic orientation,convergence demonstration,relevance ranking algorithm,empirical study,algebraic justification,unrelated task,negative weight,graphs,data mining,ranking algorithms,sentiment analysis
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