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Influence, originality and similarity in directed acyclic graphs
Published 18 Aug 2011 in physics.soc-ph, cs.DL, and cs.SI | (1108.3691v1)
Abstract: We introduce a framework for network analysis based on random walks on directed acyclic graphs where the probability of passing through a given node is the key ingredient. We illustrate its use in evaluating the mutual influence of nodes and discovering seminal papers in a citation network. We further introduce a new similarity metric and test it in a simple personalized recommendation process. This metric's performance is comparable to that of classical similarity metrics, thus further supporting the validity of our framework.
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