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Proximity Tracking on Time-Evolving Bipartite Graphs

机译:在时间演化的二分图中追踪近似跟踪

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Given an author-conference network that evolves over time, which are the conferences that a given author is most closely related with, and how do they change over time? Large time-evolving bipartite graphs appear in many settings, such as social networks, co-citations, market-basket analysis, and collaborative filtering. Our goal is to monitor (i) the centrality of an individual node (e.g., who are the most important authors?); and (ii) the proximity of two nodes or sets of nodes (e.g., who are the most important authors with respect to a particular conference?) Moreover, we want to do this efficiently and incrementally, and to provide "any-time" answers. We propose pTrack and cTrack, which are based on random walk with restart, and use powerful matrix tools. Experiments on real data show that our methods are effective and efficient: the mining results agree with intuition; and we achieve up to 15~176 times speed-up, without any quality loss.
机译:给出了一个随着时间的推移演变的作家会议网络,这是给定作者与最密切相关的会议以及它们如何随时间变化?在许多设置中出现大型时间不断发展的二分图,例如社交网络,共同引用,市场篮分析和协作过滤。我们的目标是监控(i)个别节点的中心(例如,谁是最重要的作者?); (ii)(ii)两个节点或一组节点(例如,谁是关于特定会议的最重要作者),我们还希望有效地和逐步执行此操作,并提供“任何时间”答案。我们提出了Ptrack和Ctrack,基于随机散步,并使用强大的矩阵工具。真实数据的实验表明,我们的方法是有效和有效的:采矿业绩与直觉一致;我们达到了高达15〜176倍的加速,没有任何质量损失。

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