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Real-Time Twitter Recommendation: Online Motif Detection in Large Dynamic Graphs

机译:实时Twitter建议:大型动态图中的在线主题检测

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We describe a production Twitter system for generating relevant, personalized, and timely recommendations based on observing the temporally-correlated actions of each user's followings. The system currently serves millions of recommendations daily to tens of millions of mobile users. The approach can be viewed as a specific instance of the novel problem of online motif detection in large dynamic graphs. Our current solution partitions the graph across a number of machines, and with the construction of appropriate data structures, motif detection can be translated into the lookup and intersection of adjacency lists in each partition. We conclude by discussing a generalization of the problem that perhaps represents a new class of data management systems.
机译:我们描述了一个生产Twitter系统,该系统基于观察每个用户关注者的时间相关动作来生成相关,个性化和及时的建议。该系统目前每天为数千万的移动用户提供数百万条建议。该方法可以看作是大型动态图中在线主题检测新问题的特定实例。我们当前的解决方案将图形划分为多个机器,并且通过构建适当的数据结构,可以将主题检测转换为每个分区中的查找表和邻接表的交集。最后,我们讨论了可能代表一类新的数据管理系统的问题的概括。

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