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Clustering algorithms for content-based publication-subscription systems

机译:基于内容的发布-订阅系统的聚类算法

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We consider efficient communication schemes based on both network-supported and application-level multicast techniques for content-based publication-subscription systems. We show that the communication costs depend heavily on the network configurations, distribution of publications and subscriptions. We devise new algorithms and adapt existing partitional data clustering algorithms. These algorithms can be used to determine multicast groups with as much commonality as possible, based on the totality of subscribers' interests. They perform well in the context of highly heterogeneous subscriptions, and they also scale well. An efficiency of 60% to 80% with respect to the ideal solution can be achieved with a small number of multicast groups (less than 100 in our experiments). Some of these same concepts can be applied to match publications to subscribers in real-time, and also to determine dynamically whether to unicast, multicast or broadcast information about the events over the network to the matched subscribers. We demonstrate the quality of our algorithms via simulation experiments.
机译:我们考虑针对基于内容的发布-订阅系统,基于网络支持和应用程序级多播技术的有效通信方案。我们表明,通信成本在很大程度上取决于网络配置,出版物和订阅的分布。我们设计新的算法并改编现有的分区数据聚类算法。这些算法可用于基于订户的兴趣总数来确定具有尽可能多的通用性的多播组。它们在高度异构的订阅中表现良好,并且伸缩性也很好。通过少量的多播组(在我们的实验中少于100个),可以实现相对于理想解决方案的60%到80%的效率。这些相同概念中的某些可以应用于将出版物与订阅者实时匹配,也可以动态确定是否通过网络向匹配的订阅者单播,多播或广播有关事件的信息。我们通过仿真实验证明了我们算法的质量。

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