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A Local Scalable Distributed Expectation Maximization Algorithm for Large Peer-to-Peer Networks

机译:大型对等网络的局部可扩展分布式期望最大化算法

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This paper describes a local and distributed expectation maximization algorithm for learning parameters of Gaussian mixture models (GMM) in large peer-to-peer (P2P) environments. The algorithm can be used for a variety of well-known data mining tasks in distributed environments such as clustering, anomaly detection, target tracking, and density estimation to name a few, necessary for many emerging P2P applications in bioinformatics, webmining and sensor networks. Centralizing all or some of the data to build global models is impractical in such P2P environments because of the large number of data sources, the asynchronous nature of the P2P networks, and dynamic nature of the dataetwork. The proposed algorithm takes a two-step approach. In the monitoring phase, the algorithm checks if the model ȁ8;qualityȁ9; is acceptable by using an efficient local algorithm. This is then used as a feedback loop to sample data from the network and rebuild the GMM when it is outdated. We present thorough experimental results to verify our theoretical claims.
机译:本文介绍了一种在大型对等(P2P)环境中用于学习高斯混合模型(GMM)参数的局部和分布式期望最大化算法。该算法可用于分布式环境中的各种众所周知的数据挖掘任务,例如聚类,异常检测,目标跟踪和密度估计等,这是生物信息学,网络采矿和传感器网络中许多新兴P2P应用程序所必需的。在这样的P2P环境中,集中所有或部分数据以构建全局模型是不切实际的,因为数据源数量众多,P2P网络的异步特性以及数据/网络的动态特性。所提出的算法采用两步法。在监视阶段,算法检查模型if8;质量; 9;通过使用有效的局部算法是可以接受的。然后将其用作反馈回路,以从网络中采样数据,并在过时时重新构建GMM。我们提供详尽的实验结果,以验证我们的理论主张。

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