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Unit Volume Based Distributed Clustering Using Probabilistic Mixture Model

机译:基于单位体积的分布式聚类,使用概率混合模型

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Extracting useful knowledge from numerous distributed data repositories can be a very hard task when such data cannot be directly centralized or unified as a single file or database. This paper suggests practical distributed clustering algorithms without accessing the raw data to overcome the inefficiency of centralized data clustering methods. The aim of this research is to generate unit volume based probabilistic mixture model from local clustering results without moving original data. It has been shown that our method is appropriate for distributed clustering when real data cannot be accessed or centralized.
机译:从许多分布式数据存储库中提取有用知识可以是一项非常艰巨的任务,当这些数据不能直接集中或统一为单个文件或数据库时。本文建议实际分布式聚类算法,而无需访问原始数据以克服集中式数据聚类方法的低效率。该研究的目的是从本地聚类结果生成基于单位体积的概率混合模型,而无需移动原始数据。已经表明,当无法访问或集中时,我们的方法适用于分布式群集。

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