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An EM-based algorithm for clustering data streams in sliding windows

机译:基于EM的滑动窗口中数据流聚类算法

摘要

Cluster analysis has played a key role in data understanding. When such an important data mining task is extended to the context of data streams, it becomes more challenging since the data arrive at a mining system in one-pass manner. The problem is even more difficult when the clustering task is considered in a sliding window model which requiring the elimination of outdated data must be dealt with properly. We propose SWEM algorithm that exploits the Expectation Maximization technique to address these challenges. SWEM is not only able to process the stream in an incremental manner, but also capable to adapt to changes happened in the underlying stream distribution.
机译:聚类分析在数据理解中发挥了关键作用。当这样一个重要的数据挖掘任务扩展到数据流的上下文时,由于数据以单程方式到达挖掘系统,因此变得更具挑战性。当在滑动窗口模型中考虑聚类任务时,该问题甚至更加棘手,该模型必须正确处理需要消除过时数据的问题。我们提出利用期望最大化技术解决这些挑战的SWEM算法。 SWEM不仅能够以增量方式处理流,而且还能够适应基础流分布中发生的更改。

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