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A New Evolving Data Streams System With Data Fusion

机译:具有数据融合的新演化数据流系统

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Cluster analysis is an important data mining issue, where objects under investi-gation are grouped into subsets of the original set of objects. In recent several years, a few clustering algorithms have been developed for the data stream problem. However these algorithms lack of extensibility or efficiency. In this paper we propose a new evolving data streams system with data fusion. We discuss a fundamentally different philosophy for data stream clustering which is guided by application centered requirements. The system is highly suitable for real-time implementation and is demonstrated through a series of experiments. The experiments over a number of real and synthetic data sets illustrate the effectiveness and efficiency.
机译:群集分析是一个重要的数据挖掘问题,其中Investi-Gation下的对象被分组成原始对象集的子集。最近几年来,已经为数据流问题开发了一些聚类算法。然而,这些算法缺乏可扩展性或效率。在本文中,我们提出了一种具有数据融合的新的演化数据流系统。我们讨论了基本上不同的数据流群集哲学,该群集由应用中心的要求指导。该系统非常适合实时实现,并通过一系列实验证明。在许多实际和合成数据集上的实验说明了有效性和效率。

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