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首页> 外文期刊>Journal of Information Engineering and Applications >A Fuzzy Clustering Algorithm for High Dimensional Streaming Data
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A Fuzzy Clustering Algorithm for High Dimensional Streaming Data

机译:高维流数据的模糊聚类算法

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摘要

In this paper we propose a dimension reduced weighted fuzzy clustering algorithm (sWFCM-HD). The algorithm can be used for high dimensional datasets having streaming behavior. Such datasets can be found in the area of sensor networks, data originated from web click stream and data collected by internet traffic flow etc. These data’s have two special properties which separate them from other datasets: a) They have streaming behavior and b) They have higher dimensions. Optimized fuzzy clustering algorithm has already been proposed for datasets having streaming behavior or higher dimensions. But as per our information, nobody has proposed any optimized fuzzy clustering algorithm for data sets having both the properties, i.e., data sets with higher dimension and also continuously arriving streaming behavior. Experimental analysis shows that our proposed algorithm (sWFCM-HD) improves performance in terms of memory consumption as well as execution time Keywords-K-Means, Fuzzy C-Means, Weighted Fuzzy C-Means, Dimension Reduction, Clustering.
机译:在本文中,我们提出了降维加权模糊聚类算法(sWFCM-HD)。该算法可以用于具有流传输行为的高维数据集。这样的数据集可以在传感器网络区域中找到,这些数据来自Web点击流,也可以通过互联网流量收集到的数据等。这些数据具有两个特殊的属性,可将它们与其他数据集区分开:a)它们具有流传输行为,b)它们具有更大的尺寸。对于具有流行为或更高维度的数据集,已经提出了优化的模糊聚类算法。但是根据我们的信息,没有人为具有既有属性的数据集,也就是具有较高维数的数据集,也具有连续到达的流行为,提出了任何优化的模糊聚类算法。实验分析表明,我们提出的算法(sWFCM-HD)在内存消耗和执行时间方面提高了性能。关键字K均值,模糊C均值,加权模糊C均值,降维,聚类。

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