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Dependency of Constrained Clustering of Transaction Data on Known Data Distribution

机译:交易数据约束聚类对已知数据分布的依赖性

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Most well-known partitioning clustering algorithms adopt an iterative procedure to converge to the stable status. One problem is that the quality of clustering and execution time is especially sensitive to initial conditions (e.g. initial cluster centers and cluster number). In addition, the method used to measure similarity between two transaction data is also an important factor. In general, the similarity method is established in advance and usually employs metric-based distance measuring, which does not consider the variation in the content. The disadvantage is that an analyst is unable to modify the measuring method to suit the need of a particular analysis. In this paper, therefore, we propose a novel constrained clustering algorithm called CCKD (short for Constrained Clustering depend on Known data Distribution). With CCKD, the analyst is able to specify the constrains for measuring similarity that set conditions on capturing clusters. In addition, our empirical results indicate that CCKD is an effective and stable algorithm without any iterative procedure.
机译:最著名的分区聚类算法采用迭代过程收敛到稳定状态。一个问题是,聚类和执行时间的质量对初始条件(例如初始聚类中心和聚类编号)特别敏感。另外,用于测量两个交易数据之间的相似性的方法也是一个重要因素。通常,相似性方法是预先建立的,并且通常采用基于度量的距离测量,这种度量不考虑内容的变化。缺点是分析人员无法修改测量方法以适合特定分析的需要。因此,在本文中,我们提出了一种新的约束聚类算法,称为CCKD(约束聚类的缩写取决于已知数据分布)。使用CCKD,分析人员可以指定用于测量相似性的约束,这些约束为捕获群集设置条件。此外,我们的实验结果表明,CCKD是一种有效且稳定的算法,无需任何迭代过程。

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    《》|2007年|73-79|共7页
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    Chang; Hui-Chu; Chen; Ming-Syan;

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