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Adaptive Threshold Based Clustering A Deterministic Partitioning Approach

机译:基于自适应阈值的聚类确定性分区方法

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Partitioning-based clustering methods have various challenges especially user-defined parameters and sensitivity to initial seed selections. K-means is most popular partitioning based method while it is sensitive to outlier, generate non-overlap cluster and non-deterministic in nature due to its sensitivity to initial seed selection. These limitations are regarded as promising research directions. In this study, a deterministic approach which do not requires user defined parameters during clustering; can generate overlapped and non-overlapped clusters and detect outliers has been proposed. Here, a minimum support value has been adopted from association rule mining to improve the clustering results. Further, the improved approach has been analysed on artificial and real datasets. The results demonstrated that datasets are well clustered with this approach too and it achieved success to generate almost same number of clusters as present in real datasets.
机译:基于分区的聚类方法具有尤其是用户定义的参数和对初始种子选择的敏感性的各种挑战。 K-Means是基于流行的分区的方法,而由于其对初始种子选择的敏感性,因此对异常值敏感,因此产生非重叠集群和非确定性。这些限制被视为有前途的研究方向。在本研究中,在群集期间不需要用户定义参数的确定性方法;可以生成重叠和非重叠的群集,并提出了检测异常值。这里,已从关联规则挖掘中采用了最小的支持值以改善聚类结果。此外,已经在人工和真实数据集中分析了改进的方法。结果表明,数据集也与这种方法进行了很好的聚集,并且它取得了成功,以产生实际数据集中存在的几乎相同数量的群集。

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