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A robust adaptive clustering analysis method for automatic identification of clusters

机译:一种自动识别聚类的鲁棒自适应聚类分析方法

摘要

Identifying the optimal cluster number and generating reliable clustering results are necessary but challenging tasks in cluster analysis. The effectiveness of clustering analysis relies not only on the assumption of cluster number but also on the clustering algorithm employed. This paper proposes a new clustering analysis method that identifies the desired cluster number and produces, at the same time, reliable clustering solutions. It first obtains many clustering results from a specific algorithm, such as Fuzzy C-Means (FCM), and then integrates these different results as a judgement matrix. An iterative graph-partitioning process is implemented to identify the desired cluster number and the final result. The proposed method is a robust approach as it is demonstrated its effectiveness in clustering 2D data sets and multi-dimensional real-world data sets of different shapes. The method is compared with cluster validity analysis and other methods such as spectral clustering and cluster ensemble methods. The method is also shown efficient in mesh segmentation applications. The proposed method is also adaptive because it not only works with the FCM algorithm but also other clustering methods like the k-means algorithm.
机译:确定最佳聚类数并生成可靠的聚类结果是必要的,但在聚类分析中具有挑战性。聚类分析的有效性不仅取决于聚类数的假设,还取决于所采用的聚类算法。本文提出了一种新的聚类分析方法,该方法可以识别所需的聚类数并同时生成可靠的聚类解决方案。它首先从特定算法(例如模糊C均值(FCM))获得许多聚类结果,然后将这些不同的结果集成为判断矩阵。执行迭代图分区过程以标识所需的簇数和最终结果。所提出的方法是一种鲁棒的方法,因为它证明了它在对2D数据集和不同形状的多维真实世界数据集进行聚类方面的有效性。将该方法与聚类有效性分析和其他方法(如谱聚类和聚类集成方法)进行了比较。该方法还显示出在网格分割应用中有效。所提出的方法也是自适应的,因为它不仅适用于FCM算法,而且适用于其他聚类方法,例如k-means算法。

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