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Automatic aspect discrimination in relational data clustering

机译:关系数据聚类中的自动方面识别

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The features describing a data set may often be arranged in meaningful subsets, each of which corresponds to a different aspect of the data. An unsupervised algorithm (SCAD) that performs fuzzy clustering and aspects weighting simultaneously was recently proposed. However, there are several situations where the data set is represented by proximity matrices only (relational data), which renders several clustering approaches, including SCAD, inappropriate. To handle this kind of data, the relational clustering algorithm CARD, based on the SCAD algorithm, has been recently developed. However, CARD may fail and halt given certain conditions. To fix this problem, its steps are modified and then reordered to also reduce the number of parameters required. The improved CARD is assessed over hundreds of real and artificial data sets.
机译:描述数据集的特征通常可以安排在有意义的子集中,每个子集对应于数据的不同方面。最近提出了一种同时执行模糊聚类和方面加权的无监督算法(SCAD)。但是,在某些情况下,数据集仅由邻近矩阵(关系数据)表示,这使包括SCAD在内的多种聚类方法变得不合适。为了处理这种数据,最近已经开发了基于SCAD算法的关系聚类算法CARD。但是,在某些条件下,CARD可能会失败并停止。为了解决此问题,修改了其步骤,然后重新排序以减少所需的参数数量。改进的CARD评估了数百个真实和人工数据集。

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