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An efficient clustering method for medical data applications

机译:一种有效的医疗数据应用聚类方法

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摘要

Clustering task is aimed at classifying elements into clusters, which is applied to different fields of the human activity. In this paper, an efficient clustering method by fast search and find of density peaks (FSFDP) is used for medical data applications. Different computing methods of the local density are compared and analyzed. For datasets composed by a small number of points, the local density might be affected by large statistical errors. Kernel local density is more accurate for estimating the density. Experiments were conducted to validate the efficiencies of the clustering method based on different local density for UCI benchmark and real-life datasets. The results show the feasibility and efficiency of the method for medical data clustering analysis.
机译:聚类任务旨在将元素分类为聚类,将其应用于人类活动的不同领域。在本文中,通过快速搜索和发现密度峰(FSFDP)的有效聚类方法被用于医疗数据应用。比较和分析了局部密度的不同计算方法。对于由少量点组成的数据集,局部密度可能会受到较大的统计误差的影响。内核局部密度对于估计密度更准确。进行了实验,以验证基于UCI基准数据和实际数据集的不同局部密度的聚类方法的效率。结果表明,该方法用于医学数据聚类分析的可行性和有效性。

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