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A clustering algorithm for fuzzy numbers based on fast search and find of density peaks

机译:基于快速搜索和发现密度峰值的模糊数聚类算法

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This paper made improvements on clustering by fast search and find of density peaks (CFSFDP) algorithm and extended this algorithm to fuzzy numbers (FNCFSFDP algorithm). Using FNCFSFDP algorithm, classical information included in the samples are extended to fuzzy sets, and fuzzy samples can be clustered by searching the density peak. Firstly, by means of error analysis, improved Euclidean distance between fuzzy numbers was defined, and some key parameters or operating quantities mainly including cutoff distance and Gaussian Kernel function of fuzzy samples were introduced in detail. Next, 76 random simulations in total were performed on four sets of samples under different conditions with different t values, different sample sizes, index numbers, cluster numbers and fetching rules. Moreover, Kappa coefficients in above simulations were calculated. Finally, both advantages and disadvantages of the proposed FNCFSFDP were concluded and some recommendations for improvement were put forward, which can provide insightful guidance for further investigations of fuzzy clustering algorithms on fuzzy sets.
机译:本文通过对密度峰值的快速搜索和发现(CFSFDP)算法对聚类进行了改进,并将该算法扩展为模糊数(FNCFSFDP算法)。使用FNCFSFDP算法,可以将样本中包含的经典信息扩展到模糊集,并且可以通过搜索密度峰值来对模糊样本进行聚类。首先,通过误差分析,定义了模糊数之间的改进的欧几里德距离,并详细介绍了模糊样本的截止距离和高斯核函数等一些关键参数或运算量。接下来,在不同条件下以不同的t值,不同的样本大小,索引号,簇号和获取规则对四组样本总共进行了76次随机模拟。此外,计算了上述模拟中的卡伯系数。最后,总结了所提出的FNCFSFDP的优缺点,并提出了一些改进建议,为进一步研究模糊集上的模糊聚类算法提供了有益的指导。

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