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首页> 外文期刊>Computational intelligence and neuroscience >A Self-Adaptive Fuzzy c-Means Algorithm for Determining the Optimal Number of Clusters
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A Self-Adaptive Fuzzy c-Means Algorithm for Determining the Optimal Number of Clusters

机译:用于确定最佳簇数量的自适应模糊C型算法

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For the shortcoming of fuzzy c-means algorithm (FCM) needing to know the number of clusters in advance, this paper proposed a new self-adaptive method to determine the optimal number of clusters. Firstly, a density-based algorithm was put forward. The algorithm, according to the characteristics of the dataset, automatically determined the possible maximum number of clusters instead of using the empirical rule n and obtained the optimal initial cluster centroids, improving the limitation of FCM that randomly selected cluster centroids lead the convergence result to the local minimum. Secondly, this paper, by introducing a penalty function, proposed a new fuzzy clustering validity index based on fuzzy compactness and separation, which ensured that when the number of clusters verged on that of objects in the dataset, the value of clustering validity index did not monotonically decrease and was close to zero, so that the optimal number of clusters lost robustness and decision function. Then, based on these studies, a self-adaptive FCM algorithm was put forward to estimate the optimal number of clusters by the iterative trial-and-error process. At last, experiments were done on the UCI, KDD Cup 1999, and synthetic datasets, which showed that the method not only effectively determined the optimal number of clusters, but also reduced the iteration of FCM with the stable clustering result.
机译:对于模糊C型算法(FCM)的缺点需要提前了解集群的数量,本文提出了一种新的自适应方法来确定最佳簇数。首先,提出了一种基于密度的算法。根据数据集的特征,自动确定可能的最大簇数而不是使用经验规则n,并获得最佳初始集群质心,从而提高了随机选择的群集质心的FCM的限制导致收敛结果地方最低。其次,本文通过引入惩罚功能,提出了一种基于模糊紧凑和分离的新的模糊聚类有效性索引,这确保了当数据集中的对象中的群集数量时,群集有效性索引的值没有单调减小并且接近零,使得最佳的集群失去稳健性和决策功能。然后,基于这些研究,提出了一种自适应FCM算法来估计迭代试验和错误过程的最佳群集数。最后,在UCI,KDD CUP和合成数据集上完成了实验,这表明该方法不仅有效地确定了群集的最佳数量,而且还将FCM的迭代降低了稳定的聚类结果。

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