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The proposal of dynamic thresholds in an immune algorithm for fuzzy clustering

机译:模糊聚类免疫算法中动态阈值的建议

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Most datasets obtained in real-world applications are typically unlabeled, requiring a manual labor of classifying a sample of such data or the application of unsupervised learning. Clustering is typically used to devise how data are grouped together before sampling the data to be labeled. Most clustering algorithms often assumes that the number of clusters is known and that a given instance from the dataset belongs to only one cluster. The Fainet algorithm is a bioinspired fuzzy clustering algorithm that finds fuzzy partitions and dynamically estimates the number of clusters. The results from the literature showed that, given a correct parameters set, this algorithm can outperform most clustering methods from the literature. However, in order to obtain such optimal set, a typical user should first acquire a knowledge of the dataset being studied. This work proposes dynamic rules to finetune the parameters set on-the-fly. The advantages of the proposed method is that the parameters not only adapts to the dataset characteristics but also to how close the solutions are from the optima. The results show that the method greatly improves the prototypes representativeness while optimizing the estimated number of clusters.
机译:通常,在现实应用中获得的大多数数据集都是未标记的,需要对此类数据的样本进行分类或进行无监督学习的人工操作。聚类通常用于设计在对要标记的数据进行采样之前如何将数据分组在一起。大多数聚类算法通常假定聚类的数目是已知的,并且数据集中的给定实例仅属于一个聚类。 Fainet算法是一种受生物启发的模糊聚类算法,它可以找到模糊分区并动态估算聚类数量。文献的结果表明,给定正确的参数集,该算法的性能将优于文献中的大多数聚类方法。然而,为了获得这样的最佳集合,典型的用户应该首先获得所研究数据集的知识。这项工作提出了动态规则来微调动态设置的参数。所提出的方法的优点在于,参数不仅适应于数据集特征,而且适应于与最优解的接近程度。结果表明,该方法在优化估计簇数的同时,极大地提高了原型的代表性。

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