In recent years, the problem of fuzzy clustering has been widely concerned. The membership iteration of existing methods is mostly considered globally, which has considerable problems in noisy environments, and iterative calculations for clusters with a large number of different sample sizes are not accurate and efficient. In this paper, starting from the strategy of large-scale priority, the data is fuzzy iterated using granular-balls, and the membership degree of data only considers the two granular-balls where it is located, thus improving the efficiency of iteration. The formed fuzzy granular-balls set can use more processing methods in the face of different data scenarios, which enhances the practicability of fuzzy clustering calculations.
翻译:近年来,模糊的集群问题一直受到广泛关注,现有方法的成员迭代问题大多被全球考虑,在吵闹的环境中存在相当大的问题,对不同样本大小众多的集群的迭代计算并不准确、效率不高。 在本文中,从大规模优先战略开始,数据使用颗粒弹进行模糊的迭代,而数据的成员程度仅考虑其所在的两种颗粒球,从而提高了迭代效率。 形成模糊的颗粒球集可以在面对不同数据情景时使用更多的处理方法,这增强了模糊组合计算的可行性。</s>