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A Weighted K-means Algorithm Based on Differential Evolution

机译:基于差分进化的加权K均值算法

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摘要

The k-means algorithm is constrained by the initial clustering centers and abnormal data, and unstable clustering results are easy to occur. In order to solve this problem, this dissertation firstly analyzes the research status of the differential evolution algorithm, introduces the basic idea and advantages of the differential evolution algorithm, proposes a weighted evolution algorithm based on differential evolution, adopts the differential evolution algorithm with strong global search ability, Initial clustering centers. According to the different influence degree of samples on clustering analysis, weights are introduced to design a weighted Euclidean distance to reduce the adverse effects of uncertainties such as outliers and to obtain a stable clustering result The experimental results show that the initial clustering center selected by the algorithm is closer to the final clustering center, and the computational efficiency of the algorithm is improved while ensuring the clustering accuracy.
机译:k均值算法受初始聚类中心和异常数据的约束,并且容易出现不稳定的聚类结果。为了解决这个问题,本文首先分析了差分进化算法的研究现状,介绍了差分进化算法的基本思想和优点,提出了一种基于差分进化的加权进化算法,采用了具有较强全局性的差分进化算法。搜索能力,初始聚类中心。根据样本对聚类分析的影响程度不同,引入权重来设计加权欧式距离,以减少不确定性(如离群值)的不利影响并获得稳定的聚类结果。该算法更接近最终的聚类中心,在保证聚类精度的同时,提高了算法的计算效率。

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