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密度敏感模糊核最大熵聚类算法EI北大核心CSCD
引用本文:李烨桐,郭洁,祁霖,刘璇,阮鹏宇,陶新民.密度敏感模糊核最大熵聚类算法EI北大核心CSCD[J].控制理论与应用,2022,39(1):67-82.
作者姓名:李烨桐  郭洁  祁霖  刘璇  阮鹏宇  陶新民
作者单位:东北林业大学工程技术学院,黑龙江哈尔滨150040
基金项目:国家自然科学基金项目(62176050), 中央高校基本科研业务费专项资金项目(2572017EB02), 东北林业大学双一流科研启动基金项目(411112438), 哈尔滨市科技局创新人才基金项目(2017RAXXJ018), 东北林业大学大学生创新创业训练计划项目(202010225188)资助.
摘    要:提出一种密度敏感模糊核最大熵聚类算法.该算法首先通过核函数将原始非线性非高斯的数据集转化为核空间数据集,然后利用核函数的相似性抵消不属于该聚类的样本数据在聚类过程中对聚类中心求解的干扰,消除正则化系数对聚类结果的影响,进而抑制传统最大熵聚类算法的趋同性.最后通过引入相对密度项,解决因样本数据在特征空间的分布差异而导致的聚类中心求解偏差问题,从而提高聚类结果的准确性.实验部分,本文讨论了算法参数间的关系以及对聚类结果的影响.通过与传统模糊C均值聚类算法、核模糊C均值聚类算法、最大熵聚类算法、最大熵规范化权重核模糊C均值聚类算法以及其他两种改进最大熵聚类算法的聚类结果进行对比分析,结果表明本文提出的密度敏感模糊核最大熵聚类算法的聚类性能明显优于其他算法.

关 键 词:聚类  相对密度  最大熵聚类算法  鲁棒性
收稿时间:2021/2/26 0:00:00
修稿时间:2021/4/26 0:00:00

Density-sensitive fuzzy kernel maximum entropy clustering algorithm
LI Ye-tong,GUO Jie,QI Lin,LIU Xuan,RUAN Peng-yu and TAO Xin-min.Density-sensitive fuzzy kernel maximum entropy clustering algorithm[J].Control Theory & Applications,2022,39(1):67-82.
Authors:LI Ye-tong  GUO Jie  QI Lin  LIU Xuan  RUAN Peng-yu and TAO Xin-min
Affiliation:College of Engineering and Technology, University of Northeast Forestry,College of Engineering and Technology, University of Northeast Forestry,College of Engineering and Technology, University of Northeast Forestry,College of Engineering and Technology, University of Northeast Forestry,College of Engineering and Technology, University of Northeast Forestry,College of Engineering and Technology, University of Northeast Forestry
Abstract:In order to solve the clustering problem of nonlinear non-Gaussian datasets, a density-sensitive fuzzy kernel maximum entropy clustering algorithm is proposed. The algorithm firstly transforms the nonlinear non-Gaussian dataset into kernel-space dataset through a kernel function, and then uses the similarity of the kernel function to cancel the interference of sample data which do not belong to the clustering on the solution of the clustering center in the clustering process. This may be helpful to eliminate the influence of the regularization coefficient on the clustering result, and further inhibit the convergence of the traditional clustering algorithm. Finally, the relative density term is introduced to solve the deviation problem of clustering center solution caused by the difference of sample data distribution in feature space, thus improving the accuracy of clustering results. In the experimental part, the relationship between the algorithm parameters and the influence on the clustering results are discussed. By comparing the clustering results with the fuzzy C-means clustering algorithm, the kernel fuzzy C-means clustering algorithm, the maximum entropy clustering algorithm, the maximum entropy normalized weight kernel fuzzy C-means clustering algorithm, and other two modified maximum entropy clustering algorithms, the clustering performance of the density sensitive fuzzy maximum entropy clustering algorithm proposed in this paper is obviously better than other algorithms.
Keywords:clustering  relative density  maximum entropy clustering algorithm  robustness
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