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Augmentation of the reconstruction performance of Fuzzy C-Means with an optimized fuzzification factor vector

机译:用优化的模糊系数向量增强模糊C型的重建性能

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摘要

Information granules have been considered as the fundamental constructs of Granular Computing. As a useful unsupervised learning technique, Fuzzy C-Means (FCM) is one of the most frequently used methods to construct information granules. The FCM-based granulation-degranulation mechanism plays a pivotal role in Granular Computing. In this paper, to enhance the quality of the degranulation (reconstruction) process, we augment the FCM-based degranulation mechanism by introducing a vector of fuzzification factors (fuzzification factor vector) and setting up an adjustment mechanism to modify the prototypes and the partition matrix. The design is regarded as an optimization problem, which is guided by a reconstruction criterion. In the proposed scheme, the initial partition matrix and prototypes are generated by the FCM. Then a fuzzification factor vector is introduced to form an appropriate fuzzification factor for each cluster to build up an adjustment scheme of modifying the prototypes and the partition matrix. With the supervised learning mode of the granulation-degranulation process, we construct a composite objective function of the fuzzification factor vector, the prototypes and the partition matrix. Subsequently, the particle swarm optimization is employed to optimize the fuzzification factor vector to refine the prototypes and develop the optimal partition matrix. Finally, the reconstruction performance of the FCM algorithm is enhanced. Overall, we show that the enhanced version of the degranulation process is beneficial to reduce the deterioration of the reconstruction results and improve the performance of the mechanism of granulation-degranulation, which is also meaningful for transforming data between numeric form and granular format. We offer a thorough analysis of the developed scheme. In particular, we show that the classical FCM algorithm forms a special case of the proposed scheme. Experiments completed for both synthetic and publicly available datasets demonstrate that the proposed approach outperforms the generic data reconstruction approach. (C) 2021 Elsevier B.V. All rights reserved.
机译:信息颗粒被认为是粒度计算的基本构建。作为一种有用的无监督学习技术,模糊C-Means(FCM)是构建信息颗粒的最常用方法之一。基于FCM的造粒 - 脱粒机制在粒化计算中起着枢转作用。在本文中,为了提高劣化的质量(重建)过程,我们通过引入模糊因子(模糊变量系数向量)的向量来增强基于FCC的劣化机制,并建立调整机制来修改原型和分区矩阵。该设计被视为优化问题,由重建标准引导。在所提出的方案中,初始分区矩阵和原型由FCM生成。然后引入模糊系数向量以形成每个群集的适当的模糊系,以建立修改原型和分区矩阵的调整方案。利用造粒造成造粒过程的监督学习模式,我们构造了模糊系矢量,原型和分区矩阵的复合目标函数。随后,采用粒子群优化来优化模糊性因子向量以改进原型并开发最佳分区矩阵。最后,增强了FCM算法的重建性能。总体而言,我们表明,脱粒过程的增强版本有利于降低重建结果的恶化,提高肉芽调节机制的性能,这对于转换数字形式和粒度之间的数据也是有意义的。我们对开发方案进行了彻底的分析。特别是,我们表明经典FCM算法形成所提出的方案的特殊情况。综合和公共数据集完成的实验表明,所提出的方法优于通用数据重建方法。 (c)2021 elestvier b.v.保留所有权利。

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