Takagi-Sugeno-Kang type collaborative fuzzy rule based system

Kuang-Pen Chou, M. Prasad, Yang-Yin Lin, Sudhanshu Joshi, Chin-Teng Lin, J. Chang
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引用次数: 10

Abstract

In this paper, a Takagi-Sugeno-Kang (TSK) type collaborative fuzzy rule based system is proposed with the help of knowledge learning ability of collaborative fuzzy clustering (CFC). The proposed method split a huge dataset into several small datasets and applying collaborative mechanism to interact each other and this process could be helpful to solve the big data issue. The proposed method applies the collective knowledge of CFC as input variables and the consequent part is a linear combination of the input variables. Through the intensive experimental tests on prediction problem, the performance of the proposed method is as higher as other methods. The proposed method only uses one half information of given dataset for training process and provide an accurate modeling platform while other methods use whole information of given dataset for training.
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Takagi-Sugeno-Kang型协同模糊规则系统
本文利用协同模糊聚类(CFC)的知识学习能力,提出了一种基于TSK (Takagi-Sugeno-Kang)型的协同模糊规则系统。该方法将一个庞大的数据集分割成多个小数据集,并应用协作机制进行交互,有助于解决大数据问题。该方法将CFC的集体知识作为输入变量,结果部分是输入变量的线性组合。通过对预测问题的大量实验测试,该方法的性能与其他方法一样高。该方法仅使用给定数据集的一半信息进行训练,为训练过程提供了准确的建模平台,而其他方法则使用给定数据集的全部信息进行训练。
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