基于粗糙集的离群模糊建模

Chih-Ching Hsiao
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引用次数: 3

摘要

对于高度非线性或未知的系统,兴趣在于数据驱动的方法来获得系统模型。基于模糊规则的建模具有良好的近似性和一定的检测能力,是一种合适的建模工具。粗糙集理论是处理不精确、不完整或不确定信息系统的成功方法。模糊集和粗糙集理论被证明特别适合分析各种类型的数据,特别是当处理不精确、不确定或模糊的知识时。在本文中,我们提出了一种新的算法,称为基于粗糙的模糊c回归模型(RFCRM),该算法以模糊回归的方式定义模糊子空间,并将粗糙集理论用于TSK建模,具有对异常值的鲁棒性。
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A Rough-set-based for fuzzy modeling with outlier
For high nonlinearly or unknown systems, the interest is toward data-driven methods for obtaining the system model. Fuzzy-rule-based modeling is a suitable tool that combines good approximation properties with a certain degree of inspects ability. The rough set theory is successes to deal with imprecise, incomplete or uncertain for information system. Fuzzy set and the rough set theories turned out to be particularly adequate for the analysis of various types of data, especially, when dealing with inexact, uncertain or vague knowledge. In this paper, we propose an novel algorithm, which termed as rough-based fuzzy C-regression model (RFCRM), that define fuzzy subspaces in a fuzzy regression manner and also include rough-set theory for TSK modeling with robust capability against outliers.
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