首页> 外文会议>International Workshop on Fuzzy Logic and Applications(WILF 2007); 20070707-10; Camogli(IT) >Fuzzy Clustering for the Identification of Hinging Hyperplanes Based Regression Trees
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Fuzzy Clustering for the Identification of Hinging Hyperplanes Based Regression Trees

机译:基于聚类的基于超树的回归树的模糊聚类

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This article deals with the identification of hinging hyperplane models. This type of non-linear black-box models is relatively new, and its identification is not thoroughly examined and discussed so far. They can be an alternative to artificial neural nets but there is a clear need for an effective identification method. This paper presents a new identification technique for that purpose based on a fuzzy clustering technique called Fuzzy c-Regression Clustering. To use this clustering procedure for the identification of hinging hyperplanes there is a need to handle restrictions about the relative location of the hyperplanes: they should intersect each other in the operating regime covered by the data points. The proposed method recursively identifies a hinging hyperplane model that contains two linear submodels by partitioning of the operating region of one local linear model resuling in a binary regression tree. Hence, this paper proposes a new algorithm for the identification of tree structured piecewise linear models, where the branches correspond to linear division of the operating regime based on the intersection of two local linear models. The effectiveness of the proposed model is demonstrated by a dynamic model identification example.
机译:本文讨论了铰接超平面模型的识别。这种类型的非线性黑匣子模型相对较新,到目前为止,对它的识别还没有进行彻底的检查和讨论。它们可以替代人工神经网络,但是显然需要一种有效的识别方法。本文提出了一种基于模糊聚类技术的新识别技术,称为模糊c回归聚类。为了使用该聚类过程来识别铰接超平面,需要处理关于超平面的相对位置的限制:它们应该在数据点所覆盖的工作方式中彼此相交。所提出的方法通过对在二进制回归树中resul的一个局部线性模型的操作区域进行划分,来递归地识别包含两个线性子模型的铰链超平面模型。因此,本文提出了一种新的树状结构分段线性模型识别算法,该模型的分支对应于基于两个局部线性模型相交的工作状态的线性划分。动态模型识别示例证明了所提出模型的有效性。

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