Pattern trees for regression and fuzzy systems modeling

Robin Senge, E. Hüllermeier
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引用次数: 18

Abstract

Fuzzy pattern tree induction has recently been introduced as a novel classification method in the context of machine learning. Roughly speaking, a pattern tree is a hierarchical, tree-like structure, whose inner nodes are marked with generalized (fuzzy) logical operators and whose leaf nodes are associated with fuzzy predicates on input attributes. In this paper, we adapt the method of pattern tree induction so as to make it applicable to another learning task, namely regression. Thus, instead of predicting one among a finite number of discrete class labels, we address the problem of predicting a real-valued target output. Apart from showing that fuzzy pattern trees are able to approximate real-valued functions in an accurate manner, we argue that such trees are also interesting from a modeling point of view. In fact, by describing a functional relationship between several input attributes and an output variable in an interpretable way, pattern trees constitute a viable alternative to classical fuzzy rule models. Compared to flat rule models, the hierarchical structure of patterns trees further allows for a more compact representation and for trading off accuracy against model simplicity in a seamless manner.
回归和模糊系统建模的模式树
模糊模式树归纳法作为一种新的分类方法近年来被引入到机器学习中。粗略地说,模式树是一种分层的树状结构,其内部节点用广义(模糊)逻辑运算符进行标记,其叶节点与输入属性上的模糊谓词相关联。在本文中,我们采用模式树归纳法,使其适用于另一种学习任务,即回归。因此,我们解决了预测实值目标输出的问题,而不是在有限数量的离散类标签中预测一个。除了表明模糊模式树能够以准确的方式近似实值函数外,我们认为从建模的角度来看,这种树也很有趣。事实上,通过以可解释的方式描述几个输入属性和一个输出变量之间的函数关系,模式树构成了经典模糊规则模型的可行替代方案。与平面规则模型相比,模式树的层次结构进一步支持更紧凑的表示,并以无缝的方式在准确性和模型简单性之间进行权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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