Selecting distinctive attributes for concept learning

A. Dengel, F. Dubiel
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Abstract

This paper presents an innovative approach for learning the distinctive attributes of uncertain objects. The proposed system takes instances, clusters them into different concepts and consequently induces a hierarchy which is used for later classification. We introduce the major steps of the approach using a set of city attributes and further illustrate the applicability for a real world problem, namely the learning of structural concepts of business letters.
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选择独特的属性进行概念学习
本文提出了一种学习不确定对象特征属性的创新方法。提出的系统采用实例,将它们聚类到不同的概念中,从而归纳出一个层次结构,用于以后的分类。我们使用一组城市属性介绍了该方法的主要步骤,并进一步说明了该方法对现实世界问题的适用性,即学习商业信函的结构概念。
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