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An approach to learn categorical distance based on attributes correlatio

机译:一种基于属性相关性的分类距离学习方法

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Measuring similarity or distance plays a key rolefor data mining and knowledge discovery tasks. A lot of work has been performed on continuous attributes, but for nominal attributes the similarity computation is not relatively well-understood. In this paper, we propose a novel approach to learn a family of dissimilarity measures for categorical data. Based on these measures distance between two different values of an attribute can be determined by using the certain number of attributes rather than all attributes at once. We evaluate our methods in unsupervised environment, Experiments with real data show that our dissimilarity estimation method improves the accuracy of K-Modes clustering algorithm.
机译:测量相似性或距离对于数据挖掘和知识发现任务起着关键作用。对于连续属性已经进行了很多工作,但是对于名义属性,相似度的计算还不是很容易理解。在本文中,我们提出了一种新颖的方法来学习分类数据的相异度量族。基于这些度量,可以通过使用一定数量的属性而不是一次使用所有属性来确定属性的两个不同值之间的距离。我们在无监督的环境中评估我们的方法,实际数据实验表明,我们的相异性估计方法提高了K-Modes聚类算法的准确性。

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