An information theoretic similarity-based learning method for databases

Changhwan Lee
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引用次数: 3

Abstract

Similarity-based learning has been widely and successfully used in some domains. Despite these successes, most similarity measures used in the current literature are defined on limited feature types. Therefore, these similarity measures cannot be applied to the database environment due to the variety of data types that exist. In this paper, we propose a new method of similarity-based learning for databases using information theory. The current similarity measures are improved in several ways. Similarity is defined on every attribute type in the database, and each attribute is assigned a weight depending on its importance with respect to the target attribute. Besides, our nearest neighbor algorithm gives different weights to the selected instances. Our system is implemented and tested on some typical machine learning databases. Our experiments show that the classification accuracy of our system is, in general, superior to that of other learning methods.<>
基于信息理论的数据库相似度学习方法
基于相似度的学习在一些领域得到了广泛而成功的应用。尽管取得了这些成功,但目前文献中使用的大多数相似性度量都是在有限的特征类型上定义的。因此,由于存在各种各样的数据类型,这些相似性度量不能应用于数据库环境。本文提出了一种基于信息理论的数据库相似度学习方法。目前的相似性度量在几个方面得到了改进。在数据库中的每种属性类型上定义相似性,并根据其相对于目标属性的重要性为每个属性分配权重。此外,我们的最近邻算法对选择的实例赋予不同的权重。我们的系统在一些典型的机器学习数据库上进行了实现和测试。实验表明,该系统的分类准确率总体上优于其他学习方法
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