A Survey of Distance Metrics in Clustering Data Mining Techniques

Marina Adriana Mercioni, S. Holban
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引用次数: 8

Abstract

Lately, due to the increasing size of databases, several aspects have been studied in detail, such as grouping, searching for the closest neighbor and other identification methods. It has been found that in the multidimensional space, the concept of distance does not offer high performance. In this paper, we study the effect of different types of distances on the group to see the similarities between objects. Among these distances we mention two distances: the Euclidean distance and Manhattan distance, implemented in a system developed to identify the architectural styles of the buildings. The aim of this paper is using cluster analysis to identify distance metrics impact in detection of architectural styles using Data Mining techniques.
聚类数据挖掘技术中距离度量研究综述
近年来,由于数据库的规模越来越大,人们对分组、搜索最近邻等识别方法进行了详细的研究。研究发现,在多维空间中,距离的概念并不能提供高性能。在本文中,我们研究了不同类型的距离对群体的影响,以查看对象之间的相似性。在这些距离中,我们提到了两个距离:欧几里得距离和曼哈顿距离,这两个距离是在一个系统中实现的,用于识别建筑物的建筑风格。本文的目的是使用聚类分析来识别距离度量对使用数据挖掘技术检测建筑风格的影响。
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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