How Good is the Euclidean Distance Metric for the Clustering Problem

Published: Jul 1, 2016
Abstract
Data Mining is concerned with the discovery of interesting patterns and knowledge in data repositories. Cluster Analysis which belongs to the core methods of data mining is the process of discovering homogeneous groups called clusters. Given a data-set and some measure of similarity between data objects, the goal in most clustering algorithms is maximizing both the homogeneity within each cluster and the heterogeneity between different clusters....
Paper Details
Title
How Good is the Euclidean Distance Metric for the Clustering Problem
Published Date
Jul 1, 2016
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