Cluster Analysis: Basic Concepts and Algorithms
work in graph partitioning and in image and market segmentation is related to cluster analysis. 8.1.2 Different Types of Clusterings An entire collection of clusters is commonly referred to as a clustering, and in this section, we distinguish various types of clusterings: hierarchical (nested)
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