ABSTRACT

Often considered more as an art than a science, the field of clustering has been dominated by learning through examples and by techniques chosen almost through trial-and-error. Even the most popular clustering methods--K-Means for partitioning the data set and Ward's method for hierarchical clustering--have lacked the theoretical attention that wou

chapter 1|36 pages

What Is Clustering

chapter 2|38 pages

What is Data

chapter 3|36 pages

K-Means Clustering

chapter 4|25 pages

Ward Hierarchical Clustering

chapter 5|39 pages

Data Recovery Models

chapter 6|70 pages

Different Clustering Approaches

chapter 7|37 pages

General Issues