July 2017
Intermediate to advanced
254 pages
6h 29m
English
Recall from Chapter 1, The Fundamentals of Machine Learning that the goal of unsupervised learning is to discover hidden structures or patterns in unlabeled training data. Clustering, or cluster analysis, is the task of grouping observations so that members of the same group, or cluster, are more similar to each other by some metric than they are to members of other clusters. As with supervised learning, we will represent an observation as an n-dimensional vector.
For example, assume that your training data consists of the samples plotted in the following figure:

Clustering might produce the following two groups, indicated by squares ...
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