Summary
In this chapter, we introduced the k-means algorithm, which is based on the idea of defining (randomly or according to some criteria) k centroids that represent the clusters and optimize their position so that the sum of squared distances for every point in each cluster and the centroid is minimum. As the distance is a radial function, k-means assumes clusters to be convex and cannot solve problems where the shapes have deep concavities (like the half-moon problem). In order to solve such situations, we presented two alternatives. The first one is called DBSCAN and is a simple algorithm that analyzes the difference between points surrounded by other samples and boundary samples. In this way, it can easily determine high-density areas ...
Become an O’Reilly member and get unlimited access to this title plus top books and audiobooks from O’Reilly and nearly 200 top publishers, thousands of courses curated by job role, 150+ live events each month,
and much more.
Read now
Unlock full access