Lecture 26 - Clustering
Presented by Anthony D. Joseph
Content by Josh Hug
A reminder – the right column of the table below contains Quick Checks. These are not required but suggested to help you check your understanding.
Video | Quick Check | |
---|---|---|
26.1 Introduction to clustering. Examples of clustering in practice. |
26.1 | |
26.2 The K-Means clustering algorithm. Example of K-Means clustering. |
26.2 | |
26.3 Loss functions for K-Means. Inertia and distortion. Optimizing inertia. |
26.3 | |
26.4 Agglomerative clustering as an alternative to K-Means. Example of agglomerative clustering. Dendrograms and other clustering algorithms. |
26.4 | |
26.5 Picking the number of clusters. The elbow method and silhouette scores. Summary of clustering and machine learning. |
26.5 |