Learn Before
Relation
Advantages of K-means clustering
- Relatively simple to implement
- Scales to large data sets
- Guarantees convergence
- Can warm-start the positions of centroids
- Easily adapts to new examples
- Generalizes to clusters of different shapes and sizes, such as elliptical clusters
- The principle is relatively simple, the implementation is also very easy, and the convergence speed is fast.
- The clustering effect is better.
- The interpretability of the algorithm is strong.
- The main parameter to be adjusted is only the number of clusters K.
0
1
Updated 2021-10-23
Tags
Data Science
Related
How might K-means be used in conjunction with supervised methods to predict on an unlabeled data set?
Medium: Difference between K-Means and KNN
Math/Python Explanation: Difference Between K-Means and KNN
Algorithm of K-means Clustering
Image of K-Means Clustering Process
Limitations of K-means clustering
Advantages of K-means clustering
Picking optimal k value
The Elbow Method for Selecting Optimal K
Hands-On Machine Learning with R: Chapter 20 K-means Clustering