klotz: clustering*

0 bookmark(s) - Sort by: Date ↓ / Title / - Bookmarks from other users for this tag

  1. Unlock advanced customer segmentation techniques using LLMs, and improve your clustering models with advanced techniques
  2. Elbow curve and Silhouette plots both are very useful techniques for finding the optimal K for K-means clustering
  3. Comparing Clustering Algorithms
    Following table will give a comparison (based on parameters, scalability and metric) of the clustering algorithms in scikit-learn.

    Sr.No Algorithm Name Parameters Scalability Metric Used
    1 K-Means No. of clusters Very large n_samples The distance between points.
    2 Affinity Propagation Damping It’s not scalable with n_samples Graph Distance
    3 Mean-Shift Bandwidth It’s not scalable with n_samples. The distance between points.
    4 Spectral Clustering No.of clusters Medium level of scalability with n_samples. Small level of scalability with n_clusters. Graph Distance
    5 Hierarchical Clustering Distance threshold or No.of clusters Large n_samples Large n_clusters The distance between points.
    6 DBSCAN Size of neighborhood Very large n_samples and medium n_clusters. Nearest point distance
    7 OPTICS Minimum cluster membership Very large n_samples and large n_clusters. The distance between points.
    8 BIRCH Threshold, Branching factor Large n_samples Large n_clusters The Euclidean distance between points.
  4. 2021-10-24 Tags: , , , by klotz
  5. max_iter=200, exaggeration=4
  6. 2021-09-21 Tags: , , , by klotz

Top of the page

First / Previous / Next / Last / Page 2 of 0 SemanticScuttle - klotz.me: Tags: clustering

About - Propulsed by SemanticScuttle