French Researchers Revolutionize Clustering Algorithms with Three Novel Approaches and Deep Learning Model
May 26, 2024
Researchers from IMT Atlantique and Orange Labs in France have introduced three novel approaches to enhance unsupervised clustering algorithms using labeled data.
The researchers involved are Colin Troisemaine, Alexandre Reiffers-Masson, Stephane Gosselin, Vincent Lemaire, and Sandrine Vaton.
The three approaches are named NCD K-means, NCD Spectral Clustering, and Projection-Based NCD.
These methods aim to optimize hyperparameters without prior knowledge of novel classes.
A simple deep NCD model has also been introduced that accurately estimates the number of novel classes in tabular data.
By adapting k-means and Spectral Clustering algorithms to leverage known class information, the study provides a robust method called PBN (Projection-Based NCD).
The PBN method addresses the challenges of NCD without making unrealistic assumptions.
The code for the proposed methods is available on GitHub for further exploration and insights.
Summary based on 6 sources