Generative Kernel Spectral Clustering
David Winant, Sonny Achten, Johan A. K. Suykens
2025-02-04Clustering
Abstract
Modern clustering approaches often trade interpretability for performance, particularly in deep learning-based methods. We present Generative Kernel Spectral Clustering (GenKSC), a novel model combining kernel spectral clustering with generative modeling to produce both well-defined clusters and interpretable representations. By augmenting weighted variance maximization with reconstruction and clustering losses, our model creates an explorable latent space where cluster characteristics can be visualized through traversals along cluster directions. Results on MNIST and FashionMNIST datasets demonstrate the model's ability to learn meaningful cluster representations.
Related Papers
Tri-Learn Graph Fusion Network for Attributed Graph Clustering2025-07-18Ranking Vectors Clustering: Theory and Applications2025-07-16Car Object Counting and Position Estimation via Extension of the CLIP-EBC Framework2025-07-11GNN-ViTCap: GNN-Enhanced Multiple Instance Learning with Vision Transformers for Whole Slide Image Classification and Captioning2025-07-09Consistency and Inconsistency in $K$-Means Clustering2025-07-08MC-INR: Efficient Encoding of Multivariate Scientific Simulation Data using Meta-Learning and Clustered Implicit Neural Representations2025-07-03Supercm: Revisiting Clustering for Semi-Supervised Learning2025-06-30Temporal Rate Reduction Clustering for Human Motion Segmentation2025-06-26