Rough Sets for Explainability of Spectral Graph Clustering
By: Bartłomiej Starosta , Sławomir T. Wierzchoń , Piotr Borkowski and more
Graph Spectral Clustering methods (GSC) allow representing clusters of diverse shapes, densities, etc. However, the results of such algorithms, when applied e.g. to text documents, are hard to explain to the user, especially due to embedding in the spectral space which has no obvious relation to document contents. Furthermore, the presence of documents without clear content meaning and the stochastic nature of the clustering algorithms deteriorate explainability. This paper proposes an enhancement to the explanation methodology, proposed in an earlier research of our team. It allows us to overcome the latter problems by taking inspiration from rough set theory.
Similar Papers
Explainable Graph Spectral Clustering For Text Embeddings
Machine Learning (CS)
Helps computers understand text better with new methods.
An Improved and Generalised Analysis for Spectral Clustering
Machine Learning (CS)
Finds hidden groups in connected information.
SpEx: A Spectral Approach to Explainable Clustering
Machine Learning (CS)
Explains how groups of data are formed.