English

Minimum Description Length based Granular-Ball Tree Regularization for Spectral Clustering

Machine Learning 2026-05-22 v1

Abstract

Spectral clustering largely depends on the affinity graph, yet constructing a graph that preserves reliable local connectivity while adapting to heterogeneous data structures remains challenging. Existing granular-ball-based spectral clustering methods usually reduce graph complexity by using coarse-grained representatives. However, the learned local regions are often treated as graph nodes or anchors, and their structural information is not sufficiently used to regularize the original sample-level graph. To address this issue, this paper proposes a Minimum Description Length based Granular-Ball Tree-Regularized Spectral Clustering method, termed MDL-GBTRSC. The proposed method constructs a granular-ball tree through local MDL model selection, with reciprocal neighborhood continuity used to discourage splits that break reliable local connections. The stable leaf balls obtained from the tree provide coding-scale information for regularizing the sample-level affinity graph. In addition, a shared-neighbor bridge code is introduced to adjust weak local bridge relations without requiring an additional user-specified threshold. In this way, MDL-GBTRSC connects interpretable local representation learning with affinity graph construction in a unified spectral clustering framework. Experiments on real and synthetic datasets show that MDL-GBTRSC achieves the best average ARI and NMI under the adopted fixed-configuration protocol compared with classical spectral clustering baselines and representative granular-ball, micro-cluster, and anchor-based methods.

Keywords

Cite

@article{arxiv.2605.22410,
  title  = {Minimum Description Length based Granular-Ball Tree Regularization for Spectral Clustering},
  author = {Zeqiang Xian and Caihui Liu and Yong Zhang and Wenjing Qiu},
  journal= {arXiv preprint arXiv:2605.22410},
  year   = {2026}
}

Comments

28 pages, 5 figures, 6 tables