Parameter-free entropy-regularized multi-view clustering with hierarchical feature selection
Abstract
Multi-view clustering faces critical challenges in automatically discovering patterns across heterogeneous data while managing high-dimensional features and eliminating irrelevant information. Traditional approaches suffer from manual parameter tuning and lack principled cross-view integration mechanisms. This work introduces two complementary algorithms: AMVFCM-U and AAMVFCM-U, providing a unified parameter-free framework. Our approach replaces fuzzification parameters with entropy regularization terms that enforce adaptive cross-view consensus. The core innovation employs signal-to-noise ratio based regularization () for principled feature weighting with convergence guarantees, coupled with dual-level entropy terms that automatically balance view and feature contributions. AAMVFCM-U extends this with hierarchical dimensionality reduction operating at feature and view levels through adaptive thresholding (). Evaluation across five diverse benchmarks demonstrates superiority over 15 state-of-the-art methods. AAMVFCM-U achieves up to 97% computational efficiency gains, reduces dimensionality to 0.45% of original size, and automatically identifies critical view combinations for optimal pattern discovery.
Cite
@article{arxiv.2508.05504,
title = {Parameter-free entropy-regularized multi-view clustering with hierarchical feature selection},
author = {Kristina P. Sinaga and Sara Colantonio and Miin-Shen Yang},
journal= {arXiv preprint arXiv:2508.05504},
year = {2025}
}
Comments
81 pages, 10 figures, 17 tables