CVNov 3, 2022

Unified Multi-View Orthonormal Non-Negative Graph Based Clustering Framework

arXiv:2211.02883v2h-index: 102
AI Analysis

This work addresses a gap in clustering methods for multi-view data, offering a novel framework that could benefit researchers in unsupervised learning, though it appears incremental in combining existing properties.

The authors tackled the problem of spectral clustering by proposing a unified model that incorporates multi-view information and non-negative features, achieving improved clustering performance on three benchmark datasets.

Spectral clustering is an effective methodology for unsupervised learning. Most traditional spectral clustering algorithms involve a separate two-step procedure and apply the transformed new representations for the final clustering results. Recently, much progress has been made to utilize the non-negative feature property in real-world data and to jointly learn the representation and clustering results. However, to our knowledge, no previous work considers a unified model that incorporates the important multi-view information with those properties, which severely limits the performance of existing methods. In this paper, we formulate a novel clustering model, which exploits the non-negative feature property and, more importantly, incorporates the multi-view information into a unified joint learning framework: the unified multi-view orthonormal non-negative graph based clustering framework (Umv-ONGC). Then, we derive an effective three-stage iterative solution for the proposed model and provide analytic solutions for the three sub-problems from the three stages. We also explore, for the first time, the multi-model non-negative graph-based approach to clustering data based on deep features. Extensive experiments on three benchmark data sets demonstrate the effectiveness of the proposed method.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes