A Survey and an Empirical Evaluation of Multi-view Clustering Approaches
L Zhou, G Du, K Lü, L Wang, J Du - ACM Computing Surveys, 2024 - dl.acm.org
Multi-view clustering (MVC) holds a significant role in domains like machine learning, data
mining, and pattern recognition. Despite the development of numerous new MVC …
mining, and pattern recognition. Despite the development of numerous new MVC …
MvWECM: Multi-view Weighted Evidential C-Means clustering
K Zhou, Y Zhu, M Guo, M Jiang - Pattern Recognition, 2025 - Elsevier
Traditional multi-view clustering algorithms, designed to produce hard or fuzzy partitions,
often neglect the inherent ambiguity and uncertainty in the cluster assignment of objects …
often neglect the inherent ambiguity and uncertainty in the cluster assignment of objects …
Hypergraph Learning-Based Semi-Supervised Multi-View Spectral Clustering
G Yang, Q Li, Y Yun, Y Lei, J You - Electronics, 2023 - mdpi.com
Graph-based semi-supervised multi-view clustering has demonstrated promising
performance and gained significant attention due to its capability to handle sample spaces …
performance and gained significant attention due to its capability to handle sample spaces …
[HTML][HTML] Towards a unified framework for graph-based multi-view clustering
F Dornaika, S El Hajjar - Neural Networks, 2024 - Elsevier
Recently, clustering data collected from various sources has become a hot topic in real-
world applications. The most common methods for multi-view clustering can be divided into …
world applications. The most common methods for multi-view clustering can be divided into …
Two-step affinity matrix learning for multi-view subspace clustering
Multi-view subspace clustering aims to learn an appropriate affinity matrix to investigate the
relationship between data. However, the learned affinity matrix always has limited …
relationship between data. However, the learned affinity matrix always has limited …
Heterogeneous graph convolutional network for multi-view semi-supervised classification
This paper proposes a novel approach to semantic representation learning from multi-view
datasets, distinct from most existing methodologies which typically handle single-view data …
datasets, distinct from most existing methodologies which typically handle single-view data …
SPGMVC: Multiview Clustering via Partitioning the Signed Prototype Graph
G Yang, S Yang, Y Yang, X Chen… - … on Neural Networks …, 2024 - ieeexplore.ieee.org
Multiview clustering (MVC) has been widely studied in machine learning and data mining for
its capability of improving clustering performance by fusing the information from multiview …
its capability of improving clustering performance by fusing the information from multiview …
A Vertical Federated Multi-View Fuzzy Clustering Method for Incomplete Data
Y Li, X Hu, S Yu, W Ding, W Pedrycz… - IEEE Transactions on …, 2025 - ieeexplore.ieee.org
Multi-view fuzzy clustering (MVFC) has gained widespread adoption owing to its inherent
flexibility in handling ambiguous data. The proliferation of privatization devices has driven …
flexibility in handling ambiguous data. The proliferation of privatization devices has driven …
View-unaligned clustering with graph regularization
J Cao, W Dong, J Chen - Pattern Recognition, 2024 - Elsevier
In current multi-view clustering modeling scenarios, the cross-view correspondence of the
data is generally presumed in advance. However, this assumption is inevitably violated in …
data is generally presumed in advance. However, this assumption is inevitably violated in …
[HTML][HTML] Weighted Multiview K-Means Clustering with L2 Regularization
I Hussain, Y Nataliani, M Ali, A Hussain, HM Mujlid… - Symmetry, 2024 - mdpi.com
In the era of big data, cloud, internet of things, virtual communities, and interconnected
networks, the prominence of multiview data is undeniable. This type of data encapsulates …
networks, the prominence of multiview data is undeniable. This type of data encapsulates …