ACTIVE:Augmentation-Free Graph Contrastive Learning for Partial
Multi-View Clustering
- URL: http://arxiv.org/abs/2203.00186v1
- Date: Tue, 1 Mar 2022 02:32:25 GMT
- Title: ACTIVE:Augmentation-Free Graph Contrastive Learning for Partial
Multi-View Clustering
- Authors: Yiming Wang, Dongxia Chang, Zhiqiang Fu, Jie Wen, Yao Zhao
- Abstract summary: We propose an augmentation-free graph contrastive learning framework to solve the problem of partial multi-view clustering.
The proposed approach elevates instance-level contrastive learning and missing data inference to the cluster-level, effectively mitigating the impact of individual missing data on clustering.
- Score: 52.491074276133325
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In this paper, we propose an augmentation-free graph contrastive learning
framework, namely ACTIVE, to solve the problem of partial multi-view
clustering. Notably, we suppose that the representations of similar samples
(i.e., belonging to the same cluster) and their multiply views features should
be similar. This is distinct from the general unsupervised contrastive learning
that assumes an image and its augmentations share a similar representation.
Specifically, relation graphs are constructed using the nearest neighbours to
identify existing similar samples, then the constructed inter-instance relation
graphs are transferred to the missing views to build graphs on the
corresponding missing data. Subsequently, two main components, within-view
graph contrastive learning (WGC) and cross-view graph consistency learning
(CGC), are devised to maximize the mutual information of different views within
a cluster. The proposed approach elevates instance-level contrastive learning
and missing data inference to the cluster-level, effectively mitigating the
impact of individual missing data on clustering. Experiments on several
challenging datasets demonstrate the superiority of our proposed methods.
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