Self-supervised Discriminative Feature Learning for Multi-view
Clustering
- URL: http://arxiv.org/abs/2103.15069v1
- Date: Sun, 28 Mar 2021 07:18:39 GMT
- Title: Self-supervised Discriminative Feature Learning for Multi-view
Clustering
- Authors: Jie Xu, Yazhou Ren, Huayi Tang, Zhimeng Yang, Lili Pan, Yang Yang,
Xiaorong Pu
- Abstract summary: We propose self-supervised discriminative feature learning for multi-view clustering (SDMVC)
Concretely, deep autoencoders are applied to learn embedded features for each view independently.
Experiments on various types of multi-view datasets show that SDMVC achieves state-of-the-art performance.
- Score: 12.725701189049403
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-view clustering is an important research topic due to its capability to
utilize complementary information from multiple views. However, there are few
methods to consider the negative impact caused by certain views with unclear
clustering structures, resulting in poor multi-view clustering performance. To
address this drawback, we propose self-supervised discriminative feature
learning for multi-view clustering (SDMVC). Concretely, deep autoencoders are
applied to learn embedded features for each view independently. To leverage the
multi-view complementary information, we concatenate all views' embedded
features to form the global features, which can overcome the negative impact of
some views' unclear clustering structures. In a self-supervised manner,
pseudo-labels are obtained to build a unified target distribution to perform
multi-view discriminative feature learning. During this process, global
discriminative information can be mined to supervise all views to learn more
discriminative features, which in turn are used to update the target
distribution. Besides, this unified target distribution can make SDMVC learn
consistent cluster assignments, which accomplishes the clustering consistency
of multiple views while preserving their features' diversity. Experiments on
various types of multi-view datasets show that SDMVC achieves state-of-the-art
performance.
Related papers
- Discriminative Anchor Learning for Efficient Multi-view Clustering [59.11406089896875]
We propose discriminative anchor learning for multi-view clustering (DALMC)
We learn discriminative view-specific feature representations according to the original dataset.
We build anchors from different views based on these representations, which increase the quality of the shared anchor graph.
arXiv Detail & Related papers (2024-09-25T13:11:17Z) - CDIMC-net: Cognitive Deep Incomplete Multi-view Clustering Network [53.72046586512026]
We propose a novel incomplete multi-view clustering network, called Cognitive Deep Incomplete Multi-view Clustering Network (CDIMC-net)
It captures the high-level features and local structure of each view by incorporating the view-specific deep encoders and graph embedding strategy into a framework.
Based on the human cognition, i.e., learning from easy to hard, it introduces a self-paced strategy to select the most confident samples for model training.
arXiv Detail & Related papers (2024-03-28T15:45:03Z) - Towards Generalized Multi-stage Clustering: Multi-view Self-distillation [10.368796552760571]
Existing multi-stage clustering methods independently learn the salient features from multiple views and then perform the clustering task.
This paper proposes a novel multi-stage deep MVC framework where multi-view self-distillation (DistilMVC) is introduced to distill dark knowledge of label distribution.
arXiv Detail & Related papers (2023-10-29T03:35:34Z) - GCFAgg: Global and Cross-view Feature Aggregation for Multi-view
Clustering [45.530950521907265]
Multi-view clustering can partition data samples into their categories by learning a consensus representation in unsupervised way.
We propose a novel multi-view clustering network to address these problems, called Global and Cross-view Feature aggregation for Multi-View Clustering (GggMVC)
We show that the proposed method achieves excellent performance in both complete multi-view data clustering tasks and incomplete multi-view data clustering tasks.
arXiv Detail & Related papers (2023-05-11T13:41:13Z) - Deep Multiview Clustering by Contrasting Cluster Assignments [14.767319805995543]
Multiview clustering aims to reveal the underlying structure of multiview data by categorizing data samples into clusters.
We propose a cross-view contrastive learning (C) method that learns view-invariant representations and produces clustering results by contrasting the cluster assignments among multiple views.
arXiv Detail & Related papers (2023-04-21T06:35:54Z) - Reliable Representations Learning for Incomplete Multi-View Partial Multi-Label Classification [78.15629210659516]
In this paper, we propose an incomplete multi-view partial multi-label classification network named RANK.
We break through the view-level weights inherent in existing methods and propose a quality-aware sub-network to dynamically assign quality scores to each view of each sample.
Our model is not only able to handle complete multi-view multi-label datasets, but also works on datasets with missing instances and labels.
arXiv Detail & Related papers (2023-03-30T03:09:25Z) - Multi-view Semantic Consistency based Information Bottleneck for
Clustering [13.589996737740208]
We introduce a novel Multi-view Semantic Consistency based Information Bottleneck for clustering (MSCIB)
MSCIB pursues semantic consistency to improve the learning process of information bottleneck for different views.
It conducts the alignment operation of multiple views in the semantic space and jointly achieves the valuable consistent information of multi-view data.
arXiv Detail & Related papers (2023-02-28T02:01:58Z) - Error-Robust Multi-View Clustering: Progress, Challenges and
Opportunities [67.54503077766171]
Since label information is often expensive to acquire, multi-view clustering has gained growing interest.
Error-robust multi-view clustering approaches with explicit error removal formulation can be structured into five broad research categories.
This survey summarizes and reviews recent advances in error-robust clustering for multi-view data.
arXiv Detail & Related papers (2021-05-07T04:03:02Z) - Unsupervised Person Re-Identification with Multi-Label Learning Guided
Self-Paced Clustering [48.31017226618255]
Unsupervised person re-identification (Re-ID) has drawn increasing research attention recently.
In this paper, we address the unsupervised person Re-ID with a conceptually novel yet simple framework, termed as Multi-label Learning guided self-paced Clustering (MLC)
MLC mainly learns discriminative features with three crucial modules, namely a multi-scale network, a multi-label learning module, and a self-paced clustering module.
arXiv Detail & Related papers (2021-03-08T07:30:13Z) - Joint Featurewise Weighting and Lobal Structure Learning for Multi-view
Subspace Clustering [3.093890460224435]
Multi-view clustering integrates multiple feature sets, which reveal distinct aspects of the data and provide complementary information to each other.
Most existing multi-view clustering methods only aim to explore the consistency of all views while ignoring the local structure of each view.
We propose a novel multi-view subspace clustering method via simultaneously assigning weights for different features and capturing local information of data in view-specific self-representation feature spaces.
arXiv Detail & Related papers (2020-07-25T01:57:57Z) - Generative Partial Multi-View Clustering [133.36721417531734]
We propose a generative partial multi-view clustering model, named as GP-MVC, to address the incomplete multi-view problem.
First, multi-view encoder networks are trained to learn common low-dimensional representations, followed by a clustering layer to capture the consistent cluster structure across multiple views.
Second, view-specific generative adversarial networks are developed to generate the missing data of one view conditioning on the shared representation given by other views.
arXiv Detail & Related papers (2020-03-29T17:48:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.