Skip to content

collections for advanced, novel multi-view clustering methods(papers , codes and datasets)

Notifications You must be signed in to change notification settings

obananas/awesome-multi-view-clustering

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

81 Commits
 
 

Repository files navigation

awesome multi-view clustering

Collections for state-of-the-art (SOTA), novel multi-view clustering methods (papers, codes and datasets)

We are looking forward for other participants to share their papers and codes. If interested, please contanct [email protected].

Table of Contents


Important Survey Papers

  1. A survey on multi-view learning Paper

  2. A study of graph-based system for multi-view clustering Paper code

  3. Multi-view clustering: A survey Paper

  4. Multi-view learning overview: Recent progress and new challenges Paper


Papers

Papers are listed in the following methods:graph clustering, NMF-based clustering, co-regularized, subspace clustering and multi-kernel clustering

Graph Clusteirng

  1. AAAI15: Large-Scale Multi-View Spectral Clustering via Bipartite Graph Paper code

  2. IJCAI17: Self-Weighted Multiview Clustering with Multiple Graphs" Paper code

  3. TKDE2018: One-step multi-view spectral clustering Paper code

  4. TKDE19: GMC: Graph-based Multi-view Clustering Paper code

  5. ICDM2019: Consistency Meets Inconsistency: A Unified Graph Learning Framework for Multi-view Clustering Paper code

  6. TMM 2021: Consensus Graph Learning for Multi-view Clustering code

Multiple Kernel Clustering(MKC)

  1. NIPS14: Localized Data Fusion for Kernel k-Means Clustering with Application to Cancer Biology Paper code

  2. IJCAI15: Robust Multiple Kernel K-means using L21-norm Paper code

  3. AAAI16:Multiple Kernel k-Means Clustering with Matrix-Induced Regularization Paper code

  4. IJCAI19: Multi-view Clustering with Late Fusion Alignment Maximization Paper code

  5. TNNLS2019: Multiple kernel clustering with neighbor-kernel subspace segmentation Paper code

Subspace Clustering

  1. CVPR2015 Diversity-induced Multi-view Subspace Clustering Paper code

  2. CVPR2017 Latent Multi-view Subspace Clustering Paper code

  3. AAAI2018 Consistent and Specific Multi-view Subspace Clustering Paper code

  4. PR2018: Multi-view Low-rank Sparse Subspace Clustering Paper code

  5. TIP2019: Split Multiplicative Multi-view Subspace Clustering Paper code

  6. IJCAI19: Flexible multi-view representation learning for subspace clustering Paper code

  7. ICCV19: Reciprocal Multi-Layer Subspace Learning for Multi-View Clustering Paper code

Deep Multi-view Clustering

  1. CVPR2019: AE^2-Nets: Autoencoder in Autoencoder Networks Paper code

  2. TIP2019: Multi-view Deep Subspace Clustering Networks Paper code

  3. TKDE2020: Joint Deep Multi-View Learning for Image Clustering Paper

  4. ICML2019: COMIC: Multi-view Clustering Without Parameter Selection paper code

  5. IJCAI2019: Multi-view Spectral Clustering Network paper code

  6. IJCAI2019: Deep Adversarial Multi-view Clustering Network paper code

  7. KBS2021:Multi-view clustering via deep concept factorization code

Binary Multi-view Clustering

  1. TPAMI2019: Binary Multi-View Clustering Paper code

NMF-based Multi-view Clustering

  1. AAAI20: Multi-view Clustering in Latent Embedding Space Paper code

Ensemble-based Multi-view Clustering

  1. TNNLS2019: Marginalized Multiview Ensemble Clustering Paper code

Scalable Multi-view Clustering

  1. TPAMI 2021: Multi-view Clustering: A Scalable and Parameter-free Bipartite Graph Fusion Method Paper code

  2. AAAI20: arge-scale Multi-view Subspace Clustering in Linear Time paper code

  3. ACM MM2021: Scalable Multi-view Subspace Clustering with Unified Anchors paper code

Evolutionary Multi-view Clustering

  1. Applied Soft Computing 2021: An Evolutionary Many-objective Approach to Multiview Clustering Using Feature and Relational Data Paper code

Benchmark Datasets

Oringinal Datasets

  1. It contains seven widely-used multi-view datasets: Handwritten (HW), Caltech-7/20, BBCsports, Nuswide, ORL and Webkb. Released by Baidu Service. address (code)gaih
Name of dataset Samples Views Clusters Original location
Handwritten 2000 6 10
Caltech-7 1474 6 7 http://www.vision.caltech.edu/Image_Datasets/Caltech101/
Caltech-20 2386 6 20 http://www.vision.caltech.edu/Image_Datasets/Caltech101/
BBCsports 3183 2 5 http://mlg.ucd.ie/datasets/segment.html
Nuswide 30000 5 31 https://lms.comp.nus.edu.sg/wp-content/uploads/2019/research/nuswide/NUS-WIDE.html
ORL 400 3 40 http://www.uk.research.att.com/facedatabase.html
Webkb 1051 2 2 http://www.cs.cmu.edu/afs/cs/project/theo-11/www/wwkb/ http://membres-lig.imag.fr/grimal/data.html
Cornell 165 2 15 http://membres-lig.imag.fr/grimal/data.html
MSRC-v1 210 6 7 https://www.microsoft.com/en-us/research/project/image-understanding/?from=http%3A%2F%2Fresearch.microsoft.com%2Fen-us%2Fprojects%2Fobjectclassrecognition%2F
Wikipedia 693 2 10 http://www.svcl.ucsd.edu/projects/crossmodal/
BBCsport 116 4 5 http://mlg.ucd.ie/datasets/segment.html http://mlg.ucd.ie/datasets/bbc.html
yaleA 165 3 15 http://www.cad.zju.edu.cn/home/dengcai/Data/FaceData.html
mfeat 2000 6 10 http://archive.ics.uci.edu/ml/datasets/Multiple+Features
aloi 110250 8 1000 http://elki.dbs.ifi.lmu.de/wiki/DataSets/MultiView

Kernelized Datasets

  1. The following kernelized datasets are created by our team. For more information, you can ask [email protected] for help. address (code)y44e

If you use our code or datasets, please cite our with the following bibtex code :

@inproceedings{wang2019multi,
  title={Multi-view clustering via late fusion alignment maximization},
  author={Wang, Siwei and Liu, Xinwang and Zhu, En and Tang, Chang and Liu, Jiyuan and Hu, Jingtao and Xia, Jingyuan and Yin, Jianping},
  booktitle={Proceedings of the 28th International Joint Conference on Artificial Intelligence},
  pages={3778--3784},
  year={2019},
  organization={AAAI Press}
}

About

collections for advanced, novel multi-view clustering methods(papers , codes and datasets)

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published