UOMvSC
Unified One-step Multi-view Spectral Clustering (IEEE TKDE 2022)
Install / Use
/learn @guanyuezhen/UOMvSCREADME
<p align=center>Unified One-step Multi-view Spectral Clustering (IEEE TKDE 2022)</p>
Authors: Chang Tang, Zhenglai Li (co-first author), Jun Wang, Xinwang Liu, Wei Zhang, En Zhu
This repository contains simple Matlab implementation of our paper UOMvSC.
1. Features
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Joint exploring the information of graphs and embedding matrices. Under the observation that the inner product of the embedding matrix is a low-rank approximation of the graph, we combine graphs and embedding matrices of different views to obtain a unified graph.
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Simple but effective one-step clustering manner. We directly capture the discrete clustering indicator matrix from the unified graph with an effective optimization algorithm.
2. Usage
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Prepare the data:
- Partial datasets used in our paper can be downloaded from BaiduYun(s3u3).
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Prerequisites for Matlab:
- Test on Matlab R2018a
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Conduct clustering
3. Citation
Please cite our paper if you find the work useful:
@article{Li_2022_UOMvSC,
author={Tang, Chang and Li, Zhenglai and Wang, Jun and Liu, Xinwang and Zhang, Wei and Zhu, En},
journal={IEEE Transactions on Knowledge and Data Engineering},
title={Unified One-step Multi-view Spectral Clustering},
year={2022},
volume={},
number={},
pages={1-1},
doi={10.1109/TKDE.2022.3172687}
}
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