Semantic Spectral Clustering with Contrastive Learning and Neighbor Mining

被引:0
作者
Nongxiao Wang
Xulun Ye
Jieyu Zhao
Qing Wang
机构
[1] Ningbo University,Department of Computer Science and Technology
[2] Key Lab of Mobile Network Application Technology of Zhejiang Province,undefined
来源
Neural Processing Letters | / 56卷
关键词
Contrastive learning; Spectral clustering; Deep clustering; Unsupervised learning;
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摘要
Deep spectral clustering techniques are considered one of the most efficient clustering algorithms in data mining field. The similarity between instances and the disparity among classes are two critical factors in clustering fields. However, most current deep spectral clustering approaches do not sufficiently take them both into consideration. To tackle the above issue, we propose Semantic Spectral clustering with Contrastive learning and Neighbor mining (SSCN) framework, which performs instance-level pulling and cluster-level pushing cooperatively. Specifically, we obtain the semantic feature embedding using an unsupervised contrastive learning model. Next, we obtain the nearest neighbors partially and globally, and the neighbors along with data augmentation information enhance their effectiveness collaboratively on the instance level as well as the cluster level. The spectral constraint is applied by orthogonal layers to satisfy conventional spectral clustering. Extensive experiments demonstrate the superiority of our proposed frame of spectral clustering.
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