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    基于谱嵌入相似度的多层对比多视图聚类

    Multi-Layer Contrastive Multi-View Clustering via Spectral Embedding Similarity

    • 摘要: 多视图聚类通过无监督方式学习共识表示,将数据样本划分为不同类别,受到了广泛关注。近年来,对比学习凭借其强大的跨视图特征对齐能力,在多视图聚类中展现出了巨大的潜力。然而,现有对比多视图聚类方法存在正负样本划分的假阴性与假阳性问题,限制了聚类性能的进一步提升。为了解决这些问题,本文提出基于谱嵌入相似度的多层对比多视图聚类方法(Multi-layer Contrastive Multi-view Clustering Based on Spectral Embedding Similarity, MCSES),通过引入基于谱嵌入相似度的多层对比学习机制,有效缓解了正负样本划分不准确带来的性能瓶颈。具体来说,MCSES首先基于各视图潜在表示构造拉普拉斯矩阵,并利用其特征向量生成谱嵌入相似度矩阵。然后,MCSES根据谱嵌入相似度矩阵提供的全局先验信息构造分正负样本对,缓解了样本划分错误对潜在表示学习的干扰。同时,MCSES设计了多层对比学习框架。在跨视图层面,MCSES设计了跨视图对比损失来充分挖掘视图间互补性信息。此外,MCSES通过可学习权重自适应地融合各个视图的潜在表示,得到全局多视图表示,并在此基础上设计全局对比损失来强调多视图一致性信息。在公开多视图数据集上的大量实验验证了所提方法的有效性。

       

      Abstract: Multi-view clustering, which partitions data samples into different categories in an unsupervised manner by learning a consensus representation, has attracted widespread attention. In recent years, contrastive learning has demonstrated great potential in multi-view clustering due to its powerful cross-view feature alignment capabilities. However, existing contrastive multi-view clustering methods suffer from false negative and false positive sample pair issues, which limit further improvement in clustering performance. To address these problems, this paper proposes a Multi-layer Contrastive Multi-view Clustering method Based on Spectral Embedding Similarity (MCSES). By introducing a multi-layer contrastive learning mechanism based on spectral embedding similarity, the proposed method effectively alleviates the performance bottleneck caused by inaccurate sample pair division. Specifically, MCSES first constructs a Laplacian matrix based on the latent representation of each view and utilizes its eigenvectors to generate a spectral embedding similarity matrix. Then, MCSES constructs positive and negative sample pairs based on the global prior information provided by the spectral embedding similarity matrix, thereby mitigating the interference of sample division errors on latent representation learning. Meanwhile, MCSES designs a multi-layer contrastive learning framework. At the cross-view level, a cross-view contrastive loss is designed to fully exploit the complementary information among views. In addition, MCSES adaptively fuses the latent representations of all views with learnable weights to obtain a global multi-view representation, based on which a global contrastive loss is designed to emphasize the consistency information among multiple views. Extensive experiments on public multi-view datasets verify the effectiveness of the proposed method.

       

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