AI Article Synopsis

  • Multiview clustering (MVC) helps categorize samples through unsupervised learning but faces challenges like conflicting objectives between preserving individual view features and achieving commonalities across views.
  • Current methods struggle with ignoring correlations between samples in feature representation and often misalign sample pairs in contrastive learning, leading to inaccurate clustering outcomes.
  • To tackle these issues, a new network called anchor-sharing and clusterwise contrastive learning (CwCL) is proposed, which separates view-specific and view-common learning, improves sample representations through anchor-sharing, and optimizes contrastive learning by focusing on sample pairs with low transition probabilities.

Article Abstract

Multiview clustering (MVC) has gained significant attention as it enables the partitioning of samples into their respective categories through unsupervised learning. However, there are a few issues as follows: 1) many existing deep clustering methods use the same latent features to achieve the conflict objectives, namely, reconstruction and view consistency. The reconstruction objective aims to preserve view-specific features for each individual view, while the view-consistency objective strives to obtain common features across all views; 2) some deep embedded clustering (DEC) approaches adopt view-wise fusion to obtain consensus feature representation. However, these approaches overlook the correlation between samples, making it challenging to derive discriminative consensus representations; and 3) many methods use contrastive learning (CL) to align the view's representations; however, they do not take into account cluster information during the construction of sample pairs, which can lead to the presence of false negative pairs. To address these issues, we propose a novel multiview representation learning network, called anchor-sharing and clusterwise CL (CwCL) network for multiview representation learning. Specifically, we separate view-specific learning and view-common learning into different network branches, which addresses the conflict between reconstruction and consistency. Second, we design an anchor-sharing feature aggregation (ASFA) module, which learns the sharing anchors from different batch data samples, establishes the bipartite relationship between anchors and samples, and further leverages it to improve the samples' representations. This module enhances the discriminative power of the common representation from different samples. Third, we design CwCL module, which incorporates the learned transition probability into CL, allowing us to focus on minimizing the similarity between representations from negative pairs with a low transition probability. It alleviates the conflict in previous sample-level contrastive alignment. Experimental results demonstrate that our method outperforms the state-of-the-art performance.

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http://dx.doi.org/10.1109/TNNLS.2024.3357087DOI Listing

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