Deep multiview collaborative clustering

X Yang, C Deng, Z Dang, D Tao - IEEE Transactions on Neural …, 2021 - ieeexplore.ieee.org
IEEE Transactions on Neural Networks and Learning Systems, 2021ieeexplore.ieee.org
The clustering methods have absorbed even-increasing attention in machine learning and
computer vision communities in recent years. In this article, we focus on the real-world
applications where a sample can be represented by multiple views. Traditional methods
learn a common latent space for multiview samples without considering the diversity of
multiview representations and use-means to obtain the final results, which are time and
space consuming. On the contrary, we propose a novel end-to-end deep multiview …
The clustering methods have absorbed even-increasing attention in machine learning and computer vision communities in recent years. In this article, we focus on the real-world applications where a sample can be represented by multiple views. Traditional methods learn a common latent space for multiview samples without considering the diversity of multiview representations and use -means to obtain the final results, which are time and space consuming. On the contrary, we propose a novel end-to-end deep multiview clustering model with collaborative learning to predict the clustering results directly. Specifically, multiple autoencoder networks are utilized to embed multi-view data into various latent spaces and a heterogeneous graph learning module is employed to fuse the latent representations adaptively, which can learn specific weights for different views of each sample. In addition, intraview collaborative learning is framed to optimize each single-view clustering task and provide more discriminative latent representations. Simultaneously, interview collaborative learning is employed to obtain complementary information and promote consistent cluster structure for a better clustering solution. Experimental results on several datasets show that our method significantly outperforms several state-of-the-art clustering approaches.
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