Partial multi-view clustering via consistent GAN
2018 IEEE International Conference on Data Mining (ICDM), 2018•ieeexplore.ieee.org
Multi-view clustering, as one of the most important methods to analyze multi-view data, has
been widely used in many real-world applications. Most existing multi-view clustering
methods perform well on the assumption that each sample appears in all views.
Nevertheless, in real-world application, each view may well face the problem of the missing
data due to noise, or malfunction. In this paper, a new consistent generative adversarial
network is proposed for partial multi-view clustering. We learn a common low-dimensional …
been widely used in many real-world applications. Most existing multi-view clustering
methods perform well on the assumption that each sample appears in all views.
Nevertheless, in real-world application, each view may well face the problem of the missing
data due to noise, or malfunction. In this paper, a new consistent generative adversarial
network is proposed for partial multi-view clustering. We learn a common low-dimensional …
Multi-view clustering, as one of the most important methods to analyze multi-view data, has been widely used in many real-world applications. Most existing multi-view clustering methods perform well on the assumption that each sample appears in all views. Nevertheless, in real-world application, each view may well face the problem of the missing data due to noise, or malfunction. In this paper, a new consistent generative adversarial network is proposed for partial multi-view clustering. We learn a common low-dimensional representation, which can both generate the missing view data and capture a better common structure from partial multi-view data for clustering. Different from the most existing methods, we use the common representation encoded by one view to generate the missing data of the corresponding view by generative adversarial networks, then we use the encoder and clustering networks. This is intuitive and meaningful because encoding common representation and generating the missing data in our model will promote mutually. Experimental results on three different multi-view databases illustrate the superiority of the proposed method.
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