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Representation Learning in Multi-view Clustering: A Literature Review

机译:多视图聚类中的表征学习:文献综述

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摘要

Multi-view clustering (MVC) has attracted more and more attention in the recent few years by making full use of complementary and consensus information between multiple views to cluster objects into different partitions. Although there have been two existing works for MVC survey, neither of them jointly takes the recent popular deep learning-based methods into consideration. Therefore, in this paper, we conduct a comprehensive survey of MVC from the perspective of representation learning. It covers a quantity of multi-view clustering methods including the deep learning-based models, providing a novel taxonomy of the MVC algorithms. Furthermore, the representation learning-based MVC methods can be mainly divided into two categories, i.e., shallow representation learning-based MVC and deep representation learning-based MVC, where the deep learning-based models are capable of handling more complex data structure as well as showing better expression. In the shallow category, according to the means of representation learning, we further split it into two groups, i.e., multiview graph clustering and multi-view subspace clustering. To be more comprehensive, basic research materials of MVC are provided for readers, containing introductions of the commonly used multi-view datasets with the download link and the open source code library. In the end, some open problems are pointed out for further investigation and development.
机译:近年来,多视图聚类(MVC)通过充分利用多个视图之间的互补和共识信息,将对象聚类到不同的分区中,引起了越来越多的关注。虽然已经有两部MVC调查作品,但它们都没有共同考虑最近流行的基于深度学习的方法。因此,本文从表示学习的角度对MVC进行了全面的调查。它涵盖了包括基于深度学习的模型在内的大量多视图聚类方法,为MVC算法提供了一种新的分类法。此外,基于表征学习的MVC方法主要可分为浅表征学习MVC和基于深度表征学习的MVC两大类,其中基于深度学习的模型能够处理更复杂的数据结构,并表现出更好的表达能力。在浅层范畴中,根据表征学习的手段,进一步将其分为两组,即多视图图聚类和多视图子空间聚类。为了更全面,为读者提供了MVC的基础研究资料,包括常用的多视图数据集的介绍,以及下载链接和开源代码库。最后,指出了一些悬而未决的问题,以供进一步调查和发展。

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