子空间聚类在最近几年受到了广泛的关注,新近提出的自适应图卷积子空间聚类方法取得了很好的效果。但是该方法仅适用于单一视图的子空间聚类问题。本文将该方法拓展到多视图上,提出了多视图图卷积子空间聚类。该方法构建了F范数正则项...子空间聚类在最近几年受到了广泛的关注,新近提出的自适应图卷积子空间聚类方法取得了很好的效果。但是该方法仅适用于单一视图的子空间聚类问题。本文将该方法拓展到多视图上,提出了多视图图卷积子空间聚类。该方法构建了F范数正则项以便更有效地挖掘每个视图中数据之间的关系,还构建了不同视图之间的加权机制来融合不同视图之间的信息。大量的实验证明,我们的方法是有效的。Subspace clustering has received extensive attention in recent years. Although the recently proposed adaptive graph convolutional subspace clustering performs well, it can only be applied to subspace clustering problem with a single view. This paper proposes multi-view graph convolutional sub-space clustering to extend this method to the multi-view situation. This method not only constructs F-norm regularization to more effectively mine the relationships between data in each view, but also builds a weighting strategy between different views to integrate their information. A large number of experiments have proved that our method is effective.展开更多
文摘子空间聚类在最近几年受到了广泛的关注,新近提出的自适应图卷积子空间聚类方法取得了很好的效果。但是该方法仅适用于单一视图的子空间聚类问题。本文将该方法拓展到多视图上,提出了多视图图卷积子空间聚类。该方法构建了F范数正则项以便更有效地挖掘每个视图中数据之间的关系,还构建了不同视图之间的加权机制来融合不同视图之间的信息。大量的实验证明,我们的方法是有效的。Subspace clustering has received extensive attention in recent years. Although the recently proposed adaptive graph convolutional subspace clustering performs well, it can only be applied to subspace clustering problem with a single view. This paper proposes multi-view graph convolutional sub-space clustering to extend this method to the multi-view situation. This method not only constructs F-norm regularization to more effectively mine the relationships between data in each view, but also builds a weighting strategy between different views to integrate their information. A large number of experiments have proved that our method is effective.