论文标题

生成部分多视图集群

Generative Partial Multi-View Clustering

论文作者

Wang, Qianqian, Ding, Zhengming, Tao, Zhiqiang, Gao, Quanxue, Fu, Yun

论文摘要

如今,随着数据收集来源和特征提取方法的快速发展,多视图数据越来越容易获得,并且近年来受到了越来越多的研究注意力,其中多视图聚类(MVC)形成了主流研究方向,并广泛用于数据分析。 However, existing MVC methods mainly assume that each sample appears in all the views, without considering the incomplete view case due to data corruption, sensor failure, equipment malfunction, etc. In this study, we design and build a generative partial multi-view clustering model, named as GP-MVC, to address the incomplete multi-view problem by explicitly generating the data of missing views. GP-MVC的主要思想在于两倍。首先,对多视图编码网络进行了训练,可以学习常见的低维表示,然后是聚类层,以捕获跨多个视图的一致集群结构。其次,开发了特定于视图的生成对抗网络,以生成一个视图条件的缺失数据,以其他视图给出的共享表示形式。这两个步骤可以相互促进,其中学习共同表示有助于数据插补,并且生成的数据可以进一步探讨视图一致性。此外,实施了加权自适应融合方案,以利用不同观点之间的互补信息。提供了四个基准数据集的实验结果,以显示拟议的GP-MVC对最新方法的有效性。

Nowadays, with the rapid development of data collection sources and feature extraction methods, multi-view data are getting easy to obtain and have received increasing research attention in recent years, among which, multi-view clustering (MVC) forms a mainstream research direction and is widely used in data analysis. However, existing MVC methods mainly assume that each sample appears in all the views, without considering the incomplete view case due to data corruption, sensor failure, equipment malfunction, etc. In this study, we design and build a generative partial multi-view clustering model, named as GP-MVC, to address the incomplete multi-view problem by explicitly generating the data of missing views. The main idea of GP-MVC lies at two-fold. First, multi-view encoder networks are trained to learn common low-dimensional representations, followed by a clustering layer to capture the consistent cluster structure across multiple views. Second, view-specific generative adversarial networks are developed to generate the missing data of one view conditioning on the shared representation given by other views. These two steps could be promoted mutually, where learning common representations facilitates data imputation and the generated data could further explores the view consistency. Moreover, an weighted adaptive fusion scheme is implemented to exploit the complementary information among different views. Experimental results on four benchmark datasets are provided to show the effectiveness of the proposed GP-MVC over the state-of-the-art methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源