A Deep Graph Structured Clustering Networkстатья из журнала
Аннотация: Graph clustering is a fundamental task in data analysis and has attracted considerable attention in recommendation systems, mapping knowledge domain, and biological science. Because graph convolution is very effective in combining the feature information and topology information of graph data, some graph clustering methods based on graph convolution have achieved superior performance. However, current methods lack the consideration of structured information and the process of graph convolution. Specifically, most of existing methods ignore the implicit interaction between topology information and feature information, and the stacking of a small number of graph convolutional layers leads to insufficient learning of complex information. Inspired by graph convolutional network and auto-encoder, we propose a deep graph structured clustering network that applies a deep clustering method to graph structured data processing. Deep graph convolution is employed in the backbone network, and evaluates the result of each iteration with node feature and topology information. In order to optimize the network without supervision, a triple self-supervised module is designed to help update parameters for overall network. In our model, we exploit all information of the graph structured data and perform self-supervised learning. Furthermore, improved graph convolution layers significantly alleviate the problem of clustering performance degradation caused by over-smoothing. Our model is designed to perform on representative and indirect graph datasets, and experimental results demonstrate that our model achieves superior performance over state-of-the-art models.
Год издания: 2020
Авторы: Xunkai Li, Youpeng Hu, Yaoqi Sun, Ji Hu, Jiyong Zhang, Meixia Qu
Издательство: Institute of Electrical and Electronics Engineers
Источник: IEEE Access
Ключевые слова: Advanced Graph Neural Networks, Recommender Systems and Techniques, Complex Network Analysis Techniques
Другие ссылки: IEEE Access (PDF)
IEEE Access (HTML)
DOAJ (DOAJ: Directory of Open Access Journals) (HTML)
IEEE Access (HTML)
DOAJ (DOAJ: Directory of Open Access Journals) (HTML)
Открытый доступ: gold
Том: 8
Страницы: 161727–161738