Redirigiendo al acceso original de articulo en 17 segundos...
Inicio  /  Information  /  Vol: 13 Par: 10 (2022)  /  Artículo
ARTÍCULO
TITULO

Influential Attributed Communities via Graph Convolutional Network (InfACom-GCN)

Nariman Adel Hussein    
Hoda M. O. Mokhtar and Mohamed E. El-Sharkawi    

Resumen

Community search is a basic problem in graph analysis. In many applications, network nodes have certain properties that are important for the community to make sense of the application; hence, attributes are associated with nodes to capture their properties. Community influence is an important community property that can be used to rank communities in a network based on the relevance/importance of a particular attribute. Unfortunately, most of the community search algorithms introduced previously in attributed networks research work ignored the community influence. When searching for influential communities, two potential data sources can be used: network attributes and nodes. Dealing with structure-related attributes is a challenge. Recently, the graph neural network (GNN) has completely changed the field of graph representation learning by effectively learning node embedding and has achieved the most advanced results in tasks such as node classification and connection prediction. In this paper, we investigate the problem of searching for the influential communities in attributed networks. We propose an efficient algorithm for retrieving the influential communities in a large attributed network. The proposed approach contains two main steps: (1) Community detection using a graph convolutional network in a semi-supervised learning setting considering the correlation between attributes and the overall graph information, and (2) constructing the influential communities resulting from step 1. The proposed approach is evaluated on various real datasets. The experimental results show the efficiency and effectiveness of the proposed implementations.

 Artículos similares

       
 
Yuyan Zheng, Jianhua Qu and Jiajia Yang    
Similarity measures in heterogeneous information networks (HINs) have become increasingly important in recent years. Most measures in such networks are based on the meta path, a relation sequence connecting object types. However, in real-world scenarios,... ver más
Revista: Applied Sciences

 
Sorin Zoican, Roxana Zoican, Dan Galatchi and Marius Vochin    
This paper illustrates a general framework in which a neural network application can be easily integrated and proposes a traffic forecasting approach that uses neural networks based on graphs. Neural networks based on graphs have the advantage of capturi... ver más
Revista: Applied Sciences

 
Ali Dorosti, Ali Asghar Alesheikh and Mohammad Sharif    
Advancements in navigation and tracking technologies have resulted in a significant increase in movement data within road networks. Analyzing the trajectories of network-constrained moving objects makes a profound contribution to transportation and urban... ver más
Revista: Information

 
Dibo Dong, Shangwei Wang, Qiaoying Guo, Yiting Ding, Xing Li and Zicheng You    
Predicting wind speed over the ocean is difficult due to the unequal distribution of buoy stations and the occasional fluctuations in the wind field. This study proposes a dynamic graph embedding-based graph neural network?long short-term memory joint fr... ver más

 
Wen Tian, Yining Zhang, Ying Zhang, Haiyan Chen and Weidong Liu    
To fully leverage the spatiotemporal dynamic correlations in air traffic flow and enhance the accuracy of traffic flow prediction models, thereby providing a more precise basis for perceiving congestion situations in the air route network, a study was co... ver más
Revista: Aerospace