
Research Article
UserRBPM: User Retweet Behavior Prediction with Graph Representation Learning
@INPROCEEDINGS{10.1007/978-3-030-89814-4_45, author={Huihui Guo and Li Yang and Zeyu Liu}, title={UserRBPM: User Retweet Behavior Prediction with Graph Representation Learning}, proceedings={Mobile Multimedia Communications. 14th EAI International Conference, Mobimedia 2021, Virtual Event, July 23-25, 2021, Proceedings}, proceedings_a={MOBIMEDIA}, year={2021}, month={11}, keywords={Social networks Retweet behavior prediction Graph convolution Graph attention Representation learning}, doi={10.1007/978-3-030-89814-4_45} }
- Huihui Guo
Li Yang
Zeyu Liu
Year: 2021
UserRBPM: User Retweet Behavior Prediction with Graph Representation Learning
MOBIMEDIA
Springer
DOI: 10.1007/978-3-030-89814-4_45
Abstract
Social and information networks such as Facebook, Twitter, and Weibo have become the main social platforms for the public to share and exchange information, where we can easily access friends’ activities and are in turn be influenced by them. Consequently, the analysis and modeling of user retweet behavior prediction have important application value in such aspects as information dissemination, public opinion monitoring, and product recommendation. Most of the existing solutions for user retweeting behavior prediction are usually based on network topology maps of information dissemination or design various hand-crafted rules to extract user-specific and network-specific features. However, these methods are very complex or heavily dependent on the knowledge of domain experts. Inspired by the successful use of neural networks in representation learning, we design a framework UserRBPM to explore potential driving factors and predictable signals in user retweet behavior. We use the graph embedding technology to extract the structural attributes of the ego-network, consider the drivers of social influence from the spatial and temporal levels, and use the graph convolutional network and the graph attention mechanism to learn its potential social representation and predictive signals. Experimental results show that our proposed UserRBPM framework can significantly improve prediction performance and express social influence better than traditional feature engineering-based approaches.