Temporal Network Embedding for Link Prediction via VAE Joint Attention Mechanism.

Journal: IEEE transactions on neural networks and learning systems
Published Date:

Abstract

Network representation learning or embedding aims to project the network into a low-dimensional space that can be devoted to different network tasks. Temporal networks are an important type of network whose topological structure changes over time. Compared with methods on static networks, temporal network embedding (TNE) methods are facing three challenges: 1) it cannot describe the temporal dependence across network snapshots; 2) the node embedding in the latent space fails to indicate changes in the network topology; and 3) it cannot avoid a lot of redundant computation via parameter inheritance on a series of snapshots. To overcome these problems, we propose a novel TNE method named temporal network embedding method based on the VAE framework (TVAE), which is based on a variational autoencoder (VAE) to capture the evolution of temporal networks for link prediction. It not only generates low-dimensional embedding vectors for nodes but also preserves the dynamic nonlinear features of temporal networks. Through the combination of a self-attention mechanism and recurrent neural networks, TVAE can update node representations and keep the temporal dependence of vectors over time. We utilize parameter inheritance to keep the new embedding close to the previous one, rather than explicitly using regularization, and thus, it is effective for large-scale networks. We evaluate our model and several baselines on synthetic data sets and real-world networks. The experimental results demonstrate that TVAE has superior performance and lower time cost compared with the baselines.

Authors

  • Pengfei Jiao
  • Xuan Guo
    Department of Computer Science and Engineering, University of North Texas, TX, USA. Electronic address: xuan.guo@unt.edu.
  • Xin Jing
    Department of Critical Care Medicine, Shanghai Tenth People's Hospital, School of Medicine, Tongji University, Shanghai, 200072, People's Republic of China.
  • Dongxiao He
  • HuaMing Wu
    Jiangxi Engineering Laboratory for Optoelectronics Testing Technology, Nanchang Hangkong University, Nanchang, China.
  • Shirui Pan
    Faculty of Information Technology, Monash University, Clayton, Australia.
  • Maoguo Gong
  • Wenjun Wang
    College of Water Conservancy and Hydropower Engineering, Hohai University, Nanjing, China.