Predicting Path Failure In Time-Evolving Graphs
Li, Jia, Han, Zhichao, Cheng, Hong, Su, Jiao, Wang, Pengyun, Zhang, Jianfeng, Pan, Lujia
In this paper we use a time-evolving graph which consists of a sequence of graph snapshots over time to model many real-world networks. We study the path classification problem in a time-evolving graph, which has many applications in real-world scenarios, for example, predicting path failure in a telecommunication network and predicting path congestion in a traffic network in the near future. In order to capture the temporal dependency and graph structure dynamics, we design a novel deep neural network named Long Short-Term Memory R-GCN (LRGCN). LRGCN considers temporal dependency between time-adjacent graph snapshots as a special relation with memory, and uses relational GCN to jointly process both intra-time and inter-time relations. We also propose a new path representation method named self-attentive path embedding (SAPE), to embed paths of arbitrary length into fixed-length vectors. Through experiments on a real-world telecommunication network and a traffic network in California, we demonstrate the superiority of LRGCN to other competing methods in path failure prediction, and prove the effectiveness of SAPE on path representation.
May-21-2019
- Country:
- North America > United States > California (0.34)
- Genre:
- Research Report (0.50)
- Industry:
- Telecommunications (1.00)
- Technology: