Domain-adversarial Network Alignment
Hong, Huiting, Li, Xin, Pan, Yuangang, Tsang, Ivor
Network alignment is a critical task to a wide variety of fields. Many existing works leverage on representation learning to accomplish this task without eliminating domain representation bias induced by domain-dependent features, which yield inferior alignment performance. This paper proposes a unified deep architecture (DANA) to obtain a domain-invariant representation for network alignment via an adversarial domain classifier. Specifically, we employ the graph convolutional networks to perform network embedding under the domain adversarial principle, given a small set of observed anchors. Then, the semi-supervised learning framework is optimized by maximizing a posterior probability distribution of observed anchors and the loss of a domain classifier simultaneously. We also develop a few variants of our model, such as, direction-aware network alignment, weight-sharing for directed networks and simplification of parameter space. Experiments on three real-world social network datasets demonstrate that our proposed approaches achieve state-of-the-art alignment results.
Aug-15-2019
- Country:
- Europe > Spain
- Canary Islands (0.14)
- North America > United States
- Louisiana (0.14)
- Europe > Spain
- Genre:
- Research Report (1.00)
- Industry:
- Information Technology > Services (0.36)
- Technology: