Structural Deep Network Embedding

Author(s):  
Daixin Wang ◽  
Peng Cui ◽  
Wenwu Zhu
2020 ◽  
Vol 34 (03) ◽  
pp. 2991-2999 ◽  
Author(s):  
Xiao Shen ◽  
Quanyu Dai ◽  
Fu-lai Chung ◽  
Wei Lu ◽  
Kup-Sze Choi

In this paper, the task of cross-network node classification, which leverages the abundant labeled nodes from a source network to help classify unlabeled nodes in a target network, is studied. The existing domain adaptation algorithms generally fail to model the network structural information, and the current network embedding models mainly focus on single-network applications. Thus, both of them cannot be directly applied to solve the cross-network node classification problem. This motivates us to propose an adversarial cross-network deep network embedding (ACDNE) model to integrate adversarial domain adaptation with deep network embedding so as to learn network-invariant node representations that can also well preserve the network structural information. In ACDNE, the deep network embedding module utilizes two feature extractors to jointly preserve attributed affinity and topological proximities between nodes. In addition, a node classifier is incorporated to make node representations label-discriminative. Moreover, an adversarial domain adaptation technique is employed to make node representations network-invariant. Extensive experimental results demonstrate that the proposed ACDNE model achieves the state-of-the-art performance in cross-network node classification.


Author(s):  
Xiao Shen ◽  
Quanyu Dai ◽  
Sitong Mao ◽  
Fu-Lai Chung ◽  
Kup-Sze Choi

Author(s):  
Li Gao ◽  
Hong Yang ◽  
Jia Wu ◽  
Chuan Zhou ◽  
Weixue Lu ◽  
...  

Network embedding has been recently used in social network recommendations by embedding low-dimensional representations of network items for recommendation. However, existing item recommendation models in social networks suffer from two limitations. First, these models partially use item information and mostly ignore important contextual information in social networks such as textual content and social tag information. Second, network embedding and item recommendations are learned in two independent steps without any interaction. To this end, we in this paper consider item recommendations based on heterogeneous information sources. Specifically, we combine item structure, textual content and tag information for recommendation. To model the multi-source heterogeneous information, we use two coupled neural networks to capture the deep network representations of items, based on which a new recommendation model Collaborative multi-source Deep Network Embedding (CDNE for short) is proposed to learn different latent representations. Experimental results on two real-world data sets demonstrate that CDNE can use network representation learning to boost the recommendation performance.


Author(s):  
Mohammadreza Radmanesh ◽  
Ahmad Asgharian Rezaei ◽  
Nameer Al Khafaf ◽  
Mahdi Jalili

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