Context Attention Heterogeneous Network Embedding

Joint Authors

Zhuo, Wei
Zhan, Qianyi
Liu, Yuan
Xie, Zhenping
Lu, Jing

Source

Computational Intelligence and Neuroscience

Issue

Vol. 2019, Issue 2019 (31 Dec. 2019), pp.1-15, 15 p.

Publisher

Hindawi Publishing Corporation

Publication Date

2019-08-21

Country of Publication

Egypt

No. of Pages

15

Main Subjects

Biology

Abstract EN

Network embedding (NE), which maps nodes into a low-dimensional latent Euclidean space to represent effective features of each node in the network, has obtained considerable attention in recent years.

Many popular NE methods, such as DeepWalk, Node2vec, and LINE, are capable of handling homogeneous networks.

However, nodes are always fully accompanied by heterogeneous information (e.g., text descriptions, node properties, and hashtags) in the real-world network, which remains a great challenge to jointly project the topological structure and different types of information into the fixed-dimensional embedding space due to heterogeneity.

Besides, in the unweighted network, how to quantify the strength of edges (tightness of connections between nodes) accurately is also a difficulty faced by existing methods.

To bridge the gap, in this paper, we propose CAHNE (context attention heterogeneous network embedding), a novel network embedding method, to accurately determine the learning result.

Specifically, we propose the concept of node importance to measure the strength of edges, which can better preserve the context relations of a node in unweighted networks.

Moreover, text information is a widely ubiquitous feature in real-world networks, e.g., online social networks and citation networks.

On account of the sophisticated interactions between the network structure and text features of nodes, CAHNE learns context embeddings for nodes by introducing the context node sequence, and the attention mechanism is also integrated into our model to better reflect the impact of context nodes on the current node.

To corroborate the efficacy of CAHNE, we apply our method and various baseline methods on several real-world datasets.

The experimental results show that CAHNE achieves higher quality compared to a number of state-of-the-art network embedding methods on the tasks of network reconstruction, link prediction, node classification, and visualization.

American Psychological Association (APA)

Zhuo, Wei& Zhan, Qianyi& Liu, Yuan& Xie, Zhenping& Lu, Jing. 2019. Context Attention Heterogeneous Network Embedding. Computational Intelligence and Neuroscience،Vol. 2019, no. 2019, pp.1-15.
https://search.emarefa.net/detail/BIM-1129592

Modern Language Association (MLA)

Zhuo, Wei…[et al.]. Context Attention Heterogeneous Network Embedding. Computational Intelligence and Neuroscience No. 2019 (2019), pp.1-15.
https://search.emarefa.net/detail/BIM-1129592

American Medical Association (AMA)

Zhuo, Wei& Zhan, Qianyi& Liu, Yuan& Xie, Zhenping& Lu, Jing. Context Attention Heterogeneous Network Embedding. Computational Intelligence and Neuroscience. 2019. Vol. 2019, no. 2019, pp.1-15.
https://search.emarefa.net/detail/BIM-1129592

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references

Record ID

BIM-1129592