Semisupervised Community Preserving Network Embedding with Pairwise Constraints

Joint Authors

Liu, Dong
Ru, Yan
Li, Qinpeng
Wang, Shibin
Niu, Jianwei

Source

Complexity

Issue

Vol. 2020, Issue 2020 (31 Dec. 2020), pp.1-14, 14 p.

Publisher

Hindawi Publishing Corporation

Publication Date

2020-11-10

Country of Publication

Egypt

No. of Pages

14

Main Subjects

Philosophy

Abstract EN

Network embedding aims to learn the low-dimensional representations of nodes in networks.

It preserves the structure and internal attributes of the networks while representing nodes as low-dimensional dense real-valued vectors.

These vectors are used as inputs of machine learning algorithms for network analysis tasks such as node clustering, classification, link prediction, and network visualization.

The network embedding algorithms, which considered the community structure, impose a higher level of constraint on the similarity of nodes, and they make the learned node embedding results more discriminative.

However, the existing network representation learning algorithms are mostly unsupervised models; the pairwise constraint information, which represents community membership, is not effectively utilized to obtain node embedding results that are more consistent with prior knowledge.

This paper proposes a semisupervised modularized nonnegative matrix factorization model, SMNMF, while preserving the community structure for network embedding; the pairwise constraints (must-link and cannot-link) information are effectively fused with the adjacency matrix and node similarity matrix of the network so that the node representations learned by the model are more interpretable.

Experimental results on eight real network datasets show that, comparing with the representative network embedding methods, the node representations learned after incorporating the pairwise constraints can obtain higher accuracy in node clustering task and the results of link prediction, and network visualization tasks indicate that the semisupervised model SMNMF is more discriminative than unsupervised ones.

American Psychological Association (APA)

Liu, Dong& Ru, Yan& Li, Qinpeng& Wang, Shibin& Niu, Jianwei. 2020. Semisupervised Community Preserving Network Embedding with Pairwise Constraints. Complexity،Vol. 2020, no. 2020, pp.1-14.
https://search.emarefa.net/detail/BIM-1143995

Modern Language Association (MLA)

Liu, Dong…[et al.]. Semisupervised Community Preserving Network Embedding with Pairwise Constraints. Complexity No. 2020 (2020), pp.1-14.
https://search.emarefa.net/detail/BIM-1143995

American Medical Association (AMA)

Liu, Dong& Ru, Yan& Li, Qinpeng& Wang, Shibin& Niu, Jianwei. Semisupervised Community Preserving Network Embedding with Pairwise Constraints. Complexity. 2020. Vol. 2020, no. 2020, pp.1-14.
https://search.emarefa.net/detail/BIM-1143995

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references

Record ID

BIM-1143995