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2018 | OriginalPaper | Buchkapitel

Enhancing Network Embedding with Auxiliary Information: An Explicit Matrix Factorization Perspective

verfasst von : Junliang Guo, Linli Xu, Xunpeng Huang, Enhong Chen

Erschienen in: Database Systems for Advanced Applications

Verlag: Springer International Publishing

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Abstract

Recent advances in the field of network embedding have shown the low-dimensional network representation is playing a critical role in network analysis. However, most of the existing principles of network embedding do not incorporate auxiliary information such as content and labels of nodes flexibly. In this paper, we take a matrix factorization perspective of network embedding, and incorporate structure, content and label information of the network simultaneously. For structure, we validate that the matrix we construct preserves high-order proximities of the network. Label information can be further integrated into the matrix via the process of random walk sampling to enhance the quality of embedding in an unsupervised manner, i.e., without leveraging downstream classifiers. In addition, we generalize the Skip-Gram Negative Sampling model to integrate the content of the network in a matrix factorization framework. As a consequence, network embedding can be learned in a unified framework integrating network structure and node content as well as label information simultaneously. We demonstrate the efficacy of the proposed model with the tasks of semi-supervised node classification and link prediction on a variety of real-world benchmark network datasets.

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Fußnoten
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Metadaten
Titel
Enhancing Network Embedding with Auxiliary Information: An Explicit Matrix Factorization Perspective
verfasst von
Junliang Guo
Linli Xu
Xunpeng Huang
Enhong Chen
Copyright-Jahr
2018
DOI
https://doi.org/10.1007/978-3-319-91452-7_1

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