Similarity Modeling on Heterogeneous Networks via Automatic Path Discovery

Heterogeneous networks are widely used to model real-world semi-structured data. The key challenge of learning over such networks is the modeling of node similarity under both network structures and contents. To deal with network structures, most existing works assume a given or enumerable set of me...

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Bibliographic Details
Published inMachine Learning and Knowledge Discovery in Databases Vol. 11052; pp. 37 - 54
Main Authors Yang, Carl, Liu, Mengxiong, He, Frank, Zhang, Xikun, Peng, Jian, Han, Jiawei
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2019
Springer International Publishing
SeriesLecture Notes in Computer Science
Subjects
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Summary:Heterogeneous networks are widely used to model real-world semi-structured data. The key challenge of learning over such networks is the modeling of node similarity under both network structures and contents. To deal with network structures, most existing works assume a given or enumerable set of meta-paths and then leverage them for the computation of meta-path-based proximities or network embeddings. However, expert knowledge for given meta-paths is not always available, and as the length of considered meta-paths increases, the number of possible paths grows exponentially, which makes the path searching process very costly. On the other hand, while there are often rich contents around network nodes, they have hardly been leveraged to further improve similarity modeling. In this work, to properly model node similarity in content-rich heterogeneous networks, we propose to automatically discover useful paths for pairs of nodes under both structural and content information. To this end, we combine continuous reinforcement learning and deep content embedding into a novel semi-supervised joint learning framework. Specifically, the supervised reinforcement learning component explores useful paths between a small set of example similar pairs of nodes, while the unsupervised deep embedding component captures node contents and enables inductive learning on the whole network. The two components are jointly trained in a closed loop to mutually enhance each other. Extensive experiments on three real-world heterogeneous networks demonstrate the supreme advantages of our algorithm. Code related to this paper is available at: https://github.com/yangji9181/AutoPath.
Bibliography:Electronic supplementary materialThe online version of this chapter (https://doi.org/10.1007/978-3-030-10928-8_3) contains supplementary material, which is available to authorized users.
ISBN:3030109275
9783030109271
ISSN:0302-9743
1611-3349
DOI:10.1007/978-3-030-10928-8_3