4.7 Article

Subgraph Networks With Application to Structural Feature Space Expansion

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 33, Issue 6, Pages 2776-2789

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2019.2957755

Keywords

Heat pumps; Water heating; Refrigerants; Liquids; Heat engines; Subgraph; motif; network classification; structural feature; learning algorithm; biological network; social network

Funding

  1. National Natural Science Foundation of China [61973273, 61572439]
  2. Zhejiang Provincial Natural Science Foundation of China [LR19F030001]
  3. Hong Kong Research Grants Council under the GRF [CityU11200317]

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This article introduces the concept of subgraph networks (SGN) and applies it to network models. Algorithms are designed to construct 1st-order and 2nd-order SGNs, which can easily be extended to build higher-order ones. These SGNs are used to expand the structural feature space of the underlying network, beneficial for network classification.
Real-world networks exhibit prominent hierarchical and modular structures, with various subgraphs as building blocks. Most existing studies simply consider distinct subgraphs as motifs and use only their numbers to characterize the underlying network. Although such statistics can be used to describe a network model, or even to design some network algorithms, the role of subgraphs in such applications can be further explored so as to improve the results. In this article, the concept of subgraph network (SGN) is introduced and then applied to network models, with algorithms designed for constructing the 1st-order and 2nd-order SGNs, which can be easily extended to build higher-order ones. Furthermore, these SGNs are used to expand the structural feature space of the underlying network, beneficial for network classification. Numerical experiments demonstrate that the network classification model based on the structural features of the original network together with the 1st-order and 2nd-order SGNs always performs the best as compared to the models based only on one or two of such networks. In other words, the structural features of SGNs can complement that of the original network for better network classification, regardless of the feature extraction method used, such as the handcrafted, network embedding and kernel-based methods.

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