Discriminative Graph Autoencoder

被引:1
|
作者
Jin, Haifeng [1 ]
Song, Qingquan [1 ]
Hu, Xia [1 ]
机构
[1] Texas A&M Univ, Dept Comp Sci & Engn, College Stn, TX 77843 USA
关键词
autoencoder; graph; kernel;
D O I
10.1109/ICBK.2018.00033
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
With the abundance of graph-structured data in various applications, graph representation learning has become an effective computational tool for seeking informative vector representations for graphs. Traditional graph kernel approaches are usually frequency-based. Each dimension of a learned vector representation for a graph is the frequency of a certain type of substructure. They encounter high computational cost for counting the occurrence of predefined substructures. The learned vector representations are very sparse, which prohibit the use of inner products. Moreover, the learned vector representations are not in a smooth space since the values can only be integers. The state-of-the-art approaches tackle the challenges by changing kernel functions instead of producing better vector representations. They can only produce kernel matrices for kernel-based methods and not compatible with methods requiring vector representations. Effectively learning smooth vector representations for graphs of various structures and sizes remains a challenging task. Motivated by the recent advances in deep autoencoders, in this paper, we explore the capability of autoencoder on learning representations for graphs. Unlike videos or images, the graphs are usually of various sizes and are not readily prepared for autoencoder. Therefore, a novel framework, namely discriminative graph autoencoder (DGA), is proposed to learn low-dimensional vector representations for graphs. The algorithm decomposes the large graphs into small subgraphs, from which the structural information is sampled. The DGA produces smooth and informative vector representations of graphs efficiently while preserving the discriminative information according to their labels. Extensive experiments have been conducted to evaluate DGA. The experimental results demonstrate the efficiency and effectiveness of DGA comparing with traditional and state-of-the-art approaches on various real-world datasets and applications, e.g., classification and visualization.
引用
收藏
页码:192 / 199
页数:8
相关论文
共 50 条
  • [31] Learning Compact and Discriminative Stacked Autoencoder for Hyperspectral Image Classification
    Zhou, Peicheng
    Han, Junwei
    Cheng, Gong
    Zhang, Baochang
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2019, 57 (07): : 4823 - 4833
  • [32] HYPERSPECTRAL IMAGE CLASSIFICATION BASED ON STACKED MARGINAL DISCRIMINATIVE AUTOENCODER
    Feng, Jie
    Liu, Liguo
    Zhang, Xiangrong
    Wang, Rongfang
    Liu, Hongying
    2017 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS), 2017, : 3668 - 3671
  • [33] Wasserstein Expansible Variational Autoencoder for Discriminative and Generative Continual Learning
    Ye, Fei
    Bors, Adrian G.
    2023 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV 2023), 2023, : 18619 - 18629
  • [34] Discriminative Regression With Adaptive Graph Diffusion
    Wen, Jie
    Deng, Shijie
    Fei, Lunke
    Zhang, Zheng
    Zhang, Bob
    Zhang, Zhao
    Xu, Yong
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2024, 35 (02) : 1797 - 1809
  • [35] Discriminative sparsity preserving graph embedding
    Gou, Jianping
    Du, Lan
    Cheng, Keyang
    Cai, Yingfeng
    2016 IEEE Congress on Evolutionary Computation, CEC 2016, 2016, : 4250 - 4257
  • [36] Discriminative Sparsity Preserving Graph Embedding
    Gou, Jianping
    Du, Lan
    Cheng, Keyan
    Cai, Yingfeng
    2016 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2016, : 4250 - 4257
  • [37] Discriminative Graph Based Similarity Boosting
    Qianying Wang
    Ming Lu
    Neural Processing Letters, 2019, 50 : 1303 - 1319
  • [38] Discriminative Graph Embedding for Label Propagation
    Canh Hao Nguyen
    Mamitsuka, Hiroshi
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2011, 22 (09): : 1395 - 1405
  • [39] Discriminative Graph Based Similarity Boosting
    Wang, Qianying
    Lu, Ming
    NEURAL PROCESSING LETTERS, 2019, 50 (02) : 1303 - 1319
  • [40] Multi-View Graph Autoencoder for Unsupervised Graph Representation Learning
    Li, Jingci
    Lu, Guangquan
    Wu, Zhengtian
    2022 26TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2022, : 2213 - 2218