Graph Regression Based on Graph Autoencoders

被引:2
|
作者
Fadlallah, Sarah [1 ]
Julia, Carme [1 ]
Serratosa, Francesc [1 ]
机构
[1] Univ Rovira & Virgili, Tarragona, Catalonia, Spain
关键词
Graph embedding; Autoencoders; Graph regression; Graph convolutional networks; Neural networks; Nearest neighbor; Molecular descriptors; Atomisation energy;
D O I
10.1007/978-3-031-23028-8_15
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
We offer in this paper a trial of encoding graph data as means of efficient prediction in a parallel setup. The first step converts graph data into feature vectors through a Graph Autoencoder (G-AE). Then, derived vectors are used to perform a prediction task using both a Neural Network (NN) and a regressor separately. Results for graph property prediction of both models compared to one another and baselined against a classical graph regression technique i.e. Nearest Neighbours, showed that using embeddings for model fitting has a significantly lower computational cost while giving valid predictions. Moreover, the Neural Network fitting technique outperforms both the regression and Nearest Neighbours methods in terms of accuracy. Hence, it can be concluded that using a non-linear fitting architecture may be suitable for tasks similar to representing molecular compounds and predicting their energies, as results signify the G-AE's ability to properly embed each graph's features in the latent vector. This could be of particular interest when it comes to representing graph features for model training while reducing the computational cost.
引用
下载
收藏
页码:142 / 151
页数:10
相关论文
共 50 条
  • [21] Graph Regularized Sparse Autoencoders with Nonnegativity Constraints
    Yueyang Teng
    Yichao Liu
    Jinliang Yang
    Chen Li
    Shouliang Qi
    Yan Kang
    Fenglei Fan
    Ge Wang
    Neural Processing Letters, 2019, 50 : 247 - 262
  • [22] Deformable Shape Completion with Graph Convolutional Autoencoders
    Litany, Or
    Bronstein, Alex
    Bronstein, Michael
    Makadia, Ameesh
    2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2018, : 1886 - 1895
  • [23] Constrained Graph Variational Autoencoders for Molecule Design
    Liu, Qi
    Allamanis, Miltiadis
    Brockschmidt, Marc
    Gaunt, Alexander L.
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018), 2018, 31
  • [24] Regularizing Variational Autoencoders for Molecular Graph Generation
    Li, Xin
    Lyu, Xiaoqing
    Zhang, Hao
    Hu, Keqi
    Tang, Zhi
    NEURAL INFORMATION PROCESSING, ICONIP 2019, PT V, 2019, 1143 : 467 - 476
  • [25] Conformal load prediction with transductive graph autoencoders
    Rui Luo
    Nicolo Colombo
    Machine Learning, 2025, 114 (3)
  • [26] Link Activation Using Variational Graph Autoencoders
    Jamshidiha, Saeed
    Pourahmadi, Vahid
    Mohammadi, Abbas
    Bennis, Mehdi
    IEEE COMMUNICATIONS LETTERS, 2021, 25 (07) : 2358 - 2361
  • [27] Graph Regularized Sparse Autoencoders with Nonnegativity Constraints
    Teng, Yueyang
    Liu, Yichao
    Yang, Jinliang
    Li, Chen
    Qi, Shouliang
    Kang, Yan
    Fan, Fenglei
    Wang, Ge
    NEURAL PROCESSING LETTERS, 2019, 50 (01) : 247 - 262
  • [28] Nonparametric Regression on a Graph
    Kovac, Arne
    Smith, Andrew D. A. C.
    JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2011, 20 (02) : 432 - 447
  • [29] Efficient learning of non-autoregressive graph variational autoencoders for molecular graph generation
    Youngchun Kwon
    Jiho Yoo
    Youn-Suk Choi
    Won-Joon Son
    Dongseon Lee
    Seokho Kang
    Journal of Cheminformatics, 11
  • [30] Efficient learning of non-autoregressive graph variational autoencoders for molecular graph generation
    Kwon, Youngchun
    Yoo, Jiho
    Choi, Youn-Suk
    Son, Won-Joon
    Lee, Dongseon
    Kang, Seokho
    JOURNAL OF CHEMINFORMATICS, 2019, 11 (01)