GraphRNN: Generating Realistic Graphs with Deep Auto-regressive Models

被引:0
|
作者
You, Jiaxuan [1 ]
Ying, Rex [1 ]
Ren, Xiang [2 ]
Hamilton, William L. [1 ]
Leskovec, Jure [1 ]
机构
[1] Stanford Univ, Dept Comp Sci, Stanford, CA 94305 USA
[2] Univ Southern Calif, Dept Comp Sci, Los Angeles, CA 90007 USA
基金
加拿大自然科学与工程研究理事会;
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Modeling and generating graphs is fundamental for studying networks in biology, engineering, and social sciences. However, modeling complex distributions over graphs and then efficiently sampling from these distributions is challenging due to the non-unique, high-dimensional nature of graphs and the complex, non-local dependencies that exist between edges in a given graph. Here we propose GraphRNN, a deep autoregressive model that addresses the above challenges and approximates any distribution of graphs with minimal assumptions about their structure. GraphRNN learns to generate graphs by training on a representative set of graphs and decomposes the graph generation process into a sequence of node and edge formations, conditioned on the graph structure generated so far. In order to quantitatively evaluate the performance of GraphRNN, we introduce a benchmark suite of datasets, baselines and novel evaluation metrics based on Maximum Mean Discrepancy, which measure distances between sets of graphs. Our experiments show that GraphRNN significantly outperforms all baselines, learning to generate diverse graphs that match the structural characteristics of a target set, while also scaling to graphs 50 x larger than previous deep models.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Estimation of Auto-Regressive models for time series using Binary or Quantized Data
    Auber, R.
    Pouliquen, M.
    Pigeon, E.
    M'Saad, M.
    Gehan, O.
    Chapon, P. A.
    Moussay, S.
    IFAC PAPERSONLINE, 2018, 51 (15): : 581 - 586
  • [32] Adaptive accelerated proximal gradient algorithm for auto-regressive exogenous models with outliers
    Ji, Xixi
    Chen, Jing
    Liu, Qiang
    Zhu, Quanmin
    APPLIED MATHEMATICAL MODELLING, 2024, 133 : 310 - 326
  • [33] AUTO-CORRELOGRAMS AND AUTO-REGRESSIVE MODELS OF TRACE-METAL DISTRIBUTIONS IN COCHIN BACKWATERS
    JAYALAKSHMY, KV
    SANKARANARAYANAN, VN
    INDIAN JOURNAL OF MARINE SCIENCES, 1983, 12 (04): : 236 - 238
  • [34] Beyond Spatial Auto-Regressive Models: Predicting Housing Prices with Satellite Imagery
    Bency, Archith J.
    Rallapalli, Swati
    Ganti, Raghu K.
    Srivatsa, Mudhakar
    Manjunath, B. S.
    2017 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV 2017), 2017, : 320 - 329
  • [35] Auto-regressive Image Synthesis with Integrated Quantization
    Zhan, Fangneng
    Yu, Yingchen
    Wu, Rongliang
    Zhang, Jiahui
    Cui, Kaiwen
    Zhang, Changgong
    Lu, Shijian
    COMPUTER VISION - ECCV 2022, PT XVI, 2022, 13676 : 110 - 127
  • [36] ADAPTIVE IMPORTANCE SAMPLING VIA AUTO-REGRESSIVE GENERATIVE MODELS AND GAUSSIAN PROCESSES
    Wang, Hechuan
    Bugallo, Monica F.
    Djuric, Petar M.
    2021 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP 2021), 2021, : 5584 - 5588
  • [37] Computerized Wrist Pulse Signal Diagnosis Using Modified Auto-Regressive Models
    Yinghui Chen
    Lei Zhang
    David Zhang
    Dongyu Zhang
    Journal of Medical Systems, 2011, 35 : 321 - 328
  • [38] Time-varying auto-regressive models for count time-series
    Roy, Arkaprava
    Karmakar, Sayar
    ELECTRONIC JOURNAL OF STATISTICS, 2021, 15 (01): : 2905 - 2938
  • [39] Adaptive Auto-Regressive Proportional Myoelectric Control
    Igual, Carles
    Igual, Jorge
    Hahne, Janne M.
    Parra, Lucas C.
    IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2019, 27 (02) : 314 - 322
  • [40] Delamination detection in composite laminates using auto-regressive models of vibration signals
    Nardi, D.
    Pasquali, M.
    Lampani, L.
    Gaudenzi, P.
    INSIGHTS AND INNOVATIONS IN STRUCTURAL ENGINEERING, MECHANICS AND COMPUTATION, 2016, : 935 - 940