Bridging the Gap of AutoGraph Between Academia and Industry: Analyzing AutoGraph Challenge at KDD Cup 2020

被引:0
|
作者
Xu, Zhen [1 ]
Wei, Lanning [1 ,2 ]
Zhao, Huan [1 ]
Ying, Rex [3 ]
Yao, Quanming [4 ]
Tu, Wei-Wei [1 ]
Guyon, Isabelle [5 ,6 ]
机构
[1] Paradigm, Beijing, Peoples R China
[2] Chinese Acad Sci, Inst Comp Technol, Beijing, Peoples R China
[3] Stanford Univ, Dept Comp Sci, Stanford, CA USA
[4] Tsinghua Univ, Dept Elect Engn, Beijing, Peoples R China
[5] ChaLearn, Stanford, CA USA
[6] Univ Paris Saclay, Inst Natl Rech Informat & Automat INRIA, Ctr Natl Rech Sci CNRS, Lab Interdisciplinaire Sci Numer LISN, Gif Sur Yvette, France
来源
关键词
Graph Neural Networks; Automated Machine Learning; data challenge; node classification; graph machine learning;
D O I
10.3389/frai.2022.905104
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graph structured data is ubiquitous in daily life and scientific areas and has attracted increasing attention. Graph Neural Networks (GNNs) have been proved to be effective in modeling graph structured data and many variants of GNN architectures have been proposed. However, much human effort is often needed to tune the architecture depending on different datasets. Researchers naturally adopt Automated Machine Learning on Graph Learning, aiming to reduce human effort and achieve generally top-performing GNNs, but their methods focus more on the architecture search. To understand GNN practitioners' automated solutions, we organized AutoGraph Challenge at KDD Cup 2020, emphasizing automated graph neural networks for node classification. We received top solutions, especially from industrial technology companies like Meituan, Alibaba, and Twitter, which are already open sourced on GitHub. After detailed comparisons with solutions from academia, we quantify the gaps between academia and industry on modeling scope, effectiveness, and efficiency, and show that (1) academic AutoML for Graph solutions focus on GNN architecture search while industrial solutions, especially the winning ones in the KDD Cup, tend to obtain an overall solution (2) with only neural architecture search, academic solutions achieve on average 97.3% accuracy of industrial solutions (3) academic solutions are cheap to obtain with several GPU hours while industrial solutions take a few months' labors. Academic solutions also contain much fewer parameters.
引用
收藏
页数:7
相关论文
共 50 条
  • [21] Bridging the Gap between Academia and Industry to Reduce Female Attrition from Engineering
    Dahle, Reena
    Eagleston, Kimberly
    Jockers, Lori
    2017 IEEE WOMEN IN ENGINEERING (WIE) FORUM USA EAST, 2017,
  • [22] Bridging the gap between academia and industry: a case study of collaborative curriculum development
    Mahalingam, Tamilselvan
    INTERNATIONAL JOURNAL OF BUSINESS PERFORMANCE MANAGEMENT, 2024, 25 (04) : 589 - 603
  • [23] Bridging the gap: academia, industry and FDA convergence for nanomaterials
    Shah, Saurabh
    Nene, Shweta
    Rangaraj, Nagarjun
    Raghuvanshi, Rajeev Singh
    Singh, Shashi Bala
    Srivastava, Saurabh
    DRUG DEVELOPMENT AND INDUSTRIAL PHARMACY, 2020, 46 (11) : 1735 - 1746
  • [24] Bridging the Gap Between Academia and Practice in Accounting
    Clor-Proell, Shana
    Even-Tov, Omri
    Lee, Charles M. C.
    Rajgopal, Shivaram
    ACCOUNTING HORIZONS, 2025, 39 (01) : 1 - 14
  • [25] Bridging the gap between academia and standard setters
    Sinclair, Rowena
    Cordery, Carolyn J.
    PACIFIC ACCOUNTING REVIEW, 2016, 28 (02) : 135 - 152
  • [26] CrabNet for Explainable Deep Learning in Materials Science: Bridging the Gap Between Academia and Industry
    Anthony Yu-Tung Wang
    Mahamad Salah Mahmoud
    Mathias Czasny
    Aleksander Gurlo
    Integrating Materials and Manufacturing Innovation, 2022, 11 : 41 - 56
  • [27] Bridging the Gap between Academia and Industry - Washington University's Process Control Laboratories
    Tang, Yinjie J.
    Heider, Robert
    2009 AMERICAN CONTROL CONFERENCE, VOLS 1-9, 2009, : 2730 - 2734
  • [28] TRANSPORTATION-LOGISTICS CURRICULUM-DEVELOPMENT - BRIDGING GAP BETWEEN INDUSTRY AND ACADEMIA
    PIERCY, JE
    KRAMPF, RF
    BANVILLE, GR
    TRANSPORTATION JOURNAL, 1977, 17 (02) : 75 - 82
  • [29] CrabNet for Explainable Deep Learning in Materials Science: Bridging the Gap Between Academia and Industry
    Wang, Anthony Yu-Tung
    Mahmoud, Mahamad Salah
    Czasny, Mathias
    Gurlo, Aleksander
    INTEGRATING MATERIALS AND MANUFACTURING INNOVATION, 2022, 11 (01) : 41 - 56
  • [30] Bridging the Gap: A Study of AI-based Vulnerability Management between Industry and Academia
    Wan, Shengye
    Saxe, Joshua
    Gomes, Craig
    Chennabasappa, Sahana
    Rath, Avilash
    Sun, Kun
    Wang, Xinda
    2024 54TH ANNUAL IEEE/IFIP INTERNATIONAL CONFERENCE ON DEPENDABLE SYSTEMS AND NETWORKS-SUPPLEMENTAL VOLUME, DSN-S 2024, 2024, : 80 - 87