This is the folder for relevant resources, e.g., course, tutorial, thesis, and blog.
-
Graph Neural Networks (ESE680) by Alejandro Ribeiro, University of Pennsylvania Link bilibili_video
-
Deep Learning (with PyTorch) Link Github_repository
-
2019 Transportation Forecasting Competition workshop @ Transportation Research Board (TRB) 98th Annual Meeting Github_repository
-
Highway Tollgates Traffic Flow Prediction (KDD Cup 2017): Link
-
Ward I R, Joyner J, Lickfold C, et al. A Practical Guide to Graph Neural Networks[J]. arXiv preprint arXiv:2010.05234, 2020. Link
-
图神经网络相关算法详述及实现 Github_link
-
Deep Graph Learning: Foundations, Advances and Applications (Tutorial @ KDD 2020) Link
- 微信公众号:腾讯高校合作 犀牛鸟硬核 | 一文了解图深度学习的进展与应用
-
Graph Representation Learning and Applications (Tutorial @ ECML/PKDD '20) Link
-
Graph Neural Networks: Models and Applications (Tutorial @ AAAI 2020) Link
-
Graph Mining & Learning (@NeurIPS 2020) Link
-
微信公众号:相约机器人
- 图深度学习入门教程 Link
-
微信公众号:Datawhale
- GNN专栏-秦州 Link
-
Zhang Y. Graph deep learning models for network-based spatio-temporal data forecasting: from dense to sparse[D]. UCL (University College London), 2020. Link
-
Tang X. Modeling Spatiotemporality for Multivariate Time Series in Urban Applications[J]. 2020. Link
- Traffic prediction with advanced Graph Neural Networks (by DeepMind with Google Maps) Link