8

GitHub - dair-ai/GNNs-Recipe: A recipe to study Graph Neural Networks (GNNs)

 2 years ago
source link: https://github.com/dair-ai/GNNs-Recipe
Go to the source link to view the article. You can view the picture content, updated content and better typesetting reading experience. If the link is broken, please click the button below to view the snapshot at that time.
neoserver,ios ssh client

GNNs Recipe

Graph neural networks (GNNs) are rapidly advancing progress in ML for complex graph data applications. I've composed this concise recipe dedicated to students who are lookin to learn and keep up-to-date with GNNs. It's non-exhaustive but it aims to get students familiar with the topic.

star Gentle Introduction to GNNs

There are several introductory content to learn about GNNs. The following are some useful ones:

linkFoundations of GNNs (by Petar Veličković)

linkGentle Introduction to GNNs (by Distill)

linkUnderstanding Convolutions on Graphs (by Distill)

linkGraph Convolutional Networks (by Thomas Kipf)

blue_book Survey Papers on GNNs

Here are two fantastic survey papers on the topic to get a broader and concise picture of GNNs and recent progress:

linkGraph Neural Networks: Methods, Applications, and Opportunities (Lilapati Waikhom, Ripon Patgiri)

linkA Comprehensive Survey on Graph Neural Networks (Zonghan Wu, Shirui Pan, Fengwen Chen, Guodong Long, Chengqi Zhang, Philip S. Yu)

woman_technologist Diving Deep into GNNs

After going through quick high-level introductory content, here are some great material to go deep:

linkGeometric Deep Learning (by Michael M. Bronstein, Joan Bruna, Taco Cohen, Petar Veličković)

linkGraph Representation Learning Book (by William Hamilton)

linkCS224W: ML with Graphs (by Jure Leskovec)

books GNN Papers and Implementations

If you want to keep up-to-date with popular recent methods and paper implementations for GNNs, the Papers with Code community maintains this useful collection:

octopusGraph Models by Papers with Code

chart_with_upwards_trend Benchmarks and Datasets

If you are interested in benchmarks/leaderboards and graph datasets that evaluate GNNs, the Papers with Code community also maintains such content here:

linkDatasets by Papers with Code

linkGraph Benchmarks by Papers with Code

:octocat: Tools

Here are a few useful tools to get started with GNNs:

firePyTorch Geometric

linkDeep Graph Library

giraffejraph

orange_circleSpektral

apple Tutorials

I will be posting several tutorials on GNNs, here is the first of the series. More coming soon!

Introduction to GNNs with PyTorch Geometric


To get regular updates on new ML and NLP resources, follow me on Twitter.


About Joyk


Aggregate valuable and interesting links.
Joyk means Joy of geeK