Transformers are Graph Neural Networks!

Overview

🚀 Gated Graph Transformers

Gated Graph Transformers for graph-level property prediction, i.e. graph classification and regression.

Associated article: Transformers are Graph Neural Networks, by Chaitanya K. Joshi, published with The Gradient.

This repository is a continuously updated personal project to build intuitions about and track progress in Graph Representation Learning research. I aim to develop the most universal and powerful model which unifies state-of-the-art architectures from Graph Neural Networks and Transformers, without incorporating domain-specific tricks.

Gated Graph Transformer

Key Architectural Ideas

🤖 Deep, Residual Transformer Backbone

  • As the backbone architecture, I borrow the two-sub-layered, pre-normalization variant of Transformer encoders that has emerged as the standard in the NLP community, e.g. GPT-3. Each Transformer block consists of a message-passing sub-layer followed by a node-wise feedforward sub-layer. The graph convolution is described later.
  • The feedforward sub-layer projects node embeddings to an absurdly large dimension, passes them through a non-linear activation function, does dropout, and reduces back to the original embedding dimension.
  • The Transformer backbone enables training very deep and extremely overparameterized models. Overparameterization is important for performance in NLP and other combinatorially large domains, but was previously not possible for GNNs trained on small graph classifcation datasets. Coupled with unique node positional encodings (described later) and the feedforward sub-layer, overparameterization ensures that our GNN is Turing Universal (based on A. Loukas's recent insightful work, including this paper).

✉️ Anisotropic Graph Convolutions


Source: 'Deep Parametric Continuous Convolutional Neural Networks', Wang et al., 2018

  • As the graph convolution layer, I use the Gated Graph Convolution with dense attention mechanism, which we found to be the best performing graph convolution in Benchmarking GNNs. Intuitively, Gated GraphConv generalizes directional CNN filters for 2D images to arbitrary graphs by learning a weighted aggregations over the local neighbors of each node. It upgrades the node-to-node attention mechanism from GATs and MoNet (i.e. one attention weight per node pair) to consider dense feature-to-feature attention (i.e. d attention weights for pairs of d-dimensional node embeddings).
  • Another intuitive motivation for the Gated GraphConv is as a learnable directional diffusion process over the graph, or as a coupled PDE over node and edge features in the graph. Gated GraphConv makes the diffusion process/neighborhood aggregation anisotropic or directional, countering oversmoothing/oversquashing of features and enabling deeper models.
  • This graph convolution was originally proposed as a sentence encoder for NLP and further developed at NTU for molecule generation and combinatorial optimization. Evidently, I am partial to this idea. At the same time, it is worth noting that anisotropic local aggregations and generalizations of directed CNN filters have demonstrated strong performance across a myriad of applications, including 3D point clouds, drug discovery, material science, and programming languages.

🔄 Graph Positional Encodings


Source: 'Geometric Deep Learning: Going beyond Euclidean Data', Bronstein et al., 2017

  • I use the top-k non-trivial Laplacian Eigenvectors as unique node identifiers to inject structural/positional priors into the Transformer backbone. Laplacian Eigenvectors are a generalization of sinusoidal positional encodings from the original Transformers, and were concurrently proposed in the Benchmarking GNNs, EigenGNNs, and GCC papers.
  • Randomly flipping the sign of Laplacian Eigenvectors during training (due to symmetry) can be seen as an additional data augmentation or regularization technique, helping delay overfitting to training patterns. Going further, the Directional Graph Networks paper presents a more principled approach for using Laplacian Eigenvectors.

Some ideas still in the pipeline include:

  • Graph-specific Normalization - Originally motivated in Benchmarking GNNs as 'graph size normalization', there have been several subsequent graph-specific normalization techniques such as GraphNorm and MessageNorm, aiming to replace or augment standard Batch Normalization. Intuitively, there is room for improvement as BatchNorm flattens mini-batches of graphs instead of accounting for the underlying graph structure.

  • Theoretically Expressive Aggregation - There are several exciting ideas aiming to bridge the gap between theoretical expressive power, computational feasability, and generalization capacity for GNNs: PNA-style multi-head aggregation and scaling, generalized aggreagators from DeeperGCNs, pre-computing structural motifs as in GSN, etc.

  • Virtual Node and Low Rank Global Attention - After the message-passing step, the virtual node trick adds messages to-and-fro a virtual/super node connected to all graph nodes. LRGA comes with additional theretical motivations but does something similar. Intuitively, these techniques enable modelling long range or latent interactions in graphs and counter the oversquashing problem with deeper networks.

  • General Purpose Pre-training - It isn't truly a Transformer unless its pre-trained on hundreds of GPUs for thousands of hours...but general purpose pre-training for graph representation learning remains an open question!

Installation and Usage

# Create new Anaconda environment
conda create -n new-env python=3.7
conda activate new-env
# Install PyTorch 1.6 for CUDA 10.x
conda install pytorch=1.6 cudatoolkit=10.x -c pytorch
# Install DGL for CUDA 10.x
conda install -c dglteam dgl-cuda10.x
# Install other dependencies
conda install tqdm scikit-learn pandas urllib3 tensorboard
pip install -U ogb

# Train GNNs on ogbg-mol* datasets
python main_mol.py --dataset [ogbg-molhiv/ogbg-molpcba] --gnn [gated-gcn/gcn/mlp]

# Prepare submission for OGB leaderboards
bash scripts/ogbg-mol*.sh

# Collate results for submission
python submit.py --dataset [ogbg-molhiv/ogbg-molpcba] --expt [path-to-logs]

Note: The code was tested on Ubuntu 16.04, using Python 3.6, PyTorch 1.6 and CUDA 10.1.

Citation

@article{joshi2020transformers,
  author = {Joshi, Chaitanya K},
  title = {Transformers are Graph Neural Networks},
  journal = {The Gradient},
  year = {2020},
  howpublished = {\url{https://thegradient.pub/transformers-are-gaph-neural-networks/ } },
}
Owner
Chaitanya Joshi
Research Engineer at A*STAR, working on Graph Neural Networks
Chaitanya Joshi
Reviatalizing Optimization for 3D Human Pose and Shape Estimation: A Sparse Constrained Formulation

Reviatalizing Optimization for 3D Human Pose and Shape Estimation: A Sparse Constrained Formulation This is the implementation of the approach describ

Taosha Fan 47 Nov 15, 2022
Individual Treatment Effect Estimation

CAPE Individual Treatment Effect Estimation Run CAPE python train_causal.py --loop 10 -m cape_cau -d NI --i_t 1 Run a baseline model python train_cau

S. Deng 4 Sep 02, 2022
Official implementation of "An Image is Worth 16x16 Words, What is a Video Worth?" (2021 paper)

An Image is Worth 16x16 Words, What is a Video Worth? paper Official PyTorch Implementation Gilad Sharir, Asaf Noy, Lihi Zelnik-Manor DAMO Academy, Al

213 Nov 12, 2022
[ICCV 2021] Official Tensorflow Implementation for "Single Image Defocus Deblurring Using Kernel-Sharing Parallel Atrous Convolutions"

KPAC: Kernel-Sharing Parallel Atrous Convolutional block This repository contains the official Tensorflow implementation of the following paper: Singl

Hyeongseok Son 50 Dec 29, 2022
Pun Detection and Location

Pun Detection and Location “The Boating Store Had Its Best Sail Ever”: Pronunciation-attentive Contextualized Pun Recognition Yichao Zhou, Jyun-yu Jia

lawson 3 May 13, 2022
Paper: Cross-View Kernel Similarity Metric Learning Using Pairwise Constraints for Person Re-identification

Cross-View Kernel Similarity Metric Learning Using Pairwise Constraints for Person Re-identification T M Feroz Ali, Subhasis Chaudhuri, ICVGIP-20-21

T M Feroz Ali 3 Jun 17, 2022
An open source library for face detection in images. The face detection speed can reach 1000FPS.

libfacedetection This is an open source library for CNN-based face detection in images. The CNN model has been converted to static variables in C sour

Shiqi Yu 11.4k Dec 27, 2022
Image Fusion Transformer

Image-Fusion-Transformer Platform Python 3.7 Pytorch =1.0 Training Dataset MS-COCO 2014 (T.-Y. Lin, M. Maire, S. Belongie, J. Hays, P. Perona, D. Ram

Vibashan VS 68 Dec 23, 2022
The code used for the free [email protected] Webinar series on Reinforcement Learning in Finance

Reinforcement Learning in Finance [email protected] Webinar This repository provides the code f

Yves Hilpisch 62 Dec 22, 2022
PyTorch implementation of EGVSR: Efficcient & Generic Video Super-Resolution (VSR)

This is a PyTorch implementation of EGVSR: Efficcient & Generic Video Super-Resolution (VSR), using subpixel convolution to optimize the inference speed of TecoGAN VSR model. Please refer to the offi

789 Jan 04, 2023
Audio Visual Emotion Recognition using TDA

Audio Visual Emotion Recognition using TDA RAVDESS database with two datasets analyzed: Video and Audio dataset: Audio-Dataset: https://www.kaggle.com

Combinatorial Image Analysis research group 3 May 11, 2022
RefineMask (CVPR 2021)

RefineMask: Towards High-Quality Instance Segmentation with Fine-Grained Features (CVPR 2021) This repo is the official implementation of RefineMask:

Gang Zhang 191 Jan 07, 2023
Python Assignments for the Deep Learning lectures by Andrew NG on coursera with complete submission for grading capability.

Python Assignments for the Deep Learning lectures by Andrew NG on coursera with complete submission for grading capability.

Utkarsh Agiwal 1 Feb 03, 2022
the code for our CVPR 2021 paper Bilateral Grid Learning for Stereo Matching Network [BGNet]

BGNet This repository contains the code for our CVPR 2021 paper Bilateral Grid Learning for Stereo Matching Network [BGNet] Environment Python 3.6.* C

3DCV developer 87 Nov 29, 2022
Bonnet: An Open-Source Training and Deployment Framework for Semantic Segmentation in Robotics.

Bonnet: An Open-Source Training and Deployment Framework for Semantic Segmentation in Robotics. By Andres Milioto @ University of Bonn. (for the new P

Photogrammetry & Robotics Bonn 314 Dec 30, 2022
RLDS stands for Reinforcement Learning Datasets

RLDS RLDS stands for Reinforcement Learning Datasets and it is an ecosystem of tools to store, retrieve and manipulate episodic data in the context of

Google Research 135 Jan 01, 2023
TensorFlow Metal Backend on Apple Silicon Experiments (just for fun)

tf-metal-experiments TensorFlow Metal Backend on Apple Silicon Experiments (just for fun) Setup This is tested on M1 series Apple Silicon SOC only. Te

Timothy Liu 161 Jan 03, 2023
A Convolutional Transformer for Keyword Spotting

☢️ Audiomer ☢️ Audiomer: A Convolutional Transformer for Keyword Spotting [ arXiv ] [ Previous SOTA ] [ Model Architecture ] Results on SpeechCommands

49 Jan 27, 2022
An Ensemble of CNN (Python 3.5.1 Tensorflow 1.3 numpy 1.13)

An Ensemble of CNN (Python 3.5.1 Tensorflow 1.3 numpy 1.13)

0 May 06, 2022
Solving reinforcement learning tasks which require language and vision

Multimodal Reinforcement Learning JAX implementations of the following multimodal reinforcement learning approaches. Dual-coding Episodic Memory from

Henry Prior 31 Feb 26, 2022