Scalable Graph Neural Networks for Heterogeneous Graphs

Related tags

Deep LearningNARS
Overview

Neighbor Averaging over Relation Subgraphs (NARS)

NARS is an algorithm for node classification on heterogeneous graphs, based on scalable neighbor averaging techniques that have been previously used in e.g. SIGN to heterogeneous scenarios by generating neighbor-averaged features on sampled relation induced subgraphs.

For more details, please check out our paper:

Scalable Graph Neural Networks for Heterogeneous Graphs

Setup

Dependencies

  • torch==1.5.1+cu101
  • dgl-cu101==0.4.3.post2
  • ogb==1.2.1
  • dglke==0.1.0

Docker

We have prepared a dockerfile for building a container with clean environment and all required dependencies. Please checkout instructions in docker.

Data Preparation

Download and pre-process OAG dataset (optional)

If you plan to evaluate on OAG dataset, you need to follow instructions in oag_dataset to download and pre-process dataset.

Generate input for featureless node types

In academic graph datasets (ACM, MAG, OAG) in which only paper nodes are associated with input features. NARS featurizes other node types with TransE relational graph embedding pre-trained on the graph structure.

Please follow instructions in graph_embed to generate embeddings for each dataset.

Sample relation subsets

NARS samples Relation Subsets (see our paper for details). Please follow the instructions in sample_relation_subsets to generate these subsets.

Or you may skip this step and use the example subsets that have added to this repository.

Run NARS Experiments

NARS are evaluated on three academic graph datasets to predict publishing venues and fields of papers.

ACM

python3 train.py --dataset acm --use-emb TransE_acm --R 2 \
    --use-relation-subsets sample_relation_subsets/examples/acm \
    --num-hidden 64 --lr 0.003 --dropout 0.7 --eval-every 1 \
    --num-epochs 100 --input-dropout

OGBN-MAG

python3 train.py --dataset mag --use-emb TransE_mag --R 5 \
    --use-relation-subset sample_relation_subsets/examples/mag \
    --eval-batch-size 50000 --num-hidden 512 --lr 0.001 --batch-s 50000 \
    --dropout 0.5 --num-epochs 1000

OAG (venue prediction)

python3 train.py --dataset oag_venue --use-emb TransE_oag_venue --R 3 \
    --use-relation-subsets sample_relation_subsets/examples/oag_venue \
    --eval-batch-size 25000 --num-hidden 256 --lr 0.001 --batch-size 1000 \
    --data-dir oag_dataset --dropout 0.5 --num-epochs 200

OAG (L1-field prediction)

python3 train.py --dataset oag_L1 --use-emb TransE_oag_L1 --R 3 \
    --use-relation-subsets sample_relation_subsets/examples/oag_L1 \
    --eval-batch-size 25000 --num-hidden 256 --lr 0.001 --batch-size 1000 \
    --data-dir oag_dataset --dropout 0.5 --num-epochs 200

Results

Here is a summary of model performance using example relation subsets:

For ACM and OGBN-MAG dataset, the task is to predict paper publishing venue.

Dataset # Params Test Accuracy
ACM 0.40M 0.9305±0.0043
OGBN-MAG 4.13M 0.5240±0.0016

For OAG dataset, there are two different node predictions tasks: predicting venue (single-label) and L1-field (multi-label). And we follow Heterogeneous Graph Transformer to evaluate using NDCG and MRR metrics.

Task # Params NDCG MRR
Venue 2.24M 0.5214±0.0010 0.3434±0.0012
L1-field 1.41M 0.86420.0022 0.8542±0.0019

Run with limited GPU memory

The above commands were tested on Tesla V100 (32 GB) and Tesla T4 (15GB). If your GPU memory isn't enough for handling large graphs, try the following:

  • add --cpu-process to the command to move preprocessing logic to CPU
  • reduce evaluation batch size with --eval-batch-size. The evaluation result won't be affected since model is fixed.
  • reduce training batch with --batch-size

Run NARS with Reduced CPU Memory Footprint

As mentioned in our paper, using a lot of relation subsets may consume too much CPU memory. To reduce CPU memory footprint, we implemented an optimization in train_partial.py which trains part of our feature aggregation weights at a time.

Using OGBN-MAG dataset as an example, the following command randomly picks 3 subsets from all 8 sampled relation subsets and trains their aggregation weights every 10 epochs.

python3 train_partial.py --dataset mag --use-emb TransE_mag --R 5 \
    --use-relation-subsets sample_relation_subsets/examples/mag \
    --eval-batch-size 50000 --num-hidden 512 --lr 0.001 --batch-size 50000 \
    --dropout 0.5 --num-epochs 1000 --sample-size 3 --resample-every 10

Citation

Please cite our paper with:

@article{yu2020scalable,
    title={Scalable Graph Neural Networks for Heterogeneous Graphs},
    author={Yu, Lingfan and Shen, Jiajun and Li, Jinyang and Lerer, Adam},
    journal={arXiv preprint arXiv:2011.09679},
    year={2020}
}

License

NARS is CC-by-NC licensed, as found in the LICENSE file.

Owner
Facebook Research
Facebook Research
Flexible Networks for Learning Physical Dynamics of Deformable Objects (2021)

Flexible Networks for Learning Physical Dynamics of Deformable Objects (2021) By Jinhyung Park, Dohae Lee, In-Kwon Lee from Yonsei University (Seoul,

Jinhyung Park 0 Jan 09, 2022
Unofficial Implementation of MLP-Mixer in TensorFlow

mlp-mixer-tf Unofficial Implementation of MLP-Mixer [abs, pdf] in TensorFlow. Note: This project may have some bugs in it. I'm still learning how to i

Rishabh Anand 24 Mar 23, 2022
Official PyTorch implementation of the Fishr regularization for out-of-distribution generalization

Fishr: Invariant Gradient Variances for Out-of-distribution Generalization Official PyTorch implementation of the Fishr regularization for out-of-dist

62 Dec 22, 2022
Unofficial implementation of Pix2SEQ

Unofficial-Pix2seq: A Language Modeling Framework for Object Detection Unofficial implementation of Pix2SEQ. Please use this code with causion. Many i

159 Dec 12, 2022
TAug :: Time Series Data Augmentation using Deep Generative Models

TAug :: Time Series Data Augmentation using Deep Generative Models Note!!! The package is under development so be careful for using in production! Fea

35 Dec 06, 2022
Deep Learning and Logical Reasoning from Data and Knowledge

Logic Tensor Networks (LTN) Logic Tensor Network (LTN) is a neurosymbolic framework that supports querying, learning and reasoning with both rich data

171 Dec 29, 2022
PyTorch implementation of the Pose Residual Network (PRN)

Pose Residual Network This repository contains a PyTorch implementation of the Pose Residual Network (PRN) presented in our ECCV 2018 paper: Muhammed

Salih Karagoz 289 Nov 28, 2022
Rethinking Nearest Neighbors for Visual Classification

Rethinking Nearest Neighbors for Visual Classification arXiv Environment settings Check out scripts/env_setup.sh Setup data Download the following fin

Menglin Jia 29 Oct 11, 2022
This is the code used in the paper "Entity Embeddings of Categorical Variables".

This is the code used in the paper "Entity Embeddings of Categorical Variables". If you want to get the original version of the code used for the Kagg

Cheng Guo 845 Nov 29, 2022
利用python脚本实现微信、支付宝账单的合并,并保存到excel文件实现自动记账,可查看可视化图表。

KeepAccounts_v2.0 KeepAccounts.exe和其配套表格能够实现微信、支付宝官方导出账单的读取合并,为每笔帐标记类型,并按月份和类型生成可视化图表。再也不用消费一笔记一笔,每月仅需10分钟,记好所有的帐。 作者: MickLife Bilibili: https://spac

159 Jan 01, 2023
To model the probability of a soccer coach leave his/her team during Campeonato Brasileiro for 10 chosen teams and considering years 2018, 2019 and 2020.

To model the probability of a soccer coach leave his/her team during Campeonato Brasileiro for 10 chosen teams and considering years 2018, 2019 and 2020.

Larissa Sayuri Futino Castro dos Santos 1 Jan 20, 2022
Proof-Of-Concept Piano-Drums Music AI Model/Implementation

Rock Piano "When all is one and one is all, that's what it is to be a rock and not to roll." ---Led Zeppelin, "Stairway To Heaven" Proof-Of-Concept Pi

Alex 4 Nov 28, 2021
"Learning Free Gait Transition for Quadruped Robots vis Phase-Guided Controller"

PhaseGuidedControl The current version is developed based on the old version of RaiSim series, and possibly requires further modification. It will be

X-Mechanics 12 Oct 21, 2022
This repository focus on Image Captioning & Video Captioning & Seq-to-Seq Learning & NLP

Awesome-Visual-Captioning Table of Contents ACL-2021 CVPR-2021 AAAI-2021 ACMMM-2020 NeurIPS-2020 ECCV-2020 CVPR-2020 ACL-2020 AAAI-2020 ACL-2019 NeurI

Ziqi Zhang 362 Jan 03, 2023
[ ICCV 2021 Oral ] Our method can estimate camera poses and neural radiance fields jointly when the cameras are initialized at random poses in complex scenarios (outside-in scenes, even with less texture or intense noise )

GNeRF This repository contains official code for the ICCV 2021 paper: GNeRF: GAN-based Neural Radiance Field without Posed Camera. This implementation

Quan Meng 191 Dec 26, 2022
level1-image-classification-level1-recsys-09 created by GitHub Classroom

level1-image-classification-level1-recsys-09 ❗ 주제 설명 COVID-19 Pandemic 상황 속 마스크 착용 유무 판단 시스템 구축 마스크 착용 여부, 성별, 나이 총 세가지 기준에 따라 총 18개의 class로 구분하는 모델 ?

6 Mar 17, 2022
NeurIPS-2021: Neural Auto-Curricula in Two-Player Zero-Sum Games.

NAC Official PyTorch implementation of NAC from the paper: Neural Auto-Curricula in Two-Player Zero-Sum Games. We release code for: Gradient based ora

Xidong Feng 19 Nov 11, 2022
A MNIST-like fashion product database. Benchmark

Fashion-MNIST Table of Contents Why we made Fashion-MNIST Get the Data Usage Benchmark Visualization Contributing Contact Citing Fashion-MNIST License

Zalando Research 10.5k Jan 08, 2023
ResNEsts and DenseNEsts: Block-based DNN Models with Improved Representation Guarantees

ResNEsts and DenseNEsts: Block-based DNN Models with Improved Representation Guarantees This repository is the official implementation of the empirica

Kuan-Lin (Jason) Chen 2 Oct 02, 2022
PyTorch and Tensorflow functional model definitions

functional-zoo Model definitions and pretrained weights for PyTorch and Tensorflow PyTorch, unlike lua torch, has autograd in it's core, so using modu

Sergey Zagoruyko 590 Dec 22, 2022