Graph Normalization
Learning Graph Normalization for Graph Neural Networks ArXiv
note1: Our implementation is based on graphdeeplearning/benchmarking-gnns, thanks for their great work!
note2: For some business reasons, the released code may be a little different from our original code. If you find any problem, feel free to contact us.
Updates
Sep 28, 2020
- add Softmax United Norm
Sep 24, 2020
- First release of the project.
1. Benchmark initialization
Follow these instructions to install the benchmark and setup the environment.
Proceed as follows to download the benchmark datasets.
Use this page to run the codes and reproduce the published results.
2. Graph Normalization
Node-wise Normalization: equivalent to Layer Normalization
Adjance-wise Normalization: adjance_norm.py
Graph-wise Normalization: graph_norm.py
Batch-wise normalization: equivalent to Batch Normalization
United Normalization: united_norm.py
3. Usage
Modify the value of norm
in config.json
or add one kind of norm after --norm
.
Run the following commandοΌ
python main_SBMs_node_classification.py --dataset CLUSTER --gpu_id 3 --seed 41 --config
'configs/SBMs_node_clustering_GatedGCN_CLUSTER_100k.json' --norm GraphNorm
The choices of norm
consist of "NodeNorm", "AdjanceNorm", "GraphNorm", "BatchNorm", "UnitedNorm","UnitedNormSoftmax"
4. SROIE
Introduction
For a receipt, each text bbox can be viewed as a node of a graph. Its positions, the attributes of bounding box, and the corresponding text are used as the node feature. Our goal is to label each node (text bounding box) with five different classes, including Company, Date, Address, Total and Other. Sample images are shown below:
Dataset
SROIE Dataset Download: Dropbox, BaiduPan: u4tm
Train
cd sroie
python train.py
Experiment
Text Field | No Norm | Node-wise | Adjance-wise | Graph-wise | Batch-wise | United Norm |
---|---|---|---|---|---|---|
Total | 87.5 | 91.9 | 74.5 | 96.8 | 94.8 | 94.5 |
Date | 96.5 | 98.0 | 95.9 | 98.8 | 97.4 | 97.4 |
Address | 91.6 | 92.0 | 80.0 | 94.5 | 93.9 | 93.6 |
Company | 92.2 | 93.3 | 87.8 | 94.5 | 93.0 | 94.8 |
Average | 92.0 | 94.0 | 84.6 | 96.2 | 94.8 | 95.1 |
5. Reference
@misc{chen2020learning,
title={Learning Graph Normalization for Graph Neural Networks},
author={Yihao Chen and Xin Tang and Xianbiao Qi and Chun-Guang Li and Rong Xiao},
year={2020},
eprint={2009.11746},
archivePrefix={arXiv},
primaryClass={cs.LG}
}
License
This project is licensed under the MIT License. See LICENSE for more details.