On Evaluation Metrics for Graph Generative Models

Overview

On Evaluation Metrics for Graph Generative Models

Authors: Rylee Thompson, Boris Knyazev, Elahe Ghalebi, Jungtaek Kim, Graham Taylor

This is the official repository for the paper On Evaluation Metrics for Graph Generative Models (hyperlink TBD). Our evaluation metrics enable the efficient computation of the distance between two sets of graphs regardless of domain. In addition, they are more expressive than previous metrics and easily incorporate continuous node and edge features in evaluation. If you're primarily interested in using our metrics in your work, please see evaluation/ for a more lightweight setup and installation and Evaluation_examples.ipynb for examples on how to utilize our code. The remainder of this README describes how to recreate our results which introduces additional dependencies.

Table of Contents

Requirements and installation

The main requirements are:

  • Python 3.7
  • PyTorch 1.8.1
  • DGL 0.6.1
pip install -r requirements.txt

Following that, install an appropriate version of DGL 0.6.1 for your system and download the proteins and ego datasets by running ./download_datasets.sh.

Reproducing main results

The arguments of our scripts are described in config.py.

Permutation experiments

Below, examples to run the scripts to run certain experiments are shown. In general, experiments can be run as:

python main.py --permutation_type={permutation type} --dataset={dataset}\
{feature_extractor} {feature_extractor_args}

For example, to run the mixing random graphs experiment on the proteins dataset using random-GNN-based metrics for a single random seed:

python main.py --permutation_type=mixing-random --dataset=proteins\
gnn

The hyperparameters of the GNN are set to our recommendations by default, however, they are easily changed by additional flags. To run the same experiment using the degree MMD metric:

python main.py --permutation_type=mixing-random --dataset=proteins\
mmd-structure --statistic=degree

Rank correlations are automatically computed and printed at the end of each experiment, and results are stored in experiment_results/. Recreating our results requires running variations of the above commands thousands of times. To generate these commands and store them in a bash script automatically, run python create_bash_script.py.

Pretraining GNNs

To pretrain a GNN for use in our permutation experiments, run python GIN_train.py, and see GIN_train.py for tweakable hyperparameters. Alternatively, the pretrained models used in our experiments can be downloaded by running ./download_pretrained_models.sh. Once you have a pretrained model, the permutation experiments can be ran using:

python main.py --permutation_type={permutation type} --dataset={dataset}\
gnn --use_pretrained {feature_extractor_args}

Generating graphs

Some of our experiments use graphs generated by GRAN. To find instructions on training and generating graphs using GRAN, please see the official GRAN repository. Alternatively, the graphs generated by GRAN used in our experiments can be downloaded by running ./download_gran_graphs.sh.

Visualization

All code for visualizing results and creating tables is found in data_visualization.ipynb.

License

We release our code under the MIT license.

Citation

@inproceedings{thompson2022evaluation,
  title={On Evaluation Metrics for Graph Generative Models},
  author={Thompson, Rylee, and Knyazev, Boris and Ghalebi, Elahe and Kim, Jungtaek, and Taylor, Graham W},
booktitle={International Conference on Learning Representations},
  year={2022}  
}
Context-Aware Image Matting for Simultaneous Foreground and Alpha Estimation

Context-Aware Image Matting for Simultaneous Foreground and Alpha Estimation This is the inference codes of Context-Aware Image Matting for Simultaneo

Qiqi Hou 125 Oct 22, 2022
A user-friendly research and development tool built to standardize RL competency assessment for custom agents and environments.

Built with โค๏ธ by Sam Showalter Contents Overview Installation Dependencies Usage Scripts Standard Execution Environment Development Environment Benchm

SRI-AIC 1 Nov 18, 2021
A library for hidden semi-Markov models with explicit durations

hsmmlearn hsmmlearn is a library for unsupervised learning of hidden semi-Markov models with explicit durations. It is a port of the hsmm package for

Joris Vankerschaver 69 Dec 20, 2022
Repository for GNSS-based position estimation using a Deep Neural Network

Code repository accompanying our work on 'Improving GNSS Positioning using Neural Network-based Corrections'. In this paper, we present a Deep Neural

32 Dec 13, 2022
Unsupervised Semantic Segmentation by Contrasting Object Mask Proposals.

Unsupervised Semantic Segmentation by Contrasting Object Mask Proposals This repo contains the Pytorch implementation of our paper: Unsupervised Seman

Wouter Van Gansbeke 335 Dec 28, 2022
Coded illumination for improved lensless imaging

CodedCam Coded Illumination for Improved Lensless Imaging Paper | Supplementary results | Data and Code are available. Coded illumination for improved

Computational Sensing and Information Processing Lab 1 Nov 29, 2021
A generalist algorithm for cell and nucleus segmentation.

Cellpose | A generalist algorithm for cell and nucleus segmentation. Cellpose was written by Carsen Stringer and Marius Pachitariu. To learn about Cel

MouseLand 733 Dec 29, 2022
The original implementation of TNDM used in the NeurIPS 2021 paper (no longer being updated)

TNDM - Targeted Neural Dynamical Modeling Note: This code is no longer being updated. The official re-implementation can be found at: https://github.c

1 Jul 21, 2022
Implementation for NeurIPS 2021 Submission: SparseFed

READ THIS FIRST This repo is an anonymized version of an existing repository of GitHub, for the AIStats 2021 submission: SparseFed: Mitigating Model P

2 Jun 15, 2022
PiRapGenerator - Make anyone rap the digits of pi

PiRapGenerator Make anyone rap the digits of pi (sample files are of Ted Nivison

7 Oct 02, 2022
Using this you can control your PC/Laptop volume by Hand Gestures (pinch-in, pinch-out) created with Python.

Hand Gesture Volume Controller Using this you can control your PC/Laptop volume by Hand Gestures (pinch-in, pinch-out). Code Firstly I have created a

Tejas Prajapati 16 Sep 11, 2021
A graph adversarial learning toolbox based on PyTorch and DGL.

GraphWar: Arms Race in Graph Adversarial Learning NOTE: GraphWar is still in the early stages and the API will likely continue to change. ๐Ÿš€ Installat

Jintang Li 54 Jan 05, 2023
All supplementary material used by me while TA-ing CS3244: Machine Learning

CS3244-Tutorial-Material All supplementary material used by me while TA-ing CS3244: Machine Learning at NUS School of Computing. What is this? I teach

Rishabh Anand 18 Sep 23, 2022
HybridNets: End-to-End Perception Network

HybridNets: End2End Perception Network HybridNets Network Architecture. HybridNets: End-to-End Perception Network by Dat Vu, Bao Ngo, Hung Phan ๐Ÿ“ง FPT

Thanh Dat Vu 370 Dec 29, 2022
Dynamic Graph Event Detection

DyGED Dynamic Graph Event Detection Get Started pip install -r requirements.txt TODO Paper link to arxiv, and how to cite. Twitter Weather dataset tra

Mert KoลŸan 3 May 09, 2022
A PyTorch implementation of NeRF (Neural Radiance Fields) that reproduces the results.

NeRF-pytorch NeRF (Neural Radiance Fields) is a method that achieves state-of-the-art results for synthesizing novel views of complex scenes. Here are

Yen-Chen Lin 3.2k Jan 08, 2023
Neuron Merging: Compensating for Pruned Neurons (NeurIPS 2020)

Neuron Merging: Compensating for Pruned Neurons Pytorch implementation of Neuron Merging: Compensating for Pruned Neurons, accepted at 34th Conference

Woojeong Kim 33 Dec 30, 2022
An implementation of an abstract algebra for music tones (pitches).

nbdev template Use this template to more easily create your nbdev project. If you are using an older version of this template, and want to upgrade to

Open Music Kit 0 Oct 10, 2022
Implementation of the ๐Ÿ˜‡ Attention layer from the paper, Scaling Local Self-Attention For Parameter Efficient Visual Backbones

HaloNet - Pytorch Implementation of the Attention layer from the paper, Scaling Local Self-Attention For Parameter Efficient Visual Backbones. This re

Phil Wang 189 Nov 22, 2022
Code for Max-Margin Contrastive Learning - AAAI 2022

Max-Margin Contrastive Learning This is a pytorch implementation for the paper Max-Margin Contrastive Learning accepted to AAAI 2022. This repository

Anshul Shah 12 Oct 22, 2022