Skip to content

m30m/gnn-explainability

Folders and files

NameName
Last commit message
Last commit date

Latest commit

f65b3cf · May 27, 2021

History

88 Commits
Feb 6, 2021
Jan 21, 2021
Feb 6, 2021
May 27, 2021
Feb 1, 2021
Jan 13, 2021
Feb 5, 2021
Feb 3, 2021
Feb 3, 2021
Dec 29, 2020
Dec 30, 2020

Repository files navigation

When Comparing to Ground Truth is Wrong: On Evaluating GNN Explanation Methods

The is the source code for the paper When Comparing to Ground Truth is Wrong: On Evaluating GNN Explanation Methods

Required libraries

You can install the required libraries by running:

pip install -r requirements.txt

How to run the experiments:

You can use the main.py script for running the experiments. Here is the help manual for the script:

Usage: main.py [OPTIONS] EXPERIMENT:[infection|community|saturation]

Arguments:
  EXPERIMENT:[infection|community|saturation]
                                  Dataset to use  [required]

Options:
  --sample-count INTEGER          How many times to retry the whole experiment
                                  [default: 10]

  --num-layers INTEGER            Number of layers in the GNN model  [default: 4]

  --concat-features / --no-concat-features
                                  Concat embeddings of each convolutional
                                  layer for final fc layers  [default: True]

  --conv-type TEXT                Convolution class. Can be GCNConv or
                                  GraphConv  [default: GraphConv]
  --help                          Show this message and exit.

Experiment results in the paper were produced by the following commands:

python main.py infection
python main.py community
python main_node.py saturation --num-layers 1 # for the negative evidence experiment

You can run the Pitfall2-Example.ipynb notebook independently for experimenting with the toy dataset in pitfall 2 explanation.

How to see the results:

Run the mlflow UI by running the following command in the root directory of the project:

mlflow ui

You can view the UI using URL http://localhost:5000. Here is a sample screenshot:

Sample mlflow screenshot

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published