Machine Learning (ML) systems are a building part of the modern tools that impact our daily life in several application domains. Due to their black-box nature, those systems are hardly adopted in application domains (e.g. health, finance) where understanding the decision process is of paramount importance. Explanation methods were developed to explain how the ML model has taken a specific decision for a given case/instance. Graph Counterfactual Explanations (GCE) is one of the explanation techniques adopted in the Graph Learning domain. The existing works on Graph Counterfactual Explanations diverge mostly in the problem definition, application domain, test data, and evaluation metrics, and most existing works do not compare exhaustively against other counterfactual explanation techniques present in the literature. Here, we release GRETEL [1,2], a unified framework to develop and test GCE methods in several settings. GRETEL [1,2] is an open-source framework for Evaluating Graph Counterfactual Explanation Methods. It is implemented using the Object-Oriented paradigm and the Factory Method design pattern. Our main goal is to create a generic platform that allows the researchers to speed up the process of developing and testing new Graph Counterfactual Explanation Methods. GRETEL is a highly extensible evaluation framework that promotes Open Science and the reproducibility of the evaluation by providing a set of well-defined mechanisms to integrate and manage easily: both real and synthetic datasets, ML models, state-of-the-art explanation techniques, and evaluation measures.
GRETEL [1, 2] is an open source framework for Evaluating Graph Counterfactual Explanation Methods. It is implemented using the Object Oriented paradigm and the Factory Method design pattern. Our main goal is to create a generic platform that allows the researchers to speed up the process of developing and testing new Graph Counterfactual Explanation Methods.
See the GRETEL's wiki
Please cite our papers if you use GRETEL in your projects:
Mario Alfonso Prado-Romero and Giovanni Stilo. 2022. GRETEL: Graph Counterfactual Explanation Evaluation Framework. In Proceedings of the 31st ACM International Conference on Information and Knowledge Management (CIKM '22). Association for Computing Machinery, New York, NY, USA. https://doi.org/10.1145/3511808.3557608
@inproceedings{prado-romero2022gretel,
title={GRETEL: Graph Counterfactual Explanation Evaluation Framework},
author={Prado-Romero, Mario Alfonso and Stilo, Giovanni},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
isbn = {9781450392365},
year={2022},
doi = {10.1145/3511808.3557608},
booktitle={Proceedings of the 31st ACM International Conference on Information and Knowledge Management},
location = {Atlanta, GA, USA},
series = {CIKM '22}
}
Mario Alfonso Prado-Romero, Bardh Prenkaj, and Giovanni Stilo. 2023. Developing and Evaluating Graph Counterfactual Explanation with GRETEL. In Proceedings of the Sixteenth ACM International Conference on Web Search and Data Mining (WSDM '23). Association for Computing Machinery, New York, NY, USA, 1180–1183. https://doi.org/10.1145/3539597.3573026
@inproceedings{prado-romero2023developing,
author = {Prado-Romero, Mario Alfonso and Prenkaj, Bardh and Stilo, Giovanni},
title = {Developing and Evaluating Graph Counterfactual Explanation with GRETEL},
year = {2023},
isbn = {9781450394079},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
doi = {10.1145/3539597.3573026},
booktitle = {Proceedings of the Sixteenth ACM International Conference on Web Search and Data Mining},
pages = {1180–1183},
location = {Singapore, Singapore},
series = {WSDM '23}
}
Mario Alfonso Prado-Romero, Bardh Prenkaj, Giovanni Stilo, and Fosca Giannotti. 2023. A Survey on Graph Counterfactual Explanations: Definitions, Methods, Evaluation, and Research Challenges. ACM Comput. Surv. Just Accepted (September 2023). https://doi.org/10.1145/3618105
@article{prado-romero2023survey,
author = {Prado-Romero, Mario Alfonso and Prenkaj, Bardh and Stilo, Giovanni and Giannotti, Fosca},
title = {A Survey on Graph Counterfactual Explanations: Definitions, Methods, Evaluation, and Research Challenges},
year = {2023},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
issn = {0360-0300},
url = {https://doi.org/10.1145/3618105},
doi = {10.1145/3618105},
journal = {ACM Comput. Surv.},
month = {sep}
}
Tree-Cycles [3]: Synthetic data set where each instance is a graph. The instance can be either a tree or a tree with several cycle patterns connected to the main graph by one edge
Tree-Infinity: It follows the approach of the Tree-Cycles, but instead of cycles, there is an infinity shape.
ASD [4]: Autism Spectrum Disorder (ASD) taken from the Autism Brain Imagine Data Exchange (ABIDE).
ADHD [4]: Attention Deficit Hyperactivity Disorder (ADHD), is taken from the USC Multimodal Connectivity Database (USCD).
BBBP [5]: Blood-Brain Barrier Permeation is a molecular dataset. Predicting if a molecule can permeate the blood-brain barrier.
HIV [5]: It is a molecular dataset that classifies compounds based on their ability to inhibit HIV.
KNN
SVM
GCN
ASD Custom Oracle [4] (Rules specific for the ASD dataset)
Tree-Cycles Custom Oracle (Guarantees 100% accuracy on Tree-Cycles dataset)
DCE Search: Distribution Compliant Explanation Search, mainly used as a baseline, does not make any assumption about the underlying dataset and searches for a counterfactual instance in it.
Oblivious Bidirectional Search (OBS) [4]: It is an heuristic explanation method that uses a 2-stage approach.
Data-Driven Bidirectional Search (DDBS) [4]: It follows the same logic as OBS. The main difference is that this method uses the probability (computed on the original dataset) of each edge to appear in a graph of a certain class to drive the counterfactual search process.
MACCS [5]: Model Agnostic Counterfactual Compounds with STONED (MACCS) is specifically designed to work with molecules.
MEG [6]: Molecular Explanation Generator is an RL-based explainer for molecular graphs.
CFF [7] Is a learning-based method that uses Counterfactual and Factual Reasoning in the perturbation mask generation process.
CLEAR [8] is a learning based explanation method that provides Generative Counterfactual Explanations on Graphs.
CounteRGAN [9] is a porting of a GAN-based explanation method for images
Prado-Romero, M.A. and Stilo, G., 2022, October. Gretel: Graph counterfactual explanation evaluation framework. In Proceedings of the 31st ACM International Conference on Information & Knowledge Management (pp. 4389-4393).
Prado-Romero, M.A., Prenkaj, B. and Stilo, G., 2023, February. Developing and Evaluating Graph Counterfactual Explanation with GRETEL. In Proceedings of the Sixteenth ACM International Conference on Web Search and Data Mining (pp. 1180-1183).
Zhitao Ying, Dylan Bourgeois, Jiaxuan You, Marinka Zitnik, and Jure Leskovec. 2019. Gnnexplainer: Generating explanations for graph neural networks. Ad- vances in neural information processing systems 32 (2019)
Carlo Abrate and Francesco Bonchi. 2021. Counterfactual Graphs for Explainable Classification of Brain Networks. In Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data Mining. 2495–2504
Geemi P Wellawatte, Aditi Seshadri, and Andrew D White. 2022. Model agnostic generation of counterfactual explanations for molecules. Chemical science 13, 13 (2022), 3697–370
Numeroso, D. and Bacciu, D., 2021, July. Meg: Generating molecular counterfactual explanations for deep graph networks. In 2021 International Joint Conference on Neural Networks (IJCNN) (pp. 1-8). IEEE.
Tan, J., Geng, S., Fu, Z., Ge, Y., Xu, S., Li, Y. and Zhang, Y., 2022, April. Learning and evaluating graph neural network explanations based on counterfactual and factual reasoning. In Proceedings of the ACM Web Conference 2022 (pp. 1018-1027).
Ma, J., Guo, R., Mishra, S., Zhang, A. and Li, J., 2022. Clear: Generative counterfactual explanations on graphs. Advances in Neural Information Processing Systems, 35, pp.25895-25907.
Nemirovsky, D., Thiebaut, N., Xu, Y. and Gupta, A., 2022, August. CounteRGAN: Generating counterfactuals for real-time recourse and interpretability using residual GANs. In Uncertainty in Artificial Intelligence (pp. 1488-1497). PMLR.