awesome-graph-explainability-papers
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Papers about explainability of GNNs
awesome-graph-explainability-papers
Papers about explainability of GNNs
Surveys
- Explainability in graph neural networks: A taxonomic survey. Yuan Hao, Yu Haiyang, Gui Shurui, Ji Shuiwang. ARXIV 2020. paper
- A Survey of Explainable Graph Neural Networks: Taxonomy and Evaluation Metrics paper
Most Influential Papers selected by [Cogdl](https://github.com/THUDM/cogdl/blob/master/gnn_papers.md#explainability
- Explainability in graph neural networks: A taxonomic survey. Yuan Hao, Yu Haiyang, Gui Shurui, Ji Shuiwang. ARXIV 2020. paper
- Gnnexplainer: Generating explanations for graph neural networks. Ying Rex, Bourgeois Dylan, You Jiaxuan, Zitnik Marinka, Leskovec Jure. NeurIPS 2019. paper code
- Explainability methods for graph convolutional neural networks. Pope Phillip E, Kolouri Soheil, Rostami Mohammad, Martin Charles E, Hoffmann Heiko. CVPR 2019.paper
- Parameterized Explainer for Graph Neural Network. Luo Dongsheng, Cheng Wei, Xu Dongkuan, Yu Wenchao, Zong Bo, Chen Haifeng, Zhang Xiang. NeurIPS 2020. paper code
- Xgnn: Towards model-level explanations of graph neural networks. Yuan Hao, Tang Jiliang, Hu Xia, Ji Shuiwang. KDD 2020. paper.
- Evaluating Attribution for Graph Neural Networks. Sanchez-Lengeling Benjamin, Wei Jennifer, Lee Brian, Reif Emily, Wang Peter, Qian Wesley, McCloskey Kevin, Colwell Lucy, Wiltschko Alexander. NeurIPS 2020.paper
- PGM-Explainer: Probabilistic Graphical Model Explanations for Graph Neural Networks. Vu Minh, Thai My T.. NeurIPS 2020.paper
- Explanation-based Weakly-supervised Learning of Visual Relations with Graph Networks. Federico Baldassarre and Kevin Smith and Josephine Sullivan and Hossein Azizpour. ECCV 2020.paper
- GCAN: Graph-aware Co-Attention Networks for Explainable Fake News Detection on Social Media. Lu, Yi-Ju and Li, Cheng-Te. ACL 2020.paper
- On Explainability of Graph Neural Networks via Subgraph Explorations. Yuan Hao, Yu Haiyang, Wang Jie, Li Kang, Ji Shuiwang. ICML 2021.paper
Year 2022
- [Arxiv 22] XG-BoT: An Explainable Deep Graph Neural Network for Botnet Detection and Forensics [[paper]]([https://arxiv.org/abs/2207.09088]
- [Arxiv 22] Explaining Dynamic Graph Neural Networks via Relevance Back-propagation [[paper]]([https://arxiv.org/abs/2207.11175]
- [Infocom 22] Interpretability Evaluation of Botnet Detection Model based on Graph Neural Network [paper]
- [Arxiv 22] GRETEL: A unified framework for Graph Counterfactual Explanation Evaluation [paper]
- [TNNLS22] A Meta-Learning Approach for Training Explainable Graph Neural Networks [paper]
- [Arxiv 22] EiX-GNN : Concept-level eigencentrality explainer for graph neural networks [paper]
- [IJCAI 22] What Does My GNN Really Capture? On Exploring Internal GNN Representations [paper]
- [Arxiv 22] MotifExplainer: a Motif-based Graph Neural Network Explainer [paper]
- [Arxiv 22] Faithful Explanations for Deep Graph Models [paper]
- [Arxiv 22] Towards Explanation for Unsupervised Graph-Level Representation Learning [paper]
- [Arxiv 22] BAGEL: A Benchmark for Assessing Graph Neural Network Explanations [paper]
- [KDD 22] On Structural Explanation of Bias in Graph Neural Networks [paper]
- [TNNLS 22] Explaining Deep Graph Networks via Input Perturbation [paper]
- [MICCAI 22] Interpretable Graph Neural Networks for Connectome-Based Brain Disorder Analysis [paper]
- [IEEE 22] Explaining Graph Neural Networks With Topology-Aware Node Selection: Application in Air Quality Inference [paper]
- [EuroS&P 22] Illuminati: Towards Explaining Graph Neural Networks for Cybersecurity Analysis [paper]
- [ArXiv 22]GraphFramEx: Towards Systematic Evaluation of Explainability Methods for Graph Neural Networks [paper]
- [ArXiv 22]On Consistency in Graph Neural Network Interpretation [paper]
- [AISTATS 22] CF-GNNExplainer: Counterfactual Explanations for Graph Neural Networks [paper]
- [AAAI 2022] Prototype-Based Explanations for Graph Neural Networks [paper]
- [ISBI 22] Interpretable Graph Convolutional Network Of Multi-Modality Brain Imaging For Alzheimer’s Disease Diagnosis [paper]
- [Medical Imaging 2022] Phenotype guided interpretable graph convolutional network analysis of fMRI data reveals changing brain connectivity during adolescence [paper]
- [NeuroComputing 22] Perturb more, trap more: Understanding behaviors of graph neural networks [paper]
- [Arxiv 22] BrainIB: Interpretable Brain Network-based Psychiatric Diagnosis with Graph Information Bottleneck [paper]
- [DSN 22] CFGExplainer: Explaining Graph Neural Network-Based Malware Classification from Control Flow Graphs [paper]
- [DASFAA 22] On Glocal Explainability of Graph Neural Networks [paper]
- [AAAI 22] KerGNNs: Interpretable Graph Neural Networks with Graph Kernels[paper]
- [TPAMI 22] Reinforced Causal Explainer for Graph Neural Networks [paper]
- [Arxiv 22] A Comprehensive Survey on Trustworthy Graph Neural Networks: Privacy, Robustness, Fairness, and Explainability [paper]
- [CVPR 22] OrphicX: A Causality-Inspired Latent Variable Model for Interpreting Graph Neural Networks [paper]
- [CVPR 22] Improving Subgraph Recognition with Variational Graph Information Bottleneck [paper]
- [HAL 22] On GNN explanability with activation patterns [paper]
- [Arxiv 22] Explainability in Graph Neural Networks: An Experimental Survey [paper]
- [Arxiv 22] Explainability and Graph Learning from Social Interactions [paper]
- [AISTATS 22] Probing GNN Explainers: A Rigorous Theoretical and Empirical Analysis of GNN Explanation Methods [paper]
- [MLOG-WSDM22] Providing Node-level Local Explanation for node2vec through Reinforcement Learning [paper]
- [The Webconf 22] Learning and Evaluating Graph Neural Network Explanations based on Counterfactual and Factual Reasoning [paper]
- [Arxiv 22] GRAPHSHAP: Motif-based Explanations for Black-box Graph Classifiers [paper]
- [KBS 22] EGNN: Constructing explainable graph neural networks via knowledge distillation [paper]
- [AAAI22] ProtGNN: Towards Self-Explaining Graph Neural Networks [paper]
- [ICML 22] Interpretable and Generalizable Graph Learning via Stochastic Attention Mechanism [paper]
- [Arxiv 22] Explaining Graph-level Predictions with Communication Structure-Aware Cooperative Games [paper]
- [OpenReview 21] Deconfounding to Explanation Evaluation in Graph Neural Networks [paper]
- [ICLR 22] Discovering Invariant Rationales for Graph Neural Networks [paper]
- [BioRxiv 22] GNN-SubNet: disease subnetwork detection with explainable Graph Neural Networks [paper]
- [Arxiv 22] Cognitive Explainers of Graph Neural Networks Based on Medical Concepts [paper]
- [Arxiv 22] MotifExplainer: a Motif-based Graph Neural Network Explainer [paper]
Year 2021
- [Arxiv 21] Towards the Explanation of Graph Neural Networks in Digital Pathology with Information Flows [paper]
- [IJCKG2021] Knowledge Graph Embedding in E-commerce Applications: Attentive Reasoning, Explanations, and Transferable Rules [paper]
- [Arxiv 21] Combining Sub-Symbolic and Symbolic Methods for Explainability [paper]
- [PAKDD 21] SCARLET: Explainable Attention based Graph Neural Network for Fake News spreader prediction [paper]
- [J. Chem. Inf. Model] Coloring Molecules with Explainable Artificial Intelligence for Preclinical Relevance Assessment [paper]
- [BioRxiv 21] APRILE: Exploring the Molecular Mechanisms of Drug Side Effects with Explainable Graph Neural Networks [paper]
- [ISM 21] Edge-Level Explanations for Graph Neural Networks by Extending Explainability Methods for Convolutional Neural Networks [paper]
- [TPAMI 21] Higher-Order Explanations of Graph Neural Networks via Relevant Walks [paper]
- [OpenReview 21] FlowX: Towards Explainable Graph Neural Networks via Message Flows [paper]
- [OpenReview 21] Task-Agnostic Graph Neural Explanations [paper]
- [OpenReview 21] DEGREE: Decomposition Based Explanation for Graph Neural Networks [paper]
- [OpenReview 21] Explainable GNN-Based Models over Knowledge Graphs [paper]
- [NeurIPS 2021] Reinforcement Learning Enhanced Explainer for Graph Neural Networks [paper]
- [NeurIPS 2021] Towards Multi-Grained Explainability for Graph Neural Networks [paper]
- [NeurIPS 2021] Robust Counterfactual Explanations on Graph Neural Networks [paper]
- [CVPR 2021] Quantifying Explainers of Graph Neural Networks in Computational Pathology.[paper]
- [NAACL 2021] Counterfactual Supporting Facts Extraction for Explainable Medical Record Based Diagnosis with Graph Network. [paper]
- [Arxiv 21] A Meta-Learning Approach for Training Explainable Graph Neural Network [paper]
- [Arxiv 21] Jointly Attacking Graph Neural Network and its Explanations [paper]
- [Arxiv 21] SEEN: Sharpening Explanations for Graph Neural Networks using Explanations from Neighborhoods [paper]
- [Arxiv 21] Zorro: Valid, Sparse, and Stable Explanations in Graph Neural Networks [paper]
- [Arxiv 21] Preserve, Promote, or Attack? GNN Explanation via Topology Perturbation [paper]
- [Arxiv 21] Learnt Sparsification for Interpretable Graph Neural Networks [paper]
- [Arxiv 21] Efficient and Interpretable Robot Manipulation with Graph Neural Networks [paper]
- [Arxiv 21] IA-GCN: Interpretable Attention based Graph Convolutional Network for Disease prediction [paper]
- [ICML 2021] On Explainability of Graph Neural Networks via Subgraph Explorations[paper]
- [ICML 2021] Generative Causal Explanations for Graph Neural Networks[paper]
- [ICML 2021] Improving Molecular Graph Neural Network Explainability with Orthonormalization and Induced Sparsity[paper]
- [ICML 2021] Automated Graph Representation Learning with Hyperparameter Importance Explanation[paper]
- [ICML workshop 21] GCExplainer: Human-in-the-Loop Concept-based Explanations for Graph Neural Networks [paper]
- [ICML workshop 21] BrainNNExplainer: An Interpretable Graph Neural Network Framework for Brain Network based Disease Analysis [paper]
- [ICML workshop 21] Reliable Graph Neural Network Explanations Through Adversarial Training [paper]
- [ICML workshop 21] Reimagining GNN Explanations with ideas from Tabular Data [paper]
- [ICML workshop 21] Towards Automated Evaluation of Explanations in Graph Neural Networks [paper]
- [ICML workshop 21] Quantitative Evaluation of Explainable Graph Neural Networks for Molecular Property Prediction [paper]
- [ICML workshop 21] SALKG: Learning From Knowledge Graph Explanations for Commonsense Reasoning [paper]
- [ICLR 2021] Interpreting Graph Neural Networks for NLP With Differentiable Edge Masking[paper]
- [ICLR 2021] Graph Information Bottleneck for Subgraph Recognition [paper]
- [KDD 2021] When Comparing to Ground Truth is Wrong: On Evaluating GNN Explanation Methods[paper]
- [KDD 2021] Counterfactual Graphs for Explainable Classification of Brain Networks [paper]
- [AAAI 2021] Motif-Driven Contrastive Learning of Graph Representations [paper]
- [WWW 2021] Interpreting and Unifying Graph Neural Networks with An Optimization Framework [paper]
- [ICDM 2021] GNES: Learning to Explain Graph Neural Networks [paper]
- [ICDM 2021] GCN-SE: Attention as Explainability for Node Classification in Dynamic Graphs [paper]
- [ICDM 2021] Multi-objective Explanations of GNN Predictions [paper]
- [CIKM 2021] Towards Self-Explainable Graph Neural Network [paper]
- [ECML PKDD 2021] GraphSVX: Shapley Value Explanations for Graph Neural Networks [paper]
- [WiseML 2021] Explainability-based Backdoor Attacks Against Graph Neural Networks [paper]
- [IJCNN 21] MEG: Generating Molecular Counterfactual Explanations for Deep Graph Networks [paper]
- [ICCSA 2021] Understanding Drug Abuse Social Network Using Weighted Graph Neural Networks Explainer [paper]
- [NeSy 21] A New Concept for Explaining Graph Neural Networks [paper]
- [Information Fusion 21] Towards multi-modal causability with Graph Neural Networks enabling information fusion for explainable AI [paper]
- [Patterns 21] hcga: Highly Comparative Graph Analysis for network phenotyping [paper]
Year 2020
- [NeurIPS 2020] Parameterized Explainer for Graph Neural Network.[paper]
- [NeurIPS 2020] PGM-Explainer: Probabilistic Graphical Model Explanations for Graph Neural Networks [paper]
- [KDD 2020] XGNN: Towards Model-Level Explanations of Graph Neural Networks [paper]
- [ACL 2020]GCAN: Graph-aware Co-Attention Networks for Explainable Fake News Detection on Social Media. paper
- [ICML workstop 2020] Contrastive Graph Neural Network Explanation [paper]
- [ICML workstop 2020] Towards Explainable Graph Representations in Digital Pathology [paper]
- [NeurIPS workshop 2020] Explaining Deep Graph Networks with Molecular Counterfactuals [paper]
- [DataMod@CIKM 2020] Exploring Graph-Based Neural Networks for Automatic Brain Tumor Segmentation" [paper]
- [Arxiv 2020] Graph Neural Networks Including Sparse Interpretability [paper]
- [OpenReview 20] A Framework For Differentiable Discovery Of Graph Algorithms [paper]
- [OpenReview 20] Causal Screening to Interpret Graph Neural Networks [paper]
- [Arxiv 20] xFraud: Explainable Fraud Transaction Detection on Heterogeneous Graphs [paper]
- [Arxiv 20] Explaining decisions of Graph Convolutional Neural Networks: patient-specific molecular subnetworks responsible for metastasis prediction in breast cancer [paper]
- [Arxiv 20] Understanding Graph Neural Networks from Graph Signal Denoising Perspectives [paper]
- [Arxiv 20] Understanding the Message Passing in Graph Neural Networks via Power Iteration [paper]
- [Arxiv 20] xERTE: Explainable Reasoning on Temporal Knowledge Graphs for Forecasting Future Links [paper]
- [IJCNN 20] GCN-LRP explanation: exploring latent attention of graph convolutional networks] [paper]