flyingdoog/awesome-graph-explainability-papers
Papers about explainability of GNNs
This project compiles a list of academic papers focusing on making Graph Neural Networks (GNNs) understandable. It helps researchers and data scientists working with complex networked data understand why a GNN model makes a particular prediction. You input a desire to understand GNN behavior, and it outputs a curated list of research papers and platforms explaining how to interpret them.
794 stars.
Use this if you are a researcher or data scientist needing to delve into the theoretical and practical aspects of interpreting predictions from Graph Neural Networks.
Not ideal if you are looking for a simple, out-of-the-box software tool to visualize GNN explanations without diving into academic literature.
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794
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76
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Last pushed
Mar 05, 2026
Commits (30d)
0
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