Comments (1)
Thank you for your issue.
Could you please tell me the specific method you used in the 'main' branch? It will be great if you can provide the error messages.
For the model agnostic methods such as SubgraphX and GNNExplainer, you can train your own models with any GNNs, and then directly use this methods.
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