Comments (1)
Try this one:
https://pytorch.org/docs/stable/generated/torch.sparse.mm.html
Change the adjacency matrix to sparse and do matrix multiplication with sparse.mm.
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Related Issues (20)
- How to choose ks and dim based on your experience?
- Have you provided the tensorflow version?
- Dropout, Normalization
- Variational Auto-Encoder ? HOT 1
- This code use test accuracy to select model HOT 2
- The order of uppooling and skip-connection seems wrong HOT 1
- Hyper-parameters for node classification tasks? HOT 2
- cat: results/DD.txt: No such file or directory
- Model selection?
- I have trained my data on this net, but I don't know how to prediction ? HOT 1
- Dataset format HOT 1
- I have trained this model with source code, but how can I not get the accuracy rate in the paper ?
- Whether the gPool layer can be extracted separately for use?
- 针对大图做节点分类的问题 HOT 1
- network setting for node classification
- top_k_graph() function not handling batched data?
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- Questions about the graph classification results
- Node classification
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