Comments (2)
Thank you for catching it. This is a legacy code that we used to test random splits of input data. It is not used in the experiments. Please refer to
graphless-neural-networks/utils.py
Line 103 in 76da5d1
from graphless-neural-networks.
Thank you for your quick reply. It's very helpful for me!
from graphless-neural-networks.
Related Issues (10)
- Cannot reproduce the results even with the same random seed HOT 2
- Failed to build environment HOT 1
- The function graph_split() seems to contradict the inductive scenarios. HOT 2
- speed comparison HOT 3
- Error Unpickling the Cora.npz data (and others) HOT 1
- About min-cut HOT 3
- A paper that copy your paper [一篇论文洗稿您的论文]
- The problem of inference time HOT 2
- OGB data
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