🔢 Seastar Dataset #33
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We've decided to go ahead with 3 medium size datasets and 2 small size datasets for dynamic graph benchmarking The small size datasets are The medium size datasets are available snap-stanford and twitter-tgn
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Wikipedia Dataset
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Stanford SNAPThe category is defined as networks where edges have timestamps. |
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OGBWe can consider using the node predition datasets available here but these are not really temporal in nature, since at every new timestamp the old feature vectors do not change. Its just that new nodes get added and edges associated to those new nodes get added. |
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On the HuntWe are on the lookout for models that can be used for the edge prediction task. There are three candidates at the moment
We need to find which one we can use and implement in Seastar. |
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We did end up using a total of 10 datasets (5 static and 5 DTDGs) with the TGCN model for benchmarking. Closing this out. |
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Collection of datasets provided by Seastar to be used for GNN model training
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