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xquizitdecorum t1_j58xf15 wrote

Graph embeddings are mentioned below, but also explore graph convolutional neural networks and message-passing neural networks. These methods are extensions of traditional CNN's into graph structures - after all, isn't an image just a lattice graph with pixels as nodes? These models can be used for, as also mentioned below, node and edge prediction/completion, but they can also be used for entire graph-based prediction. I've worked on graph-based prediction for molecular modeling, where I do whole-graph classification.

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Low-Mood3229 OP t1_j59hxu2 wrote

Do you have a link to your work on molecular modeling

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