I want to extract global features for input graphs. I thought about using node2vec to build embeddings for each node of a graph. How can I use these node embeddings to come up with global features for the graphs? Does averaging the embeddings of all the nodes in a graph and considering the resulting vector the feature vector of the graph seem appropriate?

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I would consider two distinct approaches.

- Use node2vec, and use the node's embedding with document embedding methods from the NLP words to extract global features (Doc2vec etc).
- Use convolution network on top of a graph's edge matrix. Good post about that by Thomas Kipf.