node2vec: Scalable Feature Learning for Networks
(sample) network neighborhoods for nodes. Our key contribution is in defining a flexible notion of a node’s network neighborhood. By choosing an appropriate notion of a neighborhood, node2vec can learn representations that organize nodes based on their network roles and/or communities they be-long to.
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