node2vec: Scalable Feature Learning for Networks
timization computationally efficient and with a carefully designed objective, it results in task-independent features that closely match task-specific approaches in predictive accuracy [21, 23]. However, current techniques fail to satisfactorily define and opti-mize a reasonable objective required for scalable unsupervised fea-
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