2021
DOI: 10.48550/arxiv.2108.08754
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Temporal Graph Network Embedding with Causal Anonymous Walks Representations

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“…For network-based prediction problems, feature embeddings should be constructed for nodes and edges to form their real-valued representations [39]. DDIGIN first initializes drug embeddings by Node2Vec [38], which uses a biased random walk parameterized by p and q.…”
Section: Details Of Ddigin 221 Drug Embedding Initializationmentioning
confidence: 99%
“…For network-based prediction problems, feature embeddings should be constructed for nodes and edges to form their real-valued representations [39]. DDIGIN first initializes drug embeddings by Node2Vec [38], which uses a biased random walk parameterized by p and q.…”
Section: Details Of Ddigin 221 Drug Embedding Initializationmentioning
confidence: 99%