Semantic Representation Learning of Scientific Literature based on Adaptive Feature and Graph Neural Network
arXiv:2311.00296v2 Announce Type: replace Abstract: Because most scientific literature data are unlabeled, semantic representation learning based on unsupervised graphs has become crucial. To enrich…
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