2021
DOI: 10.1007/s10618-021-00780-6
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Attention based adversarially regularized learning for network embedding

Abstract: Network embedding, also known as graph embedding and network representation learning, is an effective method for representing graphs or network data in a lowdimensional space. Most existing methods focus on preserving network topology and minimizing the reconstruction errors to learn a low-dimensional embedding vector representation of the network. In addition, some researchers are devoted to the embedding learning of attribute networks. These researchers usually study the two matrices of network structure and… Show more

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