Structural Deep Network Embedding - SIGKDD
However, to the best of our knowledge, there have been few deep learning works handling networks, especially learning network rep-resentations. In [9], Restricted Boltzmann Machines were adopted to do collaborative filtering. [30] adopted deep autoencoder to do graph clustering. [5] proposed a heterogeneous deep model to do heterogeneous data ...
Network, Structural, Deep, Knowledge, Embedding, Structural deep network embedding
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Fake News Detection on Social Media: A Data …
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Decoder, Matrix, Deep, Completion, Graph, Convolutional, Graph convolutional matrix completion
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www.kdd.orgnetwork embedding method, termed as TransR, to extract items’ structural representations by considering the heterogeneity of both nodes and relationships. We apply stacked denoising auto-encoders and stacked convolutional auto-encoders, which are two types of deep learning based embedding techniques, to extract items’ tex-
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