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GraphBTM: Graph Enhanced Autoencoded Variational Inference for Biterm Topic Model

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Figure

Figure 1: The overall structure of our proposed model GraphBTM. In this example, we sample 4 documents at atime and embed the aggregated biterm graph by GCNs
Table 2: Average topic coherence.
Table 4: Five selected topics from all models.

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