We present an extractive summarization model based on the Bert and dynamic memory network. The model based on Bert uses the transformer to extract text features and uses the pre-trained model to construct the sentence embeddings. The model based on Bert labels the sentences automatically without using any hand-crafted features and the datasets are symmetry labeled. We also present a dynamic memory network method for extractive summarization. Experiments are conducted on several summarization benchmark datasets. Our model shows comparable performance compared with other extractive summarization methods.
CITATION STYLE
Li, P., & Yu, J. (2021). Extractive summarization based on dynamic memory network. Symmetry, 13(4). https://doi.org/10.3390/sym13040600
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