Publication | Closed Access
Dual Encoding for Abstractive Text Summarization
90
Citations
38
References
2018
Year
EngineeringEntity SummarizationDual EncodingRecurrent Neural NetworkAutomatic SummarizationText MiningNatural Language ProcessingText SummarizationComputational LinguisticsLanguage StudiesMachine TranslationSequence ModellingDual Encoding ModelDeep LearningMulti-modal SummarizationDuc 2004Dual EncoderLinguisticsLanguage Generation
Recurrent neural network-based sequence-to-sequence attentional models have proven effective in abstractive text summarization. In this paper, we model abstractive text summarization using a dual encoding model. Different from the previous works only using a single encoder, the proposed method employs a dual encoder including the primary and the secondary encoders. Specifically, the primary encoder conducts coarse encoding in a regular way, while the secondary encoder models the importance of words and generates more fine encoding based on the input raw text and the previously generated output text summarization. The two level encodings are combined and fed into the decoder to generate more diverse summary that can decrease repetition phenomenon for long sequence generation. The experimental results on two challenging datasets (i.e., CNN/DailyMail and DUC 2004) demonstrate that our dual encoding model performs against existing methods.
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