1. 一种融合关键词的生成式摘要方法.
- Author
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李伯涵 and 李红莲
- Subjects
- *
PROBLEM solving , *VOCABULARY , *COMPARATIVE studies , *SEMANTICS , *MACHINE learning , *PROBABILISTIC generative models - Abstract
According to the problem that the model in the generative text summarization doesn’t fully understand the semantics of the text and the generated summary lacks key information, this paper proposed a Key-BERT-Pen model that integrated keywords in Chinese abstract generation. The KBPM first used the TextRank method to extract the keywords in the text, and then obtained a more accurate contextual representation through the BERT pre-training model using the extracted keywords and the original text. Finally, it input the obtained word vector into a pointer model with a dual attention mechanism, and the pointer model took vocabularies from the vocabulary or original text to generate the final abstract. Experimental results show that the KBPM can generate text summaries with better readability and higher ROUGE scores. The comparative analysis also verifies that the KBPM effectively solves the problem of the lack of key information in the generated abstract. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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