With the rapid development of deep learning, open-domain dialogue models are able to generate relatively fluent conversations. However, current generative models present incomplete representations of dialogue features, which make it prone to generate low-quality or irrelevant-semantic responses. To address this problem, this paper presents a novel context-aware multi-feature fusion model, integrating keywords and category-semantic information into the dialogue generation. Specifically, distinct keywords share various significance in a sentence, incorporating this significance into the conversation text can improve the generative ability of the generative model. Our method enhances the feature representation of the text and thus generates high-quality conversation. Finally, we conducted comprehensive experiments on the DailyDialog dataset and EmpatheticDialogues dataset, analyzing the experimental results and verifying the feasibility of our approach.
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- Publication year
2022
- Venue
International Conference on Industrial Technology
- Publication date
2022-08-22
- Fields of study
Computer Science
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Semantic Scholar
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