4.6 Article

KRP-DS: A Knowledge Graph-Based Dialogue System with Inference-Aided Prediction

期刊

SENSORS
卷 23, 期 15, 页码 -

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MDPI
DOI: 10.3390/s23156805

关键词

intelligent dialogue system; chat bots; knowledge-grounded dialogue; knowledge graph

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Researchers aim to design a knowledgeable model for dialogue systems using pretrained language models, but these models may still generate bland or inappropriate responses in specific domains and lack interpretability. This paper proposes the KRP-DS model, which incorporates a knowledge graph into the dialogue system and utilizes contextual information for path reasoning and knowledge prediction, leading to enhanced response generation.
With the popularity of ChatGPT, there has been increasing attention towards dialogue systems. Researchers are dedicated to designing a knowledgeable model that can engage in conversations like humans. Traditional seq2seq dialogue models often suffer from limited performance and the issue of generating safe responses. In recent years, large-scale pretrained language models have demonstrated their powerful capabilities across various domains. Many studies have leveraged these pretrained models for dialogue tasks to address concerns such as safe response generation. Pretrained models can enhance responses by carrying certain knowledge information after being pre-trained on large-scale data. However, when specific knowledge is required in a particular domain, the model may still generate bland or inappropriate responses, and the interpretability of such models is poor. Therefore, in this paper, we propose the KRP-DS model. We design a knowledge module that incorporates a knowledge graph as external knowledge in the dialogue system. The module utilizes contextual information for path reasoning and guides knowledge prediction. Finally, the predicted knowledge is used to enhance response generation. Experimental results show that our proposed model can effectively improve the quality and diversity of responses while having better interpretability, and outperforms baseline models in both automatic and human evaluations.

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