2021
DOI: 10.48550/arxiv.2109.13029
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Every time I fire a conversational designer, the performance of the dialog system goes down

Abstract: Incorporating explicit domain knowledge into neural-based task-oriented dialogue systems is an effective way to reduce the need of large sets of annotated dialogues. In this paper, we investigate how the use of explicit domain knowledge of conversational designers affects the performance of neural-based dialogue systems. To support this investigation, we propose the Conversational-Logic-Injection-in-Neural-Network system (CLINN) where explicit knowledge is coded in semilogical rules. By using CLINN, we evaluat… Show more

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