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Incorporating Interlocutor-Aware Context into Response Generation on Multi-Party Chatbots

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 Added by Cao Liu
 Publication date 2019
and research's language is English




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Conventional chatbots focus on two-party response generation, which simplifies the real dialogue scene. In this paper, we strive toward a novel task of Response Generation on Multi-Party Chatbot (RGMPC), where the generated responses heavily rely on the interlocutors roles (e.g., speaker and addressee) and their utterances. Unfortunately, complex interactions among the interlocutors roles make it challenging to precisely capture conversational contexts and interlocutors information. Facing this challenge, we present a response generation model which incorporates Interlocutor-aware Contexts into Recurrent Encoder-Decoder frameworks (ICRED) for RGMPC. Specifically, we employ interactive representations to capture dialogue contexts for different interlocutors. Moreover, we leverage an addressee memory to enhance contextual interlocutor information for the target addressee. Finally, we construct a corpus for RGMPC based on an existing open-access dataset. Automatic and manual evaluations demonstrate that the ICRED remarkably outperforms strong baselines.



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