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PEDNet: A Persona Enhanced Dual Alternating Learning Network for Conversational Response Generation

机译:PEPNET:用于对话响应生成的角色增强的双交替学习网络

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Endowing a chatbot with a personality is essential to deliver more realistic conversations. Various persona-based dialogue models have been proposed to generate personalized and diverse responses by utilizing predefined persona information. However, generating personalized responses is still a challenging task since the leverage of predefined persona information is often insufficient. To alleviate this problem, we propose a novel Persona Enhanced Dual Alternating Learning Network (PEDNet) aiming at producing more personalized responses in various open-domain conversation scenarios. PEDNet consists of a Context-Dominated Network (CDNet) and a Persona-Dominated Network (PDNet), which are built upon a common encoder-decoder backbone. CDNet learns to select a proper persona as well as ensure the contextual relevance of the predicted response, while PDNet learns to enhance the utilization of persona information when generating the response by weakening the disturbance of specific content in the conversation context. CDNet and PDNet are trained alternately using a multi-task training approach to equip PEDNet with the both capabilities they have learned. Both automatic and human evaluations on a newly released dialogue dataset Persona-chat demonstrate that our method could deliver more personalized responses than baseline methods.
机译:赋予与个性的聊天乐队是为了提供更现实的对话至关重要。已经提出了各种基于角色的对话模型来通过利用预定义的人员信息来生成个性化和多样的响应。然而,生成个性化响应仍然是一个具有挑战性的任务,因为预定义人物信息的杠杆通常不足。为了缓解这个问题,我们提出了一种新颖的Persona增强的双交替学习网络(PEDNET),其旨在在各种开放式对话情景中产生更个性化的响应。 Pednet由上下文主导的网络(CDNet)和一个角色主导的网络(PDNet)组成,它构建在通用的编码器解码器骨干上。 CDNET学会选择适当的角色,并确保预测响应的上下文相关性,而PDNET通过削弱对话环境中的特定内容的干扰时,可以在生成响应时提高人物信息的利用率。 CDNET和PDNET正在使用多任务培训方法拨打培训,以配备他们学习的两种能力。对新发布的对话数据集角色集合聊天的自动和人为评估都证明了我们的方法可以提供比基线方法更个性化的响应。

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