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A Neural Topical Expansion Framework for Unstructured Persona-Oriented Dialogue Generation

机译:非结构化人物面向对话一代的神经局部拓展框架

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Unstructured Persona-oriented Dialogue Systems (UPDS) has been demonstrated effective in generating persona consistent responses by utilizing predefined natural language user persona descriptions (e.g., "I am a vegan"). However, the predefined user persona descriptions are usually short and limited to only a few descriptive words, which makes it hard to correlate them with the dialogues. As a result, existing methods either fail to use the persona description or use them improperly when generating persona consistent responses. To address this, we propose a neural topical expansion framework, namely Persona Exploration and Exploitation (PEE), which is able to extend the predefined user persona description with semantically correlated content before utilizing them to generate dialogue responses. PEE consists of two main modules: persona exploration and persona exploitation. The former learns to extend the predefined user persona description by mining and correlating with existing dialogue corpus using a variational auto-encoder (VAE) based topic model. The latter learns to generate persona consistent responses by utilizing the predefined and extended user persona description. In order to make persona exploitation learn to utilize user persona description more properly, we also introduce two persona-oriented loss functions: Persona-oriented Matching (P-Match) loss and Persona-oriented Bag-of-Words (P-BoWs) loss which respectively supervise persona selection in encoder and decoder. Experimental results show that our approach outperforms state-of-the-art baselines, in terms of both automatic and human evaluations.
机译:通过利用预定义的自然语言用户角色描述(例如,“我是纯素食”,已经证明了非结构化人物面向对话系统(UPDS)的对话系统(UPDS)有效地发挥了有效的作用。然而,预定义的用户角色描述通常是短暂的并且仅限于几个描述性词语,这使得与对话难以将它们相关联。因此,当生成角色一致响应时,现有方法未能使用Persona描述或使用它们不正确使用。为了解决这个问题,我们提出了一个神经题目扩展框架,即人角色探索和开发(PEE),其能够在利用它们生成对话响应之前通过语义相关内容扩展预定义的用户人物描述。小便由两个主要模块组成:角色探索和角色剥削。前者学习通过使用基于变分自动编码器(VAE)的主题模型来通过挖掘和与现有对话语法相关来扩展预定义的用户PersonA描述。后者通过利用预定义和扩展的用户PersonA描述来学习通过预定义和扩展用户的描述来生成角色响应。为了使人员开发学会利用用户角色描述更好,我们还介绍了两个角色导向的损失功能:以人为本的匹配(P-Match)丢失和人格导向的单词(P-Bows)丢失在编码器和解码器中分别监督人员选择。实验结果表明,就自动和人类评估而言,我们的方法优于最先进的基线。

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