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Content-Oriented User Modeling for Personalized Response Ranking in Chatbots

机译:基于内容的面向用户的聊天机器人个性化响应排名建模

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摘要

Automatic chatbots (also known as chat-agents) have attracted much attention from both researching and industrial fields. Generally, the semantic relevance between users' queries and the corresponding responses is considered as the essential element for conversation modeling in both generation and ranking based chat systems. By contrast, it is a nontrivial task to adopt the users' information, such as preference, social role, etc., into conversational models reasonably, while users' profiles play a significant role in the procedure of conversations by providing the implicit contexts. This paper aims to address the personalized response ranking task by incorporating user profiles into the conversation model. In our approach, users' personalized representations are latently learned from the contents posted by them via a two-branch neural network. After that, a deep neural network architecture is further presented to learn the fusion representation of posts, responses, and personal information. In this way, the proposed model could understand conversations from the users' perspective; hence, the more appropriate responses are selected for a specified person. The experimental results on two datasets from social network services demonstrate that our approach is hopeful to represent users' personal information implicitly based on user generated contents, and it is promising to perform as an important component in chatbots to select the personalized responses for each user.
机译:自动聊天机器人(也称为聊天代理)已经引起了研究和工业领域的极大关注。通常,在基于生成和排名的聊天系统中,用户查询和相应响应之间的语义相关性被视为进行会话建模的基本要素。相比之下,合理地将用户的信息(例如偏好,社会角色等)纳入对话模型是一项艰巨的任务,而用户的个人资料通过提供隐式上下文在对话过程中起着重要作用。本文旨在通过将用户配置文件整合到对话模型中来解决个性化响应排名任务。在我们的方法中,通过两分支神经网络从用户发布的内容中潜在地学习用户的个性化表示。之后,进一步提出了一种深度神经网络体系结构,以学习帖子,响应和个人信息的融合表示。这样,所提出的模型可以从用户的角度理解对话。因此,为特定的人选择了更适当的响应。在来自社交网络服务的两个数据集上的实验结果表明,我们的方法有望基于用户生成的内容隐式表示用户的个人信息,并且有望作为聊天机器人的重要组成部分为每个用户选择个性化响应。

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