Personalized dialogue systems explore the problem of generating responses that are consistent with the user's personality, which has raised much attention in recent years. Existing personalized dialogue systems have tried to extract user profiles from dialogue history to guide personalized response generation. Since the dialogue history is usually long and noisy, most existing methods truncate the dialogue history to model the user's personality. Such methods can generate some personalized responses, but a large part of dialogue history is wasted, leading to sub-optimal performance of personalized response generation. In this work, we propose to refine the user dialogue history on a large scale, based on which we can handle more dialogue history and obtain more abundant and accurate persona information. Specifically, we design an MSP model which consists of three personal information refiners and a personalized response generator. With these multi-level refiners, we can sparsely extract the most valuable information (tokens) from the dialogue history and leverage other similar users' data to enhance personalization. Experimental results on two real-world datasets demonstrate the superiority of our model in generating more informative and personalized responses.
翻译:个人化对话系统探索产生符合用户个性的反应的问题,这近年来引起了人们的极大注意。现有的个性化对话系统试图从对话史中提取用户概况,以指导个性化反应的生成。由于对话历史通常是漫长而吵闹的,大多数现有方法都绕过对话历史,以模拟用户的个性化。这种方法可以产生一些个性化反应,但对话历史的很大一部分被浪费了,从而导致个性化反应生成的功能不尽人意。在这项工作中,我们提议大规模改进用户对话历史,在此基础上我们可以处理更多的对话历史,并获得更丰富和准确的个人信息。具体地说,我们设计了一个MSP模型,由三个个人信息精细和个性化反应生成者组成。有了这些多层次的改进器,我们可以从对话史中提取最有价值的信息(口号),并利用其他类似用户的数据加强个性化。两个真实世界数据集的实验结果显示我们模型在产生更丰富和个性化反应方面的优势。