Most existing works on dialog systems only consider conversation content while neglecting the personality of the user the bot is interacting with, which begets several unsolved issues. In this paper, we present a personalized end-to-end model in an attempt to leverage personalization in goal-oriented dialogs. We first introduce a Profile Model which encodes user profiles into distributed embeddings and refers to conversation history from other similar users. Then a Preference Model captures user preferences over knowledge base entities to handle the ambiguity in user requests. The two models are combined into the Personalized MemN2N. Experiments show that the proposed model achieves qualitative performance improvements over state-of-the-art methods. As for human evaluation, it also outperforms other approaches in terms of task completion rate and user satisfaction.
翻译:大多数关于对话系统的现有工作都只考虑对话内容,而忽略了机器人与用户互动的个性,从而产生了几个尚未解决的问题。在本文件中,我们提出了一个个性化的端对端模式,以试图在面向目标的对话中利用个性化。我们首先引入一个概况模型,将用户概况编码成分布式嵌入,并参考其他类似用户的谈话历史。然后,一个偏好模型抓住用户对知识基础实体的偏好,以便处理用户请求中的模糊问题。这两个模型被合并到个性化的MemN2N。实验显示,拟议的模型在质量上比最新技术方法有所改进。在人类评价方面,它也超过了任务完成率和用户满意度方面的其他方法。