A conversational recommender system (CRS) is a practical application for item recommendation through natural language conversation. Such a system estimates user interests for appropriate personalized recommendations. Users sometimes have various interests in different categories or genres, but existing studies assume a unique user interest that can be covered by closely related items. In this work, we propose to model such multiple user interests in CRS. We investigated its effects in experiments using the ReDial dataset and found that the proposed method can recommend a wider variety of items than that of the baseline CR-Walker.
翻译:谈话推荐系统(CRS)是通过自然语言对话对项目建议的一种实际应用。这种系统估计用户对适当的个性化建议的兴趣。用户有时在不同类别或类型上有不同的利益,但现有研究假定用户对独特的兴趣,这种兴趣可由密切相关的项目涵盖。在这项工作中,我们提议在CRS中建立这种多重用户兴趣模型。我们研究了在使用ReDial数据集的实验中的影响,发现拟议方法可以建议比基准CR-Walker更广泛的项目。</s>