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Collaborative Compound Critiquing

机译:合作复合批评

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摘要

Critiquing-based recommender systems offer users a conversational paradigm to provide their feedback, named critiques, during the process of viewing the current recommendation. In this way, the system is able to learn and adapt to the users' preferences more precisely so that better recommendation could be returned in the subsequent iteration. Moreover, recent works on experience-based critiquing have suggested the power of improving the recommendation efficiency by making use of relevant sessions from other users' histories so as to save the active user's interaction effort. In this paper, we present a novel approach to processing the history data and apply it to the compound critiquing system. Specifically, we develop a history-aware collaborative compound critiquing method based on preference-based compound critique generation and graph-based similar session identification. Through experiments on two data sets, we validate the outperforming efficiency of our proposed method in comparison to the other experience-based methods. In addition, we verify that incorporating user histories into compound critiquing system can be significantly more effective than the corresponding unit critiquing system.
机译:基于批评的推荐系统为用户提供会话范式,以便在查看当前推荐过程中提供其反馈,命名批评。通过这种方式,系统能够更精确地学习和适应用户的偏好,以便在随后的迭代中可以返回更好的推荐。此外,最近的基于经验的批评的作品已经提出了通过利用来自其他用户历史的相关会话来提高建议效率的力量,以节省活跃的用户的交互工作。在本文中,我们提出了一种处理历史数据的新方法,并将其应用于复合批评系统。具体地,我们开发了一种基于偏好的复合批判生成和基于图的类似会话识别的历史意识的协同复合批评方法。通过对两种数据集的实验,我们验证了与其他基于经验的方法相比的所提出的方法的表现效率。此外,我们确认将用户历史结合到复合批评系统中可以明显比相应的单元批评系统更有效。

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