你以为我是谁?具有项目元数据的交互式用户建模

Joey De Pauw, Koen Ruymbeek, Bart Goethals
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引用次数: 0

摘要

推荐系统被用于许多不同的应用程序和环境中,但它们的主要目标总是可以概括为“将相关内容链接到感兴趣的用户”。人们已经找到了一些解释来帮助推荐系统实现这一目标,通过让用户了解他们为什么被推荐某些项目。此外,解释可以被认为是与系统交互的第一步。事实上,如果用户对系统已经掌握的知识有更好的了解,那么用户提供反馈并引导系统更好地理解其偏好就会有所帮助。为此,我们提出了一个线性协同过滤推荐模型,该模型在项目元数据域内构建用户配置文件。因此,我们的方法本质上是透明和可解释的。此外,由于推荐是作为项目元数据和可解释的用户配置文件的线性函数计算的,因此我们的方法无缝地支持交互式推荐。换句话说,用户可以直接调整学习的配置文件的权重,以便根据他们当前的兴趣进行更细粒度的浏览和发现内容。我们在发现比利时文化事件的在线应用程序中演示了该模型的交互方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Who do you think I am? Interactive User Modelling with Item Metadata
Recommender systems are used in many different applications and contexts, however their main goal can always be summarised as “connecting relevant content to interested users”. Explanations have been found to help recommender systems achieve this goal by giving users a look under the hood that helps them understand why they are recommended certain items. Furthermore, explanations can be considered to be the first step towards interacting with the system. Indeed, for a user to give feedback and guide the system towards better understanding her preferences, it helps if the user has a better idea of what the system has already learned. To this end, we propose a linear collaborative filtering recommendation model that builds user profiles within the domain of item metadata. Our method is hence inherently transparent and explainable. Moreover, since recommendations are computed as a linear function of item metadata and the interpretable user profile, our method seamlessly supports interactive recommendation. In other words, users can directly tweak the weights of the learned profile for more fine-grained browsing and discovery of content based on their current interests. We demonstrate the interactive aspect of this model in an online application for discovering cultural events in Belgium.
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