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Re-using Implicit Knowledge in Short-Term Information Profiles for Context-Sensitive Tasks

机译:在短期信息配置文件中重新使用隐式知识,用于上下文敏感任务

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Typically, case-based recommender systems recommend single items to the on-line customer. In this paper we introduce the idea of recommending a user-defined collection of items where the user has implicitly encoded the relationships between the items. Automated collaborative filtering (ACF), a so-called 'contentless' technique, has been widely used as a recommendation strategy for music items. However, its reliance on a global model of the user's interests makes it unsuited to catering for the user's local interests. We consider the context-sensitive task of building a compilation, a user-defined collection of music tracks. In our analysis, a collection is a case that captures a specific short-term information/music need. In an offline evaluation, we demonstrate how a case-completion strategy that uses short-term representations is significantly more effective than the ACF technique. We then consider the problem of recommending a compilation according to the user's most recent listening preferences. Using a novel on-line evaluation where two algorithms compete for the user's attention, we demonstrate how a knowledge-light case-based reasoning strategy successfully addresses this problem.
机译:通常,基于案例的推荐系统向在线客户推荐单项。在本文中,我们介绍了推荐用户定义的项目集合,其中用户隐含地编码了项目之间的关系。自动协作过滤(ACF),即所谓的“无核”技术,已被广泛用作音乐项目的推荐策略。但是,它对用户兴趣的全球模型的依赖使其使其不适合迎合用户的当地利益。我们考虑构建汇编的上下文敏感任务,是一个用户定义的音乐曲目集合。在我们的分析中,一个集合是捕获特定短期信息/音乐的情况。在离线评估中,我们展示了如何完成使用短期表示的案例完成策略比ACF技术明显更有效。然后,我们考虑根据用户最近的侦听偏好建议编译的问题。使用新的在线评估,其中两种算法为用户的注意竞争,我们展示了知识灯的基于案例的推理策略如何成功解决了这个问题。

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