定义和支持叙述驱动的推荐

Toine Bogers, M. Koolen
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引用次数: 22

摘要

近年来,推荐算法的研究取得了很大的进展。然而,这些算法通常应用于相对简单的场景:给定用户过去的偏好信息,他们将来会喜欢什么?推荐通常更复杂:评估推荐的项目从来不是在真空中进行的,它通常是用户更复杂的后台任务中的一个步骤。在本文中,我们定义了一种特定类型的推荐场景,称为叙述驱动的推荐,其中推荐过程由用户过去交易的日志以及他们当前兴趣的叙述描述驱动。通过对来自LibraryThing论坛的一组真实世界推荐叙述的分析,我们展示了该场景的独特性和丰富性,并强调了这种叙述的常见模式和属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defining and Supporting Narrative-driven Recommendation
Research into recommendation algorithms has made great strides in recent years. However, these algorithms are typically applied in relatively straightforward scenarios: given information about a user's past preferences, what will they like in the future? Recommendation is often more complex: evaluating recommended items never takes place in a vacuum, and it is often a single step in the user's more complex background task. In this paper, we define a specific type of recommendation scenario called narrative-driven recommendation, where the recommendation process is driven by both a log of the user's past transactions as well as a narrative description of their current interest(s). Through an analysis of a set of real-world recommendation narratives from the LibraryThing forums, we demonstrate the uniqueness and richness of this scenario and highlight common patterns and properties of such narratives.
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