在交互式推荐系统中实现以目标为中心的播客探索

Yu Liang, Aditya Ponnada, Paul Lamere, Nediyana Daskalova
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引用次数: 5

摘要

内容推荐系统通常依赖于对用户过去的行为数据进行建模来提供个性化的推荐——这种做法在推荐更多相同的内容以及需要用户投入很少时间的媒体(如音乐曲目)方面效果很好。然而,这种方法可以进一步优化用户投入较高的媒体,如播客,因为用户目标的空间更大,而用户过去行为的隐含信号可能无法捕捉到这些目标。允许用户直接指定他们的目标可能有助于缩小可能推荐的空间。因此,在本文中,我们探讨了如何通过利用用户关于其个人目标的明确输入,在推荐系统中实现以目标为中心的探索。以播客消费为例,通过大规模调查(N=68k),我们开发了GoalPods,这是一个交互式原型,允许用户设定个人目标,并建立播客剧集推荐播放列表来实现这些目标。我们用14名参与者对GoalPods进行了评估,参与者设定了一个目标,花一周的时间听为这个目标创建的剧集播放列表。从研究中,我们确定了两种类型的用户目标:低投入(例如“对抗无聊”)和高投入(例如“学习新东西”)目标。用户发现为低参与度目标确定相关建议很容易,但他们需要更多的结构和支持来设置高参与度目标。通过将用户固定在他们的个人目标上来探索推荐,GoalPods(以及以目标为中心的播客消费)在用户的过滤气泡之外带来了富有洞察力的内容发现。基于我们的发现,我们讨论了设计推荐系统的机会,该系统通过交互式目标设置来指导探索,以及通过考虑用户的个人目标来提供更好的推荐。
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Enabling Goal-Focused Exploration of Podcasts in Interactive Recommender Systems
Content recommender systems often rely on modeling users’ past behavioral data to provide personalized recommendations - a practice that works well for suggesting more of the same and for media that require little time investment from users, such as music tracks. However, this approach can be further optimized for media where the user investment is higher, such as podcasts, because there is a broader space of user goals that might not be captured by the implicit signals of their past behavior. Allowing users to directly specify their goals might help narrow the space of possible recommendations. Thus, in this paper, we explore how we can enable goal-focused exploration in recommender systems by leveraging explicit input from users about their personal goals. Using podcast consumption as an example use-case, and informed by a large-scale survey (N=68k), we developed GoalPods, an interactive prototype that allows users to set personal goals and build playlists of podcast episode recommendations to meet those goals. We evaluated GoalPods with 14 participants where participants set a goal and spent a week listening to the episode playlist created for that goal. From the study, we identified two types of user goals: low-involvement (e.g. “combat boredom”) and high-involvement (e.g. “learn something new”) goals. Users found it easy to identify relevant recommendations for low-involvement goals, but they needed more structure and support to set high-involvement goals. By anchoring users on their personal goals to explore recommendations, GoalPods (and goal-focused podcast consumption) led to insightful content discovery outside the users’ filter bubbles. Based on our findings, we discuss opportunities for designing recommender systems that guide exploration via interactive goal-setting as well as implications for providing better recommendations by accounting for users’ personal goals.
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