ContextPlay: Evaluating User Control for Context-Aware Music Recommendation

Yucheng Jin, N. Htun, N. Tintarev, K. Verbert
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引用次数: 21

Abstract

Music preferences are likely to depend on contextual characteristics such as location and activity. However, most recommender systems do not allow users to adapt recommendations to their current context. We therefore built ContextPlay, a context-aware music recommender that enables user control for both contextual characteristics and music preferences. By conducting a mixed-design study (N=114) with four typical scenarios of music listening, we investigate the effect of controlling contextual characteristics in a music recommender system on four aspects: perceived quality, diversity, effectiveness, and cognitive load. Compared to our baseline which only allows to specify music preferences, having additional control for context leads to higher perceived quality and does not increase cognitive load. We also find that the contexts of mood, weather, and location tend to influence user perception of the system. Moreover, we found that users are more likely to modify contexts and their profile during relaxing activities.
ContextPlay:评估用户对上下文感知音乐推荐的控制
音乐偏好很可能取决于环境特征,比如地点和活动。然而,大多数推荐系统不允许用户根据他们当前的环境调整推荐。因此,我们构建了ContextPlay,这是一个上下文感知的音乐推荐器,使用户能够控制上下文特征和音乐偏好。本文采用混合设计研究(N=114),采用四种典型的音乐聆听场景,研究了音乐推荐系统中情境特征控制对感知质量、多样性、有效性和认知负荷四个方面的影响。与我们的基线(只允许指定音乐偏好)相比,对环境的额外控制会导致更高的感知质量,并且不会增加认知负荷。我们还发现,情绪、天气和位置等环境往往会影响用户对系统的感知。此外,我们发现用户在放松活动中更有可能修改上下文和他们的个人资料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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