Real-world recommender systems often allow users to adjust the presented content through a variety of preference elicitation techniques such as "liking"or interest profiles. These elicitation techniques trade-off time and effort to users with the richness of the signal they provide to learning component driving the recommendations. In this paper, we explore this trade-off, seeking new ways for people to express their preferences with the goal of improving communication channels between users and the recommender system. Through a need-finding study, we observe the patterns in how people express their preferences during curation task, propose a taxonomy for organizing them, and point out research opportunities. We present a case study that illustrates how using this taxonomy to design an onboarding experience can lead to more accurate machine-learned recommendations while maintaining user satisfaction under low effort.
CITATION STYLE
Schnabel, T., Ramos, G., & Amershi, S. (2020). “who doesn’t like dinosaurs?” Finding and Eliciting Richer Preferences for Recommendation. In RecSys 2020 - 14th ACM Conference on Recommender Systems (pp. 398–407). Association for Computing Machinery, Inc. https://doi.org/10.1145/3383313.3412267
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