Testing a recommender system for self-actualization

EnCHIReS@EICS(2018)

引用 17|浏览26
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摘要
Traditionally, recommender systems are built with the goal of aiding users' decision-making process by extrapolating what they like and what they have done to predict what they want next. However, in attempting to personalize the suggestions to users' preferences, these systems create an isolated universe of information for each user, which may limit their perspectives and promote complacency. In this paper, we describe our research plan to test a novel approach to recommender systems that goes beyond "good recommendations" that supports user aspirations and exploration.
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关键词
Self-actualization, Recommendation Systems, Exploration, Taste Development
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