RecFit:一个情境感知系统,用于推荐体育活动

Qian He, E. Agu, D. Strong, B. Tulu
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引用次数: 11

摘要

许多人对目前的体育活动感到厌倦,希望得到个性化的替代建议。即使是那些喜欢运动的用户,如果他们的环境(例如,坏天气、位置)发生了变化,也可能会寻求建议。之前的工作主要集中在跟踪用户活动和设定目标,而不是推荐。在本文中,我们描述了RecFit,它基于用户的上下文(例如风险承受能力、预算、位置、天气)系统地建议体育活动。RecFit从2011年体育活动纲要中选出137项活动,为每位用户推荐5项最合适的建议。我们描述了我们的过滤标准、算法、原型和RecFit的活动数据库,该数据库使用理想性能上下文(流行度、社交性、风险、位置、费用、时间和天气)的元数据来增强活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RecFit: a context-aware system for recommending physical activities
Many people are bored with their current physical activities and would like individualized recommendations of alternatives. Even users who have favorite exercises may seek recommendations if their context (e.g., bad weather, location) changes. Prior work has focused on tracking user activities and goal-setting, but not on recommendations. In this paper, we describe RecFit, which systematically suggests physical activities based on the user's context (e.g. risk tolerance, budget, location, weather). RecFit works from 137 activities selected from the 2011 compendium of physical activities in order to recommend the 5 most suitable recommendations for each user. We describe our filtering criteria, algorithms, prototype and RecFit's activity database, which augments activities with metadata of ideal performance context (popularity, sociability, risk, location, expense, time, and weather).
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