跑步者——跑步者锻炼和营养推荐系统

Mihnea Donciu, M. Ionita, M. Dascalu, Stefan Trausan-Matu
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引用次数: 15

摘要

在过去的几年里,推荐系统越来越受欢迎,并不断向语义网发展。互联网用户搜索越来越多的设施,根据他们的喜好、经验和期望来获取信息和推荐。如今,网络上有许多音乐、电影、饮食、产品等方面的推荐系统。其中一些使用非常有效的推荐技术(例如Amazon),而另一些则非常简单,基于并不总是提供相关或有趣推荐的算法。我们提出的解决方案是为跑步专业人士和业余爱好者提供一个推荐系统,该系统能够根据用户的个人资料信息、偏好和声明的目的,向用户提供最适合他们的锻炼和饮食信息。该解决方案将来自不断扩展的社区的社会维度与本体中定义的专家知识混合在一起。此外,我们的模型解决了个人资料、专业成绩和锻炼过程中可能发生的不幸事件等方面的适应性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Runner -- Recommender System of Workout and Nutrition for Runners
Recommender systems have been gaining popularity and appreciation over the past few years and they kept growing towards a semantic web. Internet users search for more and more facilities to get information and recommendations based on their preferences, experience and expectations. Nowadays, there are many recommender systems on the web for music, movies, diets, products, etc. Some of them use very efficient recommending techniques (ex. Amazon), while others are very simple, based on algorithms that do not always provide relevant or interesting recommendations. The solution we propose is a recommender system for running professionals and amateurs, which is able to provide information to users regarding the workout and the diet that best suits them, based on their profile information, preferences and declared purpose. The solution mixes a social dimension derived from an expanding community with expert knowledge defined within an ontology. Moreover, our model addresses adaptability in terms of personal profile, professional results and unfortunate events that might occur during workouts.
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