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Design of personalized recommendation system based on LBS in mobile classroom project

机译:基于LBS的移动教室项目个性化推荐系统设计

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Collaborative filtering is one of the most successful approaches to building recommendation system. However, it still has some known disadvantages. One of them is called cold start problem caused by lack of user's historical data. Another problem appeared because mobile technology develops in high speed. The phenomenon that users change their taste according to their position quickly in mobile environment is more and more common. The changeable preference is called short-term interest. But the collaborative filtering algorithm usually ignores this short-term interest. It leads to decrease of accuracy of recommendation. In this paper, a design of personalized recommendation system based on LBS for the Mobile Classroom Project is proposed. Considering the actual conditions, this system solved the problem of cold-start using clustering method and some other solutions. Also, it focus on user's short-term interest to a certain extent. Compared with the traditional collaborative filtering, it works better.
机译:协同过滤是建立推荐系统的最成功的方法之一。但是,它仍然存在一些已知的缺点。其中一个被称为缺乏用户历史数据引起的冷启动问题。出现了另一个问题,因为移动技术高速发展。用户在移动环境中快速地改变他们的味道的现象越来越普遍。可变的偏好被称为短期兴趣。但协同过滤算法通常忽略这种短期兴趣。它导致推荐的准确性降低。本文提出了一种基于LBS的移动课堂项目的个性化推荐系统的设计。考虑到实际情况,该系统使用聚类方法和一些其他解决方案解决了冷启动问题。此外,它专注于用户在一定程度上的短期利息。与传统的协作过滤相比,它更好。

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