开发一个基于地理信息系统应用的移动位置协同推荐系统

T. H. Soliman, Soha A. El-Moemen Mohamed, A. Sewisy
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引用次数: 3

摘要

协同推荐系统根据用户在相同环境中的行为向用户推荐商品。本文主要研究了基于全球定位系统(GPS)轨迹向多用户推荐热门地点的问题。从多个游客那里收集对热门地点的不同评论是帮助推荐系统对这些地方进行评级的一种明确方式。遗传算法用于预测用户对未访问位置的兴趣,基于隐式和显式评级。然后,推荐系统将评级的地方按其率降序排序。在大多数用户中拥有最高比率的地方被系统推荐。协同推荐系统根据其他用户对地点的偏好以及距离用户位置最近的地点,通过手机向用户推荐最佳地点。然后系统通过用户的手机在地图上显示到这个地方的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a mobile location-based collaborative Recommender System for GIS applications
Collaborative recommender system recommends items to the user based on what actions that other users in the same environment did in the past. This paper focuses on recommending popular places based on behavior of Global Positioning System (GPS) traces to multiple users. Collecting different reviews of popular places from multiple visitors is an explicit way to help Recommender System to rate these places. A Genetic Algorithm is used in predicting the interest of the user for unvisited locations, based on implicit and explicit ratings. Then, Recommender System sorts the rated places in descending order by their rates. The places that have the highest rates in most number of users are recommended by the system. Collaborative Recommender system advises the user to go to the best place via mobile according to other users' preferences in places and the nearest place from user's location. Then the system shows the direction to this place on the map via user's mobile.
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