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Learning semantically-annotated routes for context-aware recommendations on map navigation systems

机译:在地图导航系统上学习用于上下文感知推荐的语义注释路线

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摘要

Modern technology has brought many changes to our everyday lives. Our need to be in constant touch with others has been met with the cellphone, which has become our companion and the convergence point of many technological advances. The combination of capabilities such as browsing the Internet and GPS reception has multiplied the services and applications based on the current location of the user. However, providing the user with these services has certain drawbacks. Although map navigation systems are the most meaningful way of displaying this information, the user still has to manually set up the filter in order to obtain a non-bloated visualization of the map and the available services. To tackle this problem, we present here a semantic multicriteria ant colony algorithm capable of learning the user's routes, including associated context information, and then predicting the most likely route a user is following, given his current location and context data. This knowledge could then be used as the basis for offering services related to his current (or most likely future) context data close to the path he is following. Our experimental results show that our algorithm is capable of obtaining consistent solutions sets even when multiple objective ontological terms are included in the process.
机译:现代技术为我们的日常生活带来了许多变化。手机已经满足了我们与他人保持不断联系的需求,手机已成为我们的伴侣,也是许多技术进步的融合点。浏览互联网和GPS接收等功能的组合使基于用户当前位置的服务和应用程序成倍增加。但是,向用户提供这些服务具有某些缺点。尽管地图导航系统是显示此信息的最有意义的方式,但是用户仍然必须手动设置过滤器才能获得地图和可用服务的非膨胀式可视化。为了解决这个问题,我们在这里提出一种语义多准则蚁群算法,该算法能够学习用户的路线(包括关联的上下文信息),然后根据给定的当前位置和上下文数据来预测用户遵循的最可能路线。然后,可以将这些知识用作提供与他当前(或最有可能的将来)上下文数据相关的服务的基础,该服务与他所遵循的路径接近。我们的实验结果表明,即使在过程中包含多个客观本体术语时,我们的算法也能够获得一致的解集。

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