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Context and Activity Recognition for Personalized Mobile Recommendations

机译:个性化移动推荐的上下文和活动识别

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Through the use of mobile devices, contextual information about users can be derived to use as an additional information source for traditional recommendation algorithms. This paper presents a framework for detecting the context and activity of users by analyzing sensor data of a mobile device. The recognized activity and context serves as input for a recommender system, which is built on top of the framework. Through context-aware recommendations, users receive a personalized content offer, consisting of relevant information such as points-of-interest, train schedules, and touristic info. An evaluation of the recommender system and the underlying context-recognition framework demonstrates the impact of the response times of external information providers. The data traffic on the mobile device required for the recommendations shows to be limited. A user evaluation confirms the usability and attractiveness of the recommender. The recommendations are experienced as effective and useful for discovering new venues and relevant information.
机译:通过使用移动设备,可以得出有关用户的上下文信息,以用作传统推荐算法的附加信息源。本文提出了一种通过分析移动设备的传感器数据来检测用户的上下文和活动的框架。公认的活动和上下文用作建立在框架之上的推荐系统的输入。通过上下文感知的建议,用户可以收到个性化的内容报价,其中包括相关信息,例如兴趣点,火车时刻表和旅游信息。对推荐系统和基础上下文识别框架的评估证明了外部信息提供者响应时间的影响。推荐所需的移动设备上的数据流量显示受到限制。用户评估确认了推荐者的可用性和吸引力。这些建议对于发现新的场所和相关信息是有效和有用的。

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