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Unsupervised User Similarity Mining in GSM Sensor Networks

机译:GSM传感器网络中的无监督用户相似性挖掘

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Mobility data has attracted the researchers for the past few years because of its rich context and spatiotemporal nature, where this information can be used for potential applications like early warning system, route prediction, traffic management, advertisement, social networking, and community finding. All the mentioned applications are based on mobility profile building and user trend analysis, where mobility profile building is done through significant places extraction, user’s actual movement prediction, and context awareness. However, significant places extraction and user’s actual movement prediction for mobility profile building are a trivial task. In this paper, we present the user similarity mining-based methodology through user mobility profile building by using the semantic tagging information provided by user and basic GSM network architecture properties based on unsupervised clustering approach. As the mobility information is in low-level raw form, our proposed methodology successfully converts it to a high-level meaningful information by using the cell-Id location information rather than previously used location capturing methods like GPS, Infrared, and Wifi for profile mining and user similarity mining.
机译:由于其丰富的上下文和时空性质,移动数据吸引了研究人员,因为它的上下文和时空性质,这些信息可用于预警系统,路线预测,交通管理,广告,社交网络和社区发现等潜在应用。所有提到的应用程序都是基于移动性概况建设和用户趋势分析,其中通过重要的地方提取,用户的实际运动预测和背景感知来完成移动性剖面建设。然而,重要的地方提取和用户对移动性剖面建筑的实际运动预测是一个微不足道的任务。在本文中,我们通过使用用户和基本GSM网络架构属性提供的语义标记信息基于无监督的聚类方法,通过用户移动配置文件构建介绍了基于用户的相似挖掘方法。由于移动信息处于低级别的原始形式,我们提出的方法通过使用Cell-ID位置信息而不是先前使用的位置捕获方法将其转换为高级有意义的信息,如GPS,红外线和WiFi,以实现型材挖掘和用户相似挖掘。

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