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An Unsupervised Collaborative Approach to Identifying Home and Work Locations

机译:识别家庭和工作地点的无监督协作方法

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There is a growing interest in leveraging geo-spatial data to provide location-aware services. With a large amount of collected geo-spatial data, a crucial step is to identify important "base" locations (e.g., home or work) and understand users' behavior at these locations. In this paper, we propose an unsupervised collaborative learning approach to identifying home and work locations of individuals from geo-spatial trajectory data. Our approach transforms user trajectory records into intuitive and insightful user-location signatures, clusters these signatures, and then identifies location types based on cluster characteristics. This clustering model can be used to identify base locations for new users. We validate this approach using Open Street Map and Foursquare location tags and obtain an accuracy of 80%.
机译:利用地理空间数据来提供位置感知服务的兴趣日益浓厚。利用大量收集的地理空间数据,关键步骤是识别重要的“基本”位置(例如,住所或工作地点)并了解用户在这些位置的行为。在本文中,我们提出了一种无监督的协作学习方法,用于从地理空间轨迹数据中识别个人的家庭和工作地点。我们的方法将用户轨迹记录转换为直观而有见地的用户位置签名,将这些签名聚类,然后根据聚类特征识别位置类型。此群集模型可用于为新用户标识基本位置。我们使用Open Street Map和Foursquare位置标签验证了这种方法,并获得了80%的准确性。

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