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Daily Routines Inference Based on Location History

机译:基于位置历史记录的每日例行推理

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摘要

The huge amount of location tracker data generated by electronic devices makes them an ideal source of information for detecting trends and behaviors in their users' lives. Learning these patterns is very important for recommender systems or applications targeted at behavior prediction. In this work we show how user location history can be processed in order to extract the most relevant visited locations and to model the user's profile through a weighted finite automaton, a probabilistic graphical structure that is able to handle locations and temporal context compactly. Our condensed representation gives access to the user's routines and can play an important role in recommender systems.
机译:电子设备生成的大量位置跟踪器数据使其成为检测用户生活趋势和行为的理想信息源。学习这些模式对于针对行为预测的推荐系统或应用程序非常重要。在这项工作中,我们展示了如何处理用户位置历史记录,以便提取最相关的访问位置并通过加权有限自动机(一种能够紧凑地处理位置和时间上下文的概率图形结构)对用户的配置文件进行建模。我们的简洁表示可以访问用户的例程,并且可以在推荐系统中发挥重要作用。

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