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Agatha: Predicting Daily Activities from Place Visit History for Activity-Aware Mobile Services in Smart Cities

机译:阿加莎(Agatha):根据地点访问历史预测每日活动,以了解智慧城市中具有活动意识的移动服务

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We present aplace-history-based activity prediction systemcalled Agatha, in order to enable activity-aware mobile services in smart cities. The system predicts a user’s potential subsequent activities that are highly likely to occur given a series of information about activities done before or activity-related contextual information such as visit place and time. To predict the activities, we develop acausality-based activity prediction modelusing Bayesian networks. The basic idea of the prediction is that where a person has been and what he/she has done so far influence what he/she will do next. To show the feasibility, we evaluate the prediction model using the American Time-Use Survey (ATUS) dataset, which includes more than 10,000 people’s location and activity history. Our evaluation shows that Agatha can predict users’ potential activities with up to 90% accuracy for the top 3 activities, more than 80% for the top 2 activities, and about 65% for the top 1 activity while considering a relatively large number of daily activities defined in the ATUS dataset, that is, 17 activities.
机译:我们提供了一个称为Agatha的基于场所历史的活动预测系统,以便在智慧城市中启用活动感知的移动服务。系统会根据一系列有关之前进行的活动的信息或与活动相关的上下文信息(例如访问地点和时间),预测用户极有可能发生的后续活动。为了预测活动,我们使用贝叶斯网络开发了基于因果关系的活动预测模型。预测的基本思想是一个人去过的地方以及他/她到目前为止所做的事情会影响他/她接下来要做什么。为了显示可行性,我们使用美国时间使用调查(ATUS)数据集评估了预测模型,该数据集包含10,000多人的位置和活动历史记录。我们的评估显示,Agatha可以预测用户的潜在活动,其中前3个活动的准确率最高为90%,前2个活动的准确率最高为80%,前1个活动的准确率约为65%,同时考虑到每天相对较多的活动ATUS数据集中定义的活动,即17个活动。

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