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Activity Inference through Sequence Alignment

机译:通过序列对齐的活动推断

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Activity inference attempts to identify what a person is doing at a given point in time from a series of observations. Since the 1980s, the task has developed into a fruitful research field and is now considered a key step in the design of many human-centred systems. For activity inference, wearable and mobile devices are unique opportunities to sense a user's context unobtrusively throughout the day. Unfortunately, the limited battery life of these platforms does not always allow continuous activity logging. In this paper, we present a novel technique to fill in gaps in activity logs by exploiting both short- and long-range dependencies in human behaviour. Inference is performed by sequence alignment using scoring parameters learnt from training data in a probabilistic framework. Experiments on the Reality Mining dataset show significant improvements over baseline results even with reduced training and long gaps in data.
机译:活动推理试图确定一个人在一系列观察中在给定的时间点做什么。自20世纪80年代以来,该任务已成为富有成效的研究领域,现在被认为是许多以人为本的系统设计的关键步骤。对于活动推理,可穿戴和移动设备是独特的机会,以便整个一天都不感知用户的上下文。不幸的是,这些平台的电池寿命有限并不总是允许连续活动日志记录。在本文中,我们通过利用人类行为中的短期和远程依赖性来提出一种填充活动日志中的差距的新技术。使用从概率框架中的训练数据学习的评分参数来执行推断。现实挖掘数据集的实验表明,即使在数据中的培训和长距离间隙减少,也会显着改善基线结果。

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