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Hierarchical Span-Based Conditional Random Fields for Labeling and Segmenting Events in Wearable Sensor Data Streams

机译:基于分层跨度的条件随机字段用于可穿戴传感器数据流中的事件标记和分段

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摘要

The field of mobile health (mHealth) has the potential to yield new insights into health and behavior through the analysis of continuously recorded data from wearable health and activity sensors. In this paper, we present a hierarchical span-based conditional random field model for the key problem of jointly detecting discrete events in such sensor data streams and segmenting these events into high-level activity sessions. Our model includes higher-order cardinality factors and inter-event duration factors to capture domain-specific structure in the label space. We show that our model supports exact MAP inference in quadratic time via dynamic programming, which we leverage to perform learning in the structured support vector machine framework. We apply the model to the problems of smoking and eating detection using four real data sets. Our results show statistically significant improvements in segmentation performance relative to a hierarchical pairwise CRF.
机译:通过分析可穿戴健康和活动传感器中连续记录的数据,移动健康(mHealth)领域有可能对健康和行为产生新的见解。在本文中,我们针对联合检测此类传感器数据流中的离散事件并将这些事件分割为高级活动会话的关键问题,提出了基于分层跨度的条件随机场模型。我们的模型包括高阶基数因子和事件间持续时间因子,以捕获标签空间中特定于域的结构。我们展示了我们的模型通过动态编程在二次时间内支持精确的MAP推理,我们利用它在结构化支持向量机框架中进行学习。我们使用四个真实数据集将模型应用于吸烟和进食检测问题。我们的结果显示,与分层成对的CRF相比,细分效果在统计上有显着改善。

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