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Error Bounds for Online Predictions of Linear-Chain Conditional Random Fields: Application to Activity Recognition for Users of Rolling Walkers

机译:线性链条件随机场在线预测的误差界:在滚动步行者用户活动识别中的应用

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Linear-Chain Conditional Random Fields (L-CRFs) are a versatile class of models for the distribution of a sequence of hidden states ("labels") conditional on a sequence of observable variables. In general, the exact conditional marginal distributions of the labels can be computed only after the complete sequence of observations has been obtained, which forbids the prediction of labels in an online fashion. This paper considers approximations of the marginal distributions which only take into account past observations and a small number of observations in the future. Based on these approximations, labels can be predicted close to real-time. We establish rigorous bounds for the marginal distributions which can be used to assess the approximation error at runtime. We apply the results to an L-CRF which recognizes the activity of rolling walker users from a stream of sensor data. It turns out that if we allow for a prediction delay of half of a second, the online predictions achieve almost the same accuracy as the offline predictions based on the complete observation sequences.
机译:线性链条件随机场(L-CRF)是一类通用的模型,用于分布一系列以可观察变量为条件的隐藏状态(“标签”)。通常,只有在获得完整的观察序列之后,才能计算标签的确切条件边缘分布,这禁止以在线方式预测标签。本文考虑了边际分布的近似值,仅考虑了过去的观察结果和将来的少量观察结果。基于这些近似值,可以接近实时地预测标签。我们为边际分布建立了严格的边界,可用于评估运行时的近似误差。我们将结果应用于L-CRF,该L-CRF可从传感器数据流中识别出步行助行器用户的活动。事实证明,如果我们允许半秒的预测延迟,则基于完整的观测序列,在线预测的精度几乎与离线预测的精度相同。

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