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Discriminative Switching Linear Dynamical Systems applied to Physiological Condition Monitoring

机译:鉴别切换线性动力系统应用于生理状态监测

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We present a Discriminative Switching Linear Dynamical System (DSLDS) applied to patient monitoring in Intensive Care Units (ICUs). Our approach is based on identifying the state-of-health of a patient given their observed vital signs using a discriminative classifier, and then inferring their underlying physiological values conditioned on this status. The work builds on the Factorial Switching Linear Dynamical System (FSLDS) (Quinn et al., 2009) which has been previously used in a similar setting. The FSLDS is a generative model, whereas the DSLDS is a discriminative model. We demonstrate on two real-world datasets that the DSLDS is able to outperform the FSLDS in most cases of interest, and that an α-mixture of the two models achieves higher performance than either of the two models separately.
机译:我们提出了一种鉴别的切换线性动力系统(DSLD),适用于密集护理单位(ICU)的患者监测。我们的方法是基于鉴定患者的健康状态,鉴于他们观察到的生命体征使用鉴别分类器,然后推断其基础的生理价值调节该地位。该工作构建在阶乘切换线性动态系统(FSLD)(Quinn等,2009)上,以前用于类似的设置。 FSLD是一种生成模型,而DSLD是一种判别模型。我们在两个现实世界数据集上展示了DSLD能够在大多数感兴趣的情况下优于FSLD,并且两种模型的α-混合的性能比两种模型中的任一部分分别实现更高。

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