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Visualizing States of Time-Series Data by Autoregressive Gaussian Process Dynamical Models

机译:通过自回转高斯工艺动态模型可视化时间序列数据状态

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Gaussian process dynamical models (GPDMs) are used for nonlinear dimensionality reduction in time series by means of Gaussian process priors. An extension of GPDMs is proposed for visualizing the states of time series. The conventional GPDM approach associates a state with an observation value. Therefore, observations changing over time cannot be represented by a single state. Consequently, the resulting visualization of state transition is difficult to understand, as states change when the observation values change. To overcome this issue, autoregressive GPDMs, called ARGPDMs, are proposed. They associate a state with a vector autoregressive (VAR) model. Therefore, observations changing over time can be represented by a single state. The resulting visualization is easier to understand, as states change only when the VAR model changes. We demonstrate experimentally that the ARGPDM approach provides better visualization compared with conventional GPDMs.
机译:高斯工艺动态模型(GPDMS)用于通过高斯工艺前沿的时间序列的非线性维度减少。 提出了GPDMS的扩展,用于可视化时间序列序列。 传统的GPDM方法将状态与观察值相关联。 因此,随时间变化的观察不能由单个状态表示。 因此,由于当观察值改变时,难以理解所产生的状态转换的可视化。 为了克服这个问题,提出了叫做argpdms的自回归GPDM。 它们将状态与矢量自回归(var)模型相关联。 因此,随时间变化的观察可以由单个状态表示。 由于各种在VAR模型变化时,所产生的可视化更容易理解。 我们通过实验证明,与传统GPDM相比,ARGPDM方法提供更好的可视化。

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