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Modeling noisy data with differential equations using observed and expected matrices

机译:使用观测矩阵和期望矩阵使用微分方程对噪声数据建模

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摘要

Complex intraindividual variability observed in psychology may be well described using differential equations. It is difficult, however, to apply differential equation models in psychological contexts, as time series are frequently short, poorly sampled, and have large proportions of measurement and dynamic error. Furthermore, current methods for differential equation modeling usually consider data that are atypical of many psychological applications. Using embedded and observed data matrices, a statistical approach to differential equation modeling is presented. This approach appears robust to many characteristics common to psychological time series.
机译:使用微分方程可以很好地描述心理学中观察到的复杂的个体内变异性。但是,由于时间序列通常较短,采样率较低且具有很大比例的测量值和动态误差,因此很难在心理环境中应用微分方程模型。此外,当前用于微分方程建模的方法通常会考虑许多心理学应用中非典型的数据。使用嵌入和观察到的数据矩阵,提出了一种统计方法进行微分方程建模。这种方法对于心理时间序列共有的许多特征显得很健壮。

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