Boker Steven M, Nesselroade John R
Multivariate Behav Res. 2002 Jan 1;37(1):127-60. doi: 10.1207/S15327906MBR3701_06.
A simple method for fitting differential equations to multi-wave panel data performs remarkably well in recovering parameters from underlying continuous models with as few as three waves of data. Two techniques for fitting models of intrinsic dynamics to intraindividual variability data are examined by testing these techniques' behavior in recovering the parameters from data generated by two simulated systems of differential equations. Each simulated data set contains 100 "subjects" each of whom are measured at only three points in time. A local linear approximation of the first and second derivatives of the subject's data accurately recovers the true parameters of each simulation. A statespace embedding technique for estimating the first and second derivatives does not recover the parameters as well. An optimum sampling interval can be estimated for this model as that interval at which multiple R(2) first nears its asymptotic value.
一种将微分方程拟合到多波面板数据的简单方法,在从底层连续模型中恢复参数时表现出色,即使只有三波数据。通过测试这些技术在从两个模拟微分方程系统生成的数据中恢复参数时的行为,研究了两种将内在动力学模型拟合到个体内变异性数据的技术。每个模拟数据集包含100个“受试者”,每个受试者仅在三个时间点进行测量。对受试者数据的一阶和二阶导数进行局部线性近似,可以准确地恢复每个模拟的真实参数。一种用于估计一阶和二阶导数的状态空间嵌入技术在恢复参数方面效果不佳。对于该模型,可以估计一个最佳采样间隔,即多重R(2)首次接近其渐近值的间隔。