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首页> 外文期刊>The British journal of mathematical and statistical psychology >Person-specific versus multilevel autoregressive models: Accuracy in parameter estimates at the population and individual levels
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Person-specific versus multilevel autoregressive models: Accuracy in parameter estimates at the population and individual levels

机译:特定于人士的与多级自回归模型:参数估计的准确性和个人级别

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摘要

This paper compares the multilevel modelling (MLM) approach and the person-specific (PS) modelling approach in examining autoregressive (AR) relations with intensive longitudinal data. Two simulation studies are conducted to examine the influences of sample heterogeneity, time series length, sample size, and distribution of individual level AR coefficients on the accuracy of AR estimates, both at the population level and at the individual level. It is found that MLM generally outperforms the PS approach under two conditions: when the sample has a homogeneous AR pattern, namely, when all individuals in the sample are characterized by AR processes with the same order; and when the sample has heterogeneous AR patterns, but a multilevel model with a sufficiently high order (i.e., an order equal to or higher than the maximum order of individual AR patterns in the sample) is fitted and successfully converges. If a lower-order multilevel model is chosen for heterogeneous samples, the higher-order lagged effects are misrepresented, resulting in bias at the population level and larger prediction errors at the individual level. In these cases, the PS approach is preferable, given sufficient measurement occasions (T >= 50). In addition, sample size and distribution of individual level AR coefficients do not have a large impact on the results. Implications of these findings on model selection and research design are discussed.
机译:本文比较了多级建模(MLM)方法和特定于自我评级(AR)关系的人的特定于(PS)建模方法,密集型纵向数据。进行两项仿真研究,以检查样品异质性,时间序列长度,样本大小和各个级别AR系数的分布对人口水平和个人层面的估计精度的影响。结果发现MLM通常优于两个条件下的PS方法:当样品具有均匀的AR模式时,即当样品中的所有个体都是具有相同顺序的AR过程的特征;当样品具有异质的AR模式时,但是具有足够高(即,等于或高于样品中的各个AR图案的最大阶数的顺序)的多级模型被装配并成功收敛。如果为异构样本选择了较低的多级模型,则更高级滞后的效果被误读,导致人口水平偏差和各个层面的更大预测误差。在这些情况下,给定足够的测量场合(t> = 50),PS方法是优选的。另外,单个AR系数的样本量和分布对结果没有大的影响。讨论了这些调查结果对模型选择和研究设计的影响。

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