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Conclusions beyond support: overconfident estimates in mixed models

机译:结论无法支持:混合模型中过分估计

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摘要

Mixed-effect models are frequently used to control for the nonindependence of data points, for example, when repeated measures from the same individuals are available. The aim of these models is often to estimate fixed effects and to test their significance. This is usually done by including random intercepts, that is, intercepts that are allowed to vary between individuals. The widespread belief is that this controls for all types of pseudoreplication within individuals. Here we show that this is not the case, if the aim is to estimate effects that vary within individuals and individuals differ in their response to these effects. In these cases, random intercept models give overconfident estimates leading to conclusions that are not supported by the data. By allowing individuals to differ in the slopes of their responses, it is possible to account for the nonindependence of data points that pseudoreplicate slope information. Such random slope models give appropriate standard errors and are easily implemented in standard statistical software. Because random slope models are not always used where they are essential, we suspect that many published findings have too narrow confidence intervals and a substantially inflated type I error rate. Besides reducing type I errors, random slope models have the potential to reduce residual variance by accounting for between-individual variation in slopes, which makes it easier to detect treatment effects that are applied between individuals, hence reducing type II errors as well.
机译:混合效果模型经常用于控制数据点的独立性,例如,当有来自同一个人的重复测量可用时。这些模型的目的通常是估计固定效应并测试其重要性。通常通过包括随机截距(即允许个体间变化的截距)来完成此操作。人们普遍认为,这可以控制个体内部的所有类型的伪复制。在这里,我们表明情况并非如此,如果目的是估计个体内不同的效应并且个体对这些效应的反应不同。在这些情况下,随机截距模型会给出过度自信的估计,从而得出数据不支持的结论。通过允许个人在其响应的斜率上有所不同,可以解决伪复制斜率信息的数据点的非独立性。这种随机斜率模型会给出适当的标准误差,并且可以在标准统计软件中轻松实现。由于随机斜率模型未必总是在必不可少的地方使用,因此我们怀疑许多已发表的发现均具有过窄的置信区间和显着夸大的I型错误率。除了减少I型错误之外,随机斜率模型还可以通过考虑坡度之间的个体差异来减少残留方差,这使得更容易检测应用于个体之间的治疗效果,从而也减少了II型错误。

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