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首页> 外文期刊>Methods in Ecology and Evolution >Modelling data from different sites, times or studies:weighted vs. unweighted regression
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Modelling data from different sites, times or studies:weighted vs. unweighted regression

机译:对来自不同地点,时间或研究的数据进行建模:加权与非加权回归

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1. We consider the use of weighted regression when modelling data from different sites, times or studies. Our primary focus is on the coverage rate of the 95% confidence interval for the slope parameter when we have a single predictor variable. We usesimulation to assess this coverage rate for both weighted and unweighted regression, across a range of scenarios likely to be encountered in ecology. 2. Our results are surprising: unweighted regression will often be more reliable than weighted regression. The well-known advantages of weighted regression are offset by having to estimate the process error variance. Although unweighted regression involves assuming that the measurement error variances are equal, the coverage rate is remarkably robust to departures from this assumption. Unweighted regression will often be more robust because it does not make use of potentially poor information on the measurement error variances. The only situation in which unweighted regression will perform poorly is whenthere is a strong relationship between the precision of an estimate and its leverage in the regression. We propose a simple diagnostic tool to assess when this might be the case. 3. The implications of our results are important in a management context as they indicate the benefits obtained from using a simple, readily understood approach to combining information.
机译:1.我们在对来自不同地点,时间或研究的数据进行建模时考虑使用加权回归。当我们只有一个预测变量时,我们主要关注于斜率参数的95%置信区间的覆盖率。我们使用模拟来评估生态学中可能遇到的各种情景下加权和非加权回归的覆盖率。 2.我们的结果令人惊讶:未加权回归通常比加权回归更可靠。加权回归的众所周知的优点通过必须估计过程误差方差而得到抵消。尽管未加权回归涉及假设测量误差方差相等,但是覆盖率对于偏离此假设具有显着的鲁棒性。未加权回归通常会更强大,因为它没有利用有关测量误差方差的潜在不良信息。加权加权回归表现不佳的唯一情况是估计的精度与其回归中的杠杆之间存在很强的关系。我们提出了一种简单的诊断工具来评估何时可能是这种情况。 3.我们的结果的含义在管理环境中很重要,因为它们表明使用简单易懂的方法组合信息所获得的收益。

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