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Reconsidering the estimation of costs of phenotypic plasticity using the robust ridge estimator

机译:使用鲁棒岭估算器重新考虑表型可塑性成本

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No coherent message has emerged from previous studies that have attempted to detect cost of plasticity. We infer that a major cause of this lack of coherence arises from the use of an inappropriate statistical method-ordinary least squares (OLS) estimation-which gives poor estimates in the presence of multicollinearity and outliers in data. The robust ridge estimator can handle the problems of multicollinearity and outliers simultaneously. In some simulation scenarios, this estimator has been observed to be resistant to outliers and less affected by multicollinearity compared with the OLS estimator. This paper aims to confirm the reliability of the robust ridge estimator in an extreme scenario (small sample size, few explanatory variables, high levels of multicollinearity, and high rates of outliers) wherein we faced underestimating costs of plasticity. We conducted simulations to compare the performance of the robust ridge estimator with the OLS estimator. The robust ridge estimator performed better than the OLS estimator did. We applied the robust ridge estimator for two ecological datasets, where the conventional OLS estimator incorrectly underestimated costs of plasticity. We concluded that cost of plasticity is a detectable entity in ecological data under rigorous experiment with an appropriate statistical analysis.
机译:从之前的研究中没有出现一致的信息,这些研究已经试图检测可塑性成本。我们推断出这种缺乏一致性的主要原因出现了使用不适当的统计方法 - 普通的最小二乘(OLS)估计 - 这在数据存在下存在差的估计和数据中的异常值。强大的脊估计器可以同时处理多色性和异常值的问题。在一些模拟场景中,与OLS估计器相比,该估计器已经观察到对异常值抵抗抗异常值,并且通过多型头部的影响较小。本文旨在确认强大的山脊估计器在极端情况下的可靠性(小样本大小,很少的解释性变量,高水平的多色性,以及高级别的异常值),其中我们面临着低估可塑性的成本。我们进行了模拟以比较强大的脊估计与OLS估计的性能。强大的脊估计器比OLS估计器更好。我们应用了两个生态数据集的强大脊估计器,其中传统的OLS估计器不正确低估了可塑性的成本。我们得出结论,在严格的实验下,可塑性成本是生态数据的可检测实体,具有适当的统计分析。

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