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Root mean square error (RMSE) or mean absolute error (MAE)? – Arguments against avoiding RMSE in the literature

机译:均方根误差(RMSE)或均方根误差(MAE)? –文献中关于避免RMSE的争论

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Both the root mean square error (RMSE) and the mean absolute error (MAE) are regularly employed in model evaluation studies. Willmott and Matsuura (2005) have suggested that the RMSE is not a good indicator of average model performance and might be a misleading indicator of average error, and thus the MAE would be a better metric for that purpose. While some concerns over using RMSE raised by Willmott and Matsuura (2005) andWillmott et al. (2009) are valid, the proposed avoidance of RMSE in favor of MAE is not the solution. Citing the aforementioned papers, many researchers chose MAE over RMSE to present their model evaluation statistics when presenting or adding the RMSE measures could be more beneficial. In this technical note, we demonstrate that the RMSE is not ambiguous in its meaning, contrary to what was claimed byWillmott et al. (2009). The RMSE is more appropriate to represent model performance than the MAE when the error distribution is expected to be Gaussian. In addition, we show that the RMSE satisfies the triangle inequality requirement for a distance metric, whereas Willmott et al. (2009) indicated that the sums-of-squares-based statistics do not satisfy this rule. In the end, we discussed some circumstances where using the RMSE will be more beneficial. However, we do not contend that the RMSE is superior over the MAE. Instead, a combination of metrics, including but certainly not limited to RMSEs and MAEs, are often required to assess model performance.
机译:均方根误差(RMSE)和平均绝对误差(MAE)经常用于模型评估研究中。 Willmott和Matsuura(2005)提出,RMSE并不是平均模型性能的良好指标,并且可能是平均误差的误导性指标,因此MAE将是一个更好的指标。 Willmott and Matsuura(2005)和Willmott等人提出了一些关于使用RMSE的担忧。 (2009)是有效的,建议避免采用RME来支持MAE并不是解决方案。引用上述论文后,许多研究人员选择了MAE而不是RMSE来展示他们的模型评估统计数据,这在介绍或添加RMSE度量可能更有利时。在本技术说明中,我们证明了RMSE的含义并不歧义,与Willmott等人所主张的相反。 (2009)。当误差分布预计为高斯分布时,RMSE比MAE更适合表示模型性能。另外,我们表明,RMSE满足了距离度量的三角不等式要求,而Willmott等人则满足。 (2009年)指出,基于平方和的统计数据不满足该规则。最后,我们讨论了在某些情况下使用RMSE更有利。但是,我们不认为RMSE优于MAE。取而代之的是,通常需要结合多种指标(包括但不限于RMSE和MAE)来评估模型性能。

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