When evaluating the performance of quantitative models, dimensioned errors often are characterized by sums-of-squares measures such as the mean squared error (MSE) or its square root, the root mean squared error (RMSE). In terms of quantifying average error, however, absolute-value-based measures such as the mean absolute error (MAE) are more interpretable than MSE or RMSE. Part of that historical preference for sums-of-squares measures is that they are mathematically amenable to decomposition and one can then form ratios, such as those based on separating MSE into its systematic and unsystematic components. Here, we develop and illustrate a decomposition of MAE into three useful submeasures: (1) bias error, (2) proportionality error, and (...
<p>Each dot shows the MARE values for one simulated dataset, grouped by parameter values (colour sca...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Estimates plus/minus standard deviation of the estimate across the folds. (XLS)</p
The mean squared error (MSE) and the related normalization, the Nash-Sutcliffe efficiency (NSE), are...
International audienceWe study in this paper the consequences of using the Mean Absolute Percentage ...
Comparison of the mean absolute error (MAE) and root mean square error (RMSE) of the proposed model ...
International audienceWe study in this paper the consequences of using the Mean Absolute Percentage ...
<p>Mean absolute error (MAE; kcal·min<sup>-1</sup>) and Mean absolute percentage error of predicted ...
<p>RMSE = root mean square error, MAE = mean absolute error and MAPE = mean absolute percentage erro...
<p>The mean absolute errors (MAEs) between the predicted and observed Phi and Psi angles, as a funct...
<p>Results to the left of the dotted line signify more accurate predictions from our models when com...
Comparison of the normalized mean absolute error (MAE) and normalized root mean square error (RMSE) ...
<p>(A) Box-plot of absolute errors for the two groups. (B) Mean absolute errors in the 3 directions ...
Linear models are invariant under non-singular, scale-preserving linear transformations, whereas mea...
An attractive alternative to least-squares data determined by using the median rather than the model...
<p>Each dot shows the MARE values for one simulated dataset, grouped by parameter values (colour sca...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Estimates plus/minus standard deviation of the estimate across the folds. (XLS)</p
The mean squared error (MSE) and the related normalization, the Nash-Sutcliffe efficiency (NSE), are...
International audienceWe study in this paper the consequences of using the Mean Absolute Percentage ...
Comparison of the mean absolute error (MAE) and root mean square error (RMSE) of the proposed model ...
International audienceWe study in this paper the consequences of using the Mean Absolute Percentage ...
<p>Mean absolute error (MAE; kcal·min<sup>-1</sup>) and Mean absolute percentage error of predicted ...
<p>RMSE = root mean square error, MAE = mean absolute error and MAPE = mean absolute percentage erro...
<p>The mean absolute errors (MAEs) between the predicted and observed Phi and Psi angles, as a funct...
<p>Results to the left of the dotted line signify more accurate predictions from our models when com...
Comparison of the normalized mean absolute error (MAE) and normalized root mean square error (RMSE) ...
<p>(A) Box-plot of absolute errors for the two groups. (B) Mean absolute errors in the 3 directions ...
Linear models are invariant under non-singular, scale-preserving linear transformations, whereas mea...
An attractive alternative to least-squares data determined by using the median rather than the model...
<p>Each dot shows the MARE values for one simulated dataset, grouped by parameter values (colour sca...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Estimates plus/minus standard deviation of the estimate across the folds. (XLS)</p