Assessing the accuracy of predictive models for numerical data: Not r nor r2, why not? Then what?

Created 19/11/2025

Updated 19/11/2025

Assessing the accuracy of predictive models is critical because predictive models have been increasingly used across various disciplines and predictive accuracy determines the quality of resultant predictions. Pearson product-moment correlation coefficient (r) and the coefficient of determination (r2) are among the most widely used measures for assessing predictive models for numerical data, although they are argued to be biased, insufficient and misleading. In this study, geometrical graphs were used to illustrate what were used in the calculation of r and r2 and simulations were used to demonstrate the behaviour of r and r2 and to compare three accuracy measures under various scenarios. Relevant confusions about r and r2, has been clarified. The calculation of r and r2 is not based on the differences between the predicted and observed values. The existing error measures suffer various limitations and are unable to tell the accuracy. Variance explained by predictive models based on cross-validation (VEcv) is free of these limitations and is a reliable accuracy measure. Legates and McCabe’s efficiency (E1) is also an alternative accuracy measure. The r and r2 do not measure the accuracy and are incorrect accuracy measures. The existing error measures suffer limitations. VEcv and E1 are recommended for assessing the accuracy. The applications of these accuracy measures would encourage accuracy-improved predictive models to be developed to generate predictions for evidence-informed decision-making. Citation: Li J (2017) Assessing the accuracy of predictive models for numerical data: Not r nor r2, why not? Then what? PLoS ONE 12(8): e0183250. https://doi.org/10.1371/journal.pone.0183250

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Field Value
Title Assessing the accuracy of predictive models for numerical data: Not r nor r2, why not? Then what?
Language eng
Licence Not Specified
Landing Page https://data.gov.au/data/dataset/eef4afe9-54b9-467d-b020-b243306a163f
Contact Point
Geoscience Australia Data
clientservices@ga.gov.au
Reference Period 19/06/2025
Geospatial Coverage
Map data © OpenStreetMap contributors
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      ],
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  "type": "Polygon"
}
Data Portal Geoscience Australia

Data Source

This dataset was originally found on Geoscience Australia "Assessing the accuracy of predictive models for numerical data: Not r nor r2, why not? Then what?". Please visit the source to access the original metadata of the dataset:
https://ecat.ga.gov.au/geonetwork/srv/eng/csw/dataset/assessing-the-accuracy-of-predictive-models-for-numerical-data-not-r-nor-r2-why-not-then-what1