2023
DOI: 10.1101/2023.12.04.569928
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The unexpected consequences of predictor error in ecological model selection

Georg Manthey,
Miriam Liedvogel,
Birgen Haest
et al.

Abstract: 1AbstractThe ability to select statistical models based on how well they fit an empirical dataset is a central tenet of modern bioscience. How well this works, though, depends on how goodness-of-fit is measured. Likelihood and its derivatives (e.g. AIC) are popular and powerful tools when measuring goodness-of-fit, though inherently make assumptions about the data. One such assumption is absence of error on the x-axis (i.e. no error in the predictor). This, however, is often not correct and deviations from thi… Show more

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