This is an example output tibble from the
model_gam function applied
on the Central Baltic Sea food web indicator demonstration data.
A data frame with 84 rows and 17 variables:
Numerical IDs for the IND~press combinations.
Specification of the model type; at this stage containing only "gam" (Generalized Additive Model).
Specification of the correlation structure; at this stage containing only "none".
AIC of the fitted models
Estimated degrees of freedom for the model terms.
The p values for the smoothing term (the pressure).
The significance codes for the p-values.
The adjusted r-squared for the models. Defined as the proportion of variance explained, where original variance and residual variance are both estimated using unbiased estimators. This quantity can be negative if your model is worse than a one parameter constant model, and can be higher for the smaller of two nested models.
The proportion of the null deviance explained by the models.
Absolute values of the root mean square error normalized by the standard deviation (NRMSE) using no back-transformation.
The p-values from a Kolmogorov-Smirnov Test applied on the model residuals to test for normal distribution. P-values > 0.05 indicate normally distributed residuals.
logical; indicates whether temporal autocorrelation (TAC) was detected in the residuals. TRUE if model residuals show TAC.
A list-column with outliers identified for each model (i.e. Cook`s distance > 1). The indices present the position in the training data, including NAs.
A list-column listing all outliers per model that have been excluded in the GAM fitting
A list-column of IND~press-specific gam objects.