var_importance() now generates a bar plot even when
the model list contains a single model, instead of throwing an
error.
get_formulas() now returns the correct count of
generated formulas when mode = "intensive".
resp2var(),
jackknife(), and plot_jk().
resp2var(): Transforms species probability data into a
two-dimensional environmental space for visualization.jackknife(): Evaluates the influence of each variable
on the overall model using four distinct metrics: ROC-AUC, TSS, AICc,
and Deviance. This function facilitates jackknife resampling to assess
variable importance.plot_jk(): A function to plot the results of the
jackknife resampling.calibration_glm() related to runtime
calculation errors.enmpa_calibration and
enmpa_fitted_models.
calibration_glm and fit_selected.summary() and
print(), which provide summaries and print representations
of the objects, respectively.predict_glm:
extrapolation_type to indicate the
type of extrapolation:
"E": Free extrapolation"NE": No extrapolation"EC": Extrapolation with clampingvar_to_clamp was replaced by
restricted_vars.clamping was removed.model_validation: