# enmpa 0.1.9
- New Functions:
- Added three new functions:
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.
- Bug Fixes:
- Fixed a bug in
calibration_glm()
related to runtime
calculation errors.
# enmpa 0.1.8
- New Classes:
- Added two new classes:
enmpa_calibration
and
enmpa_fitted_models
.
- These classes help manage the list outputs from the functions
calibration_glm
and fit_selected
.
- Each class has two associated methods:
summary()
and
print()
, which provide summaries and print representations
of the objects, respectively.
- Updates to
predict_glm
:
- Added a new flag
extrapolation_type
to indicate the
type of extrapolation:
"E"
: Free extrapolation
"NE"
: No extrapolation
"EC"
: Extrapolation with clamping
- The flag
var_to_clamp
was replaced by
restricted_vars
.
- The flag
clamping
was removed.
- Updates to
model_validation
:
- Now includes ‘residual deviance’ as a validation metric.
# enmpa 0.1.5