Compute measures of agreement between observed and predicted responses.
accuracy(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
...
)auc(
observed,
predicted = NULL,
metrics = c(MachineShop::tpr, MachineShop::fpr),
stat = MachineShop::settings("stat.Curve"),
...
)
brier(observed, predicted = NULL, ...)
cindex(observed, predicted = NULL, ...)
cross_entropy(observed, predicted = NULL, ...)
f_score(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
beta = 1,
...
)
fnr(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
fpr(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
kappa2(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
...
)
npv(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
ppv(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
pr_auc(observed, predicted = NULL, ...)
precision(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
...
)
recall(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
...
)
roc_auc(observed, predicted = NULL, ...)
roc_index(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
f = function(sensitivity, specificity) (sensitivity + specificity)/2,
...
)
rpp(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
sensitivity(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
...
)
specificity(
observed,
predicted = NULL,
cutoff = MachineShop::settings("cutoff"),
...
)
tnr(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
tpr(observed, predicted = NULL, cutoff = MachineShop::settings("cutoff"), ...)
weighted_kappa2(observed, predicted = NULL, power = 1, ...)
gini(observed, predicted = NULL, ...)
mae(observed, predicted = NULL, ...)
mse(observed, predicted = NULL, ...)
msle(observed, predicted = NULL, ...)
r2(observed, predicted = NULL, dist = NULL, ...)
rmse(observed, predicted = NULL, ...)
rmsle(observed, predicted = NULL, ...)
observed responses; or confusion, performance curve, or resample result containing observed and predicted responses.
predicted responses if not contained in
observed
.
numeric (0, 1) threshold above which binary factor probabilities are classified as events and below which survival probabilities are classified.
arguments passed to or from other methods.
list of two performance metrics for the calculation [default: ROC metrics].
function or character string naming a function to compute a
summary statistic at each cutoff value of resampled metrics in performance
curves, or NULL
for resample-specific metrics.
relative importance of recall to precision in the calculation of
f_score
[default: F1 score].
function to calculate a desired sensitivity-specificity tradeoff.
power to which positional distances of off-diagonals from the
main diagonal in confusion matrices are raised to calculate
weighted_kappa2
.
character string specifying a distribution with which to estimate
the survival mean in the total sum of square component of r2
.
Possible values are "empirical"
for the Kaplan-Meier estimator,
"exponential"
, "extreme"
, "gaussian"
,
"loggaussian"
, "logistic"
, "loglogistic"
,
"lognormal"
, "rayleigh"
, "t"
, or "weibull"
(default).