Code
check_metrics_arg(NULL, wflow)
Output
A metric set, consisting of:
- `rmse()`, a numeric metric | direction: minimize
- `rsq()`, a numeric metric | direction: maximize
Code
check_metrics_arg(met_reg, wflow)
Output
A metric set, consisting of:
- `rmse()`, a numeric metric | direction: minimize
Code
check_metrics_arg(met_cls, wflow)
Condition
Error:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
check_metrics_arg(met_mix_int, wflow)
Condition
Error:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
fit_resamples(wflow, rs, metrics = met_cls)
Condition
Error in `fit_resamples()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
fit_resamples(wflow, rs, metrics = met_mix_int)
Condition
Error in `fit_resamples()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
tune_grid(wflow_tune, rs, metrics = met_cls)
Condition
Error in `tune_grid()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
tune_grid(wflow_tune, rs, metrics = met_mix_int)
Condition
Error in `tune_grid()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
tune_bayes(wflow_tune, rs, metrics = met_cls)
Condition
Error in `tune_bayes()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
tune_bayes(wflow_tune, rs, metrics = met_mix_int)
Condition
Error in `tune_bayes()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
last_fit(wflow, split, metrics = met_cls)
Condition
Error in `last_fit()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
last_fit(wflow, split, metrics = met_mix_int)
Condition
Error in `last_fit()`:
! The parsnip model has `mode` value of "regression", but the `metrics` is a metric set for a different model mode.
Code
check_metrics_arg(NULL, wflow)
Output
A metric set, consisting of:
- `roc_auc()`, a probability metric | direction: maximize
- `accuracy()`, a class metric | direction: maximize
- `brier_class()`, a probability metric | direction: minimize
Code
check_metrics_arg(met_reg, wflow)
Condition
Error:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
check_metrics_arg(met_cls, wflow)
Output
A metric set, consisting of:
- `brier_class()`, a probability metric | direction: minimize
Code
check_metrics_arg(met_mix_int, wflow)
Condition
Error:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
fit_resamples(wflow, rs, metrics = met_reg)
Condition
Error in `fit_resamples()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
fit_resamples(wflow, rs, metrics = met_mix_int)
Condition
Error in `fit_resamples()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
tune_grid(wflow_tune, rs, metrics = met_reg)
Condition
Error in `tune_grid()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
tune_grid(wflow_tune, rs, metrics = met_mix_int)
Condition
Error in `tune_grid()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
tune_bayes(wflow_tune, rs, metrics = met_reg)
Condition
Error in `tune_bayes()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
tune_bayes(wflow_tune, rs, metrics = met_mix_int)
Condition
Error in `tune_bayes()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
last_fit(wflow, split, metrics = met_reg)
Condition
Error in `last_fit()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
last_fit(wflow, split, metrics = met_mix_int)
Condition
Error in `last_fit()`:
! The parsnip model has `mode` value of "classification", but the `metrics` is a metric set for a different model mode.
Code
check_metrics_arg(NULL, wflow)
Output
A metric set, consisting of:
- `brier_survival()`, a dynamic survival metric | direction: minimize
Code
check_metrics_arg(met_reg, wflow)
Condition
Error:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
check_metrics_arg(met_cls, wflow)
Condition
Error:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
check_metrics_arg(met_srv, wflow)
Output
A metric set, consisting of:
- `concordance_survival()`, a static survival metric | direction: maximize
Code
fit_resamples(wflow, rs, metrics = met_cls)
Condition
Error in `fit_resamples()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
fit_resamples(wflow, rs, metrics = met_reg)
Condition
Error in `fit_resamples()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
tune_grid(wflow_tune, rs, metrics = met_cls)
Condition
Error in `tune_grid()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
tune_grid(wflow_tune, rs, metrics = met_reg)
Condition
Error in `tune_grid()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
tune_bayes(wflow_tune, rs, metrics = met_cls)
Condition
Error in `tune_bayes()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
tune_bayes(wflow_tune, rs, metrics = met_reg)
Condition
Error in `tune_bayes()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
last_fit(wflow, split, metrics = met_cls)
Condition
Error in `last_fit()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
Code
last_fit(wflow, split, metrics = met_reg)
Condition
Error in `last_fit()`:
! The parsnip model has `mode` value of "censored regression", but the `metrics` is a metric set for a different model mode.
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