visualize\(evaluate\)discrimination$pr

Precision-recall curves for discrimination results

Description

Precision-recall curves for discrimination results

Usage

visualize.evaluate.pr(
  results,
  models = NULL,
  outcomes = NULL,
  show.pr.auc = TRUE,
  facet.by = c("none", "outcome"),
  colors = NULL,
  ...
)

Arguments

results

A PolyGeniusEvaluation object.

models

Optional model filter.

outcomes

Optional outcome filter.

show.pr.auc

Whether to append PR-AUC values, and confidence intervals when available, to legend labels.

facet.by

Faceting mode (“none” or “outcome”).

colors

Optional named color vector.

Reserved for future extensions.

Value

A ggplot object.

See Also

Other visualize: visualize.evaluate.calibration.curve(), visualize.evaluate.calibration.slope.intercept(), visualize.evaluate.compare.delta.forest(), visualize.evaluate.compare.delta.heatmap(), visualize.evaluate.confusion(), visualize.evaluate.discrimination.curve(), visualize.evaluate.distribution(), visualize.evaluate.forest(), visualize.evaluate.incremental.delta(), visualize.evaluate.leaderboard(), visualize.evaluate.metric.flags(), visualize.evaluate.metric.heatmap(), visualize.evaluate.predicted.vs.observed(), visualize.evaluate.residuals(), visualize.evaluate.risk.strata.lift(), visualize.evaluate.risk.strata.profile(), visualize.evaluate.roc(), visualize.evaluate.similarity.heatmap()