plot_performance {alookr} | R Documentation |
Visualization for ROC curve
Description
plot_performance() visualizes a plot to ROC curve that separates model algorithm.
Usage
plot_performance(model)
Arguments
model |
A model_df. results of predicted model that created by run_predict(). |
Details
The ROC curve is output for each model included in the model_df class object specified as a model argument.
Value
There is no return value. Only the plot is drawn.
Examples
library(dplyr)
# Divide the train data set and the test data set.
sb <- rpart::kyphosis %>%
split_by(Kyphosis)
# Extract the train data set from original data set.
train <- sb %>%
extract_set(set = "train")
# Extract the test data set from original data set.
test <- sb %>%
extract_set(set = "test")
# Sampling for unbalanced data set using SMOTE(synthetic minority over-sampling technique).
train <- sb %>%
sampling_target(seed = 1234L, method = "ubSMOTE")
# Cleaning the set.
train <- train %>%
cleanse
# Run the model fitting.
result <- run_models(.data = train, target = "Kyphosis", positive = "present")
# Predict the model.
pred <- run_predict(result, test)
# Plot ROC curve
plot_performance(pred)
[Package alookr version 0.3.9 Index]