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Plot True vs. Predicted Values for Supervised objects. For classification, it plots a confusion matrix. For regression, it plots a scatter plot of true vs. predicted values.

Usage

plot_true_pred(x, ...)

Arguments

x

Supervised or SupervisedRes object.

...

Additional arguments passed to methods.

Value

plotly object.

Author

EDG

Examples

x <- set_outcome(iris, "Sepal.Length")
sepallength_glm <- train(x, algorithm = "GLM")
#> 2026-02-22 18:59:31 
#>
#>  [train]
#> 2026-02-22 18:59:31 
#> Training set: 150 cases x 4 features.
#>  [summarize_supervised]
#> 2026-02-22 18:59:31 
#> // Max workers: 7 => Algorithm: 1; Tuning: 1; Outer Resampling: 1
#>  [get_n_workers]
#> 2026-02-22 18:59:31 
#> Training GLM Regression...
#>  [train]
#> 2026-02-22 18:59:31 
#> Checking data is ready for training...
#>  
#>  
#> [check_supervised]
#> 
#> 
#> <Regression>
#> GLM (Generalized Linear Model)
#> 
#>   <Training Regression Metrics>
#>      MAE: 0.24
#>      MSE: 0.09
#>     RMSE: 0.30
#>      Rsq: 0.87
#> 
#> 2026-02-22 18:59:31 
#>  Done in 0.02 seconds.
#>  [train]
plot_true_pred(sepallength_glm)