Learn R Programming

performance (version 0.8.0)

model_performance.lm: Performance of Regression Models

Description

Compute indices of model performance for regression models.

Usage

# S3 method for lm
model_performance(model, metrics = "all", verbose = TRUE, ...)

Arguments

model

A model.

metrics

Can be "all", "common" or a character vector of metrics to be computed (some of c("AIC", "AICc", "BIC", "R2", "R2_adj", "RMSE", "SIGMA", "LOGLOSS", "PCP", "SCORE")). "common" will compute AIC, BIC, R2 and RMSE.

verbose

Toggle off warnings.

...

Arguments passed to or from other methods.

Value

A data frame (with one row) and one column per "index" (see metrics).

Details

Depending on model, following indices are computed:

  • AIC Akaike's Information Criterion, see ?stats::AIC

  • AICc Second-order (or small sample) AIC with a correction for small sample sizes

  • BIC Bayesian Information Criterion, see ?stats::BIC

  • R2 r-squared value, see r2()

  • R2_adj adjusted r-squared, see r2()

  • RMSE root mean squared error, see performance_rmse()

  • SIGMA residual standard deviation, see insight::get_sigma()

  • LOGLOSS Log-loss, see performance_logloss()

  • SCORE_LOG score of logarithmic proper scoring rule, see performance_score()

  • SCORE_SPHERICAL score of spherical proper scoring rule, see performance_score()

  • PCP percentage of correct predictions, see performance_pcp()

Examples

Run this code
# NOT RUN {
model <- lm(mpg ~ wt + cyl, data = mtcars)
model_performance(model)

model <- glm(vs ~ wt + mpg, data = mtcars, family = "binomial")
model_performance(model)
# }

Run the code above in your browser using DataLab