Test if your model is a good model!
A crucial aspect when building regression models is to evaluate the quality of modelfit. It is important to investigate how well models fit to the data and which fit indices to report. Functions to create diagnostic plots or to compute fit measures do exist, however, mostly spread over different packages. There is no unique and consistent approach to assess the model quality for different kind of models.
The primary goal of the performance package is to fill this gap and to provide utilities for computing indices of model quality and goodness of fit. These include measures like r-squared (R2), root mean squared error (RMSE) or intraclass correlation coefficient (ICC) , but also functions to check (mixed) models for overdispersion, zero-inflation, convergence or singularity.
The performance package is available on CRAN, while its latest development version is available on R-universe (from rOpenSci).
Type | Source | Command |
---|---|---|
Release | CRAN | install.packages("performance") |
Development | R-universe | install.packages("performance", repos = "https://easystats.r-universe.dev") |
Once you have downloaded the package, you can then load it using:
library("performance")
To cite performance in publications use:
citation("performance")
#>
#> Lüdecke et al., (2021). performance: An R Package
#> for Assessment, Comparison and Testing of
#> Statistical Models. Journal of Open Source
#> Software, 6(60), 3139.
#> https://doi.org/10.21105/joss.03139
#>
#> A BibTeX entry for LaTeX users is
#>
#> @Article{,
#> title = {{performance}: An {R} Package for Assessment, Comparison and Testing of Statistical Models},
#> author = {Daniel Lüdecke and Mattan S. Ben-Shachar and Indrajeet Patil and Philip Waggoner and Dominique Makowski},
#> year = {2021},
#> journal = {Journal of Open Source Software},
#> volume = {6},
#> number = {60},
#> pages = {3139},
#> doi = {10.21105/joss.03139},
#> }
There is a nice introduction into the package on youtube.
performance has a generic r2()
function, which computes the
r-squared for many different models, including mixed effects and
Bayesian regression models.
r2()
returns a list containing values related to the “most
appropriate” r-squared for the given model.
model <- lm(mpg ~ wt + cyl, data = mtcars)
r2(model)
#> # R2 for Linear Regression
#> R2: 0.830
#> adj. R2: 0.819
model <- glm(am ~ wt + cyl, data = mtcars, family = binomial)
r2(model)
#> # R2 for Logistic Regression
#> Tjur's R2: 0.705
library(MASS)
data(housing)
model <- polr(Sat ~ Infl + Type + Cont, weights = Freq, data = housing)
r2(model)
#> Nagelkerke's R2: 0.108
The different R-squared measures can also be accessed directly via
functions like r2_bayes()
, r2_coxsnell()
or r2_nagelkerke()
(see a
full list of functions
here).
For mixed models, the conditional and marginal R-squared are returned. The marginal R-squared considers only the variance of the fixed effects and indicates how much of the model’s variance is explained by the fixed effects part only. The conditional R-squared takes both the fixed and random effects into account and indicates how much of the model’s variance is explained by the “complete” model.
For frequentist mixed models, r2()
(resp. r2_nakagawa()
) computes
the mean random effect variances, thus r2()
is also appropriate for
mixed models with more complex random effects structures, like random
slopes or nested random effects (Johnson 2014; Nakagawa, Johnson, and
Schielzeth 2017).
set.seed(123)
library(rstanarm)
model <- stan_glmer(
Petal.Length ~ Petal.Width + (1 | Species),
data = iris,
cores = 4
)
r2(model)
#> # Bayesian R2 with Compatibility Interval
#>
#> Conditional R2: 0.953 (95% CI [0.941, 0.963])
#> Marginal R2: 0.824 (95% CI [0.713, 0.896])
library(lme4)
model <- lmer(Reaction ~ Days + (1 + Days | Subject), data = sleepstudy)
r2(model)
#> # R2 for Mixed Models
#>
#> Conditional R2: 0.799
#> Marginal R2: 0.279
Similar to R-squared, the ICC provides information on the explained variance and can be interpreted as “the proportion of the variance explained by the grouping structure in the population” (Hox 2010).
icc()
calculates the ICC for various mixed model objects, including
stanreg
models.
library(lme4)
model <- lmer(Reaction ~ Days + (1 + Days | Subject), data = sleepstudy)
icc(model)
#> # Intraclass Correlation Coefficient
#>
#> Adjusted ICC: 0.722
#> Conditional ICC: 0.521
…and models of class brmsfit
.
library(brms)
set.seed(123)
model <- brm(mpg ~ wt + (1 | cyl) + (1 + wt | gear), data = mtcars)
icc(model)
#> # Intraclass Correlation Coefficient
#>
#> Adjusted ICC: 0.930
#> Conditional ICC: 0.771
Overdispersion occurs when the observed variance in the data is higher
than the expected variance from the model assumption (for Poisson,
variance roughly equals the mean of an outcome).
check_overdispersion()
checks if a count model (including mixed
models) is overdispersed or not.
library(glmmTMB)
data(Salamanders)
model <- glm(count ~ spp + mined, family = poisson, data = Salamanders)
check_overdispersion(model)
#> # Overdispersion test
#>
#> dispersion ratio = 2.946
#> Pearson's Chi-Squared = 1873.710
#> p-value = < 0.001
Overdispersion can be fixed by either modelling the dispersion parameter (not possible with all packages), or by choosing a different distributional family (like Quasi-Poisson, or negative binomial, see (Gelman and Hill 2007)).
Zero-inflation (in (Quasi-)Poisson models) is indicated when the amount of observed zeros is larger than the amount of predicted zeros, so the model is underfitting zeros. In such cases, it is recommended to use negative binomial or zero-inflated models.
Use check_zeroinflation()
to check if zero-inflation is present in the
fitted model.
model <- glm(count ~ spp + mined, family = poisson, data = Salamanders)
check_zeroinflation(model)
#> # Check for zero-inflation
#>
#> Observed zeros: 387
#> Predicted zeros: 298
#> Ratio: 0.77
A “singular” model fit means that some dimensions of the variance-covariance matrix have been estimated as exactly zero. This often occurs for mixed models with overly complex random effects structures.
check_singularity()
checks mixed models (of class lme
, merMod
,
glmmTMB
or MixMod
) for singularity, and returns TRUE
if the model
fit is singular.
library(lme4)
data(sleepstudy)
# prepare data
set.seed(123)
sleepstudy$mygrp <- sample(1:5, size = 180, replace = TRUE)
sleepstudy$mysubgrp <- NA
for (i in 1:5) {
filter_group <- sleepstudy$mygrp == i
sleepstudy$mysubgrp[filter_group] <-
sample(1:30, size = sum(filter_group), replace = TRUE)
}
# fit strange model
model <- lmer(
Reaction ~ Days + (1 | mygrp / mysubgrp) + (1 | Subject),
data = sleepstudy
)
check_singularity(model)
#> [1] TRUE
Remedies to cure issues with singular fits can be found here.
Linear models assume constant error variance (homoskedasticity).
The check_heteroscedasticity()
functions assess if this assumption has
been violated:
data(cars)
model <- lm(dist ~ speed, data = cars)
check_heteroscedasticity(model)
#> Warning: Heteroscedasticity (non-constant error variance) detected (p = 0.031).
performance provides many functions to check model assumptions, like
check_collinearity()
, check_normality()
or
check_heteroscedasticity()
. To get a comprehensive check, use
check_model()
.
# defining a model
model <- lm(mpg ~ wt + am + gear + vs * cyl, data = mtcars)
# checking model assumptions
check_model(model)
model_performance()
computes indices of model performance for
regression models. Depending on the model object, typical indices might
be r-squared, AIC, BIC, RMSE, ICC or LOOIC.
m1 <- lm(mpg ~ wt + cyl, data = mtcars)
model_performance(m1)
#> # Indices of model performance
#>
#> AIC | BIC | R2 | R2 (adj.) | RMSE | Sigma
#> -----------------------------------------------------
#> 156.010 | 161.873 | 0.830 | 0.819 | 2.444 | 2.568
m2 <- glm(vs ~ wt + mpg, data = mtcars, family = "binomial")
model_performance(m2)
#> # Indices of model performance
#>
#> AIC | BIC | Tjur's R2 | RMSE | Sigma | Log_loss | Score_log | Score_spherical | PCP
#> --------------------------------------------------------------------------------------------
#> 31.298 | 35.695 | 0.478 | 0.359 | 0.934 | 0.395 | -14.903 | 0.095 | 0.743
library(lme4)
m3 <- lmer(Reaction ~ Days + (1 + Days | Subject), data = sleepstudy)
model_performance(m3)
#> # Indices of model performance
#>
#> AIC | BIC | R2 (cond.) | R2 (marg.) | ICC | RMSE | Sigma
#> -----------------------------------------------------------------------
#> 1755.628 | 1774.786 | 0.799 | 0.279 | 0.722 | 23.438 | 25.592
The compare_performance()
function can be used to compare the
performance and quality of several models (including models of different
types).
counts <- c(18, 17, 15, 20, 10, 20, 25, 13, 12)
outcome <- gl(3, 1, 9)
treatment <- gl(3, 3)
m4 <- glm(counts ~ outcome + treatment, family = poisson())
compare_performance(m1, m2, m3, m4)
#> # Comparison of Model Performance Indices
#>
#> Name | Model | AIC | AIC weights | BIC | BIC weights | RMSE | Sigma | Score_log | Score_spherical | R2 | R2 (adj.) | Tjur's R2 | Log_loss | PCP | R2 (cond.) | R2 (marg.) | ICC | Nagelkerke's R2
#> -----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------
#> m1 | lm | 156.010 | < 0.001 | 161.873 | < 0.001 | 2.444 | 2.568 | | | 0.830 | 0.819 | | | | | | |
#> m2 | glm | 31.298 | 1.000 | 35.695 | 1.000 | 0.359 | 0.934 | -14.903 | 0.095 | | | 0.478 | 0.395 | 0.743 | | | |
#> m3 | lmerMod | 1755.628 | < 0.001 | 1774.786 | < 0.001 | 23.438 | 25.592 | | | | | | | | 0.799 | 0.279 | 0.722 |
#> m4 | glm | 56.761 | < 0.001 | 57.747 | < 0.001 | 3.043 | 1.132 | -2.598 | 0.324 | | | | | | | | | 0.657
One can also easily compute and a composite index of model performance and sort the models from the best one to the worse.
compare_performance(m1, m2, m3, m4, rank = TRUE)
#> # Comparison of Model Performance Indices
#>
#> Name | Model | RMSE | Sigma | AIC weights | BIC weights | Performance-Score
#> --------------------------------------------------------------------------------
#> m2 | glm | 0.359 | 0.934 | 1.000 | 1.000 | 100.00%
#> m4 | glm | 3.043 | 1.132 | < 0.001 | < 0.001 | 46.89%
#> m1 | lm | 2.444 | 2.568 | < 0.001 | < 0.001 | 46.09%
#> m3 | lmerMod | 23.438 | 25.592 | < 0.001 | < 0.001 | 0.00%
Finally, we provide convenient visualisation (the see
package must be
installed).
plot(compare_performance(m1, m2, m4, rank = TRUE))
test_performance()
(and test_bf
, its Bayesian sister) carries out
the most relevant and appropriate tests based on the input (for
instance, whether the models are nested or not).
set.seed(123)
data(iris)
lm1 <- lm(Sepal.Length ~ Species, data = iris)
lm2 <- lm(Sepal.Length ~ Species + Petal.Length, data = iris)
lm3 <- lm(Sepal.Length ~ Species * Sepal.Width, data = iris)
lm4 <- lm(Sepal.Length ~ Species * Sepal.Width + Petal.Length + Petal.Width, data = iris)
test_performance(lm1, lm2, lm3, lm4)
#> Name | Model | BF | Omega2 | p (Omega2) | LR | p (LR)
#> ------------------------------------------------------------
#> lm1 | lm | | | | |
#> lm2 | lm | > 1000 | 0.69 | < .001 | -6.25 | < .001
#> lm3 | lm | > 1000 | 0.36 | < .001 | -3.44 | < .001
#> lm4 | lm | > 1000 | 0.73 | < .001 | -7.77 | < .001
#> Each model is compared to lm1.
test_bf(lm1, lm2, lm3, lm4)
#> Bayes Factors for Model Comparison
#>
#> Model BF
#> [lm2] Species + Petal.Length 3.45e+26
#> [lm3] Species * Sepal.Width 4.69e+07
#> [lm4] Species * Sepal.Width + Petal.Length + Petal.Width 7.58e+29
#>
#> * Against Denominator: [lm1] Species
#> * Bayes Factor Type: BIC approximation
Please note that the performance project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.
We are happy to receive bug reports, suggestions, questions, and (most of all) contributions to fix problems and add features.
Please follow contributing guidelines mentioned here:
https://easystats.github.io/performance/CONTRIBUTING.html
Gelman, Andrew, and Jennifer Hill. 2007. Data Analysis Using Regression and Multilevel/Hierarchical Models. Analytical Methods for Social Research. Cambridge ; New York: Cambridge University Press.
Hox, J. J. 2010. Multilevel Analysis: Techniques and Applications. 2nd ed. Quantitative Methodology Series. New York: Routledge.
Johnson, Paul C. D. 2014. “Extension of Nakagawa & Schielzeth’s R2 GLMM to Random Slopes Models.” Edited by Robert B. O’Hara. Methods in Ecology and Evolution 5 (9): 944–46. https://doi.org/10.1111/2041-210X.12225.
Nakagawa, Shinichi, Paul C. D. Johnson, and Holger Schielzeth. 2017. “The Coefficient of Determination R2 and Intra-Class Correlation Coefficient from Generalized Linear Mixed-Effects Models Revisited and Expanded.” Journal of The Royal Society Interface 14 (134): 20170213. https://doi.org/10.1098/rsif.2017.0213.