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Hi, I'm wondering if it would be possible (or even make sense) to have the option to specify random effects in the model explainer?
I thought about this because when looking at feature importance, the full model RMSE is quite different to one that accounts for random effects. For example...
library(tidyverse)
library(tidymodels)
library(lme4)
library(DALEXtra)
df <- nlme::Oxboys
df
# model using lmer
lmr_mod <- lme4::lmer(height ~ age + Occasion + (1|Subject), df)
sjstats::rmse(lmr_mod)
# RMSE is 1.2
# model with tidymodels
mixed_model_spec <- linear_reg() %>% set_engine("lmer")
mixed_model_wf <- workflow() %>%
add_model(mixed_model_spec, formula = height ~ age + Occasion + (1|Subject)) %>%
add_variables(outcomes = height, predictors = c(age, Occasion, Subject))
fit <- fit(mixed_model_wf, df)
explainer <-
explain_tidymodels(
fit,
data = dplyr::select(df, c(age, Occasion, Subject)),
y = df$height,
label = "lmm",
verbose = T)
var_imp <-
feature_importance(explainer)
# full model RMSE is 8.0
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