I generated a model using xgb.train with the "count:poisson" objective function and I get the following error when trying to create the explainer:

Error: Unsupported model type

Lime works when I replace the objective by something else such as reg:logistic.

Is there a way to explain count:poisson in lime? thanks

reproducible example:

library(xgboost)
library(dplyr)
library(caret)
library(insuranceData) # example dataset https://cran.r-project.org/web/packages/insuranceData/insuranceData.pdf
library(lime) # Local Interpretable Model-Agnostic Explanations
set.seed(123)
data(dataCar)
mydb <- dataCar %>% select(clm, exposure, veh_value, veh_body,
                           veh_age, gender, area, agecat)

label_var <- "clm"  
offset_var <- "exposure"
feature_vars <- mydb %>% 
  select(-one_of(c(label_var, offset_var))) %>% 
  colnames()

#preparing data for xgboost (one hot encoding of categorical (factor) data
myformula <- paste0( "~", paste0( feature_vars, collapse = " + ") ) %>% as.formula()
dummyFier <- caret::dummyVars(myformula, data=mydb, fullRank = TRUE)
dummyVars.df <- predict(dummyFier,newdata = mydb)
mydb_dummy <- cbind(mydb %>% select(one_of(c(label_var, offset_var))), 
                    dummyVars.df)
rm(myformula, dummyFier, dummyVars.df)


feature_vars_dummy <-  mydb_dummy  %>% select(-one_of(c(label_var, offset_var))) %>% colnames()

xgbMatrix <- xgb.DMatrix(
  data = mydb_dummy %>% select(feature_vars_dummy) %>% as.matrix, 
  label = mydb_dummy %>% pull(label_var),
  missing = "NAN")


#model 1: this does not
myParam <- list(max.depth = 2,
                eta = .01,
                gamma = 0.001,
                objective = 'count:poisson',
                eval_metric = "poisson-nloglik")


booster <- xgb.train(
  params = myParam, 
  data = xgbMatrix, 
  nround = 50)

explainer <- lime(mydb_dummy %>% select(feature_vars_dummy), 
                  model = booster)

explanation <- explain(mydb_dummy %>% select(feature_vars_dummy) %>% head,
                       explainer,
                       n_labels = 1, 
                       n_features = 2)
#Error: Unsupported model type
#model 2 : this works
myParam2 <- list(max.depth = 2,
                eta = .01,
                gamma = 0.001,
                objective = 'reg:logistic',
                eval_metric = "logloss")


booster2 <- xgb.train(
  params = myParam2, 
  data = xgbMatrix, 
  nround = 50)

explainer <- lime(mydb_dummy %>% select(feature_vars_dummy), 
                  model = booster)

explanation <- explain(mydb_dummy %>% select(feature_vars_dummy) %>% head,
                       explainer,
                       n_features = 2)


plot_features(explanation)
  • When asking for help, you should include a simple reproducible example with sample input and desired output that can be used to test and verify possible solutions. Show is the code you are actually running that generates the error. – MrFlick Mar 14 at 14:37
  • Just added example to OP – Zoltan Mar 14 at 14:48

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