I would like to implement a cross-validation model in R Shiny using the xgboost model and the xgb.cv() function.

Taking into account that this process/function will take a couple of hours to be completed, I would like to add a "Cancel" button which will be implemented with a stop process function in order the user to terminate the process at any time.

Could you please advise me on how to proceed?

**Server Code:**

```
server <- function(input, output, session) {
observeEvent(input$ML_Submit_Button, {
shinyjs::hide("ML_Submit_Button")
shinyjs::show("ML_Stop_Button")
xgb_gs_cv_regression(
xgb_train = values$xgb_train,
subsample_choice = values$subsample_slider_seq,
colsample_bytree_choice = values$colsample_bytree_slider_seq,
max_depth_choice = values$max_depth_slider_seq,
min_child_weight_choice = values$min_child_weight_slider_seq,
eta_choice = values$eta_slider_seq,
n_rounds_choice = values$n_rounds_slider_seq,
n_fold_choice = values$n_fold_slider_seq
)
shinyjs::hide("ML_Stop_Button")
shinyjs::show("ML_Submit_Button")
})
}
```

**XGB CV Function Code:**

```
xgb_gs_cv_regression <- function(xgb_train,
subsample_choice,
colsample_bytree_choice,
max_depth_choice,
min_child_weight_choice,
eta_choice,
n_rounds_choice,
n_fold_choice) {
searchGridSubCol <- expand.grid(
subsample = subsample_choice,
colsample_bytree = colsample_bytree_choice,
max_depth = max_depth_choice,
min_child_weight = min_child_weight_choice,
eta = eta_choice,
n_rounds = n_rounds_choice,
n_fold = n_fold_choice
)
rmseErrorsHyperparameters <- apply(searchGridSubCol, 1,
function(parameterList) {
#Extract Parameters to test
currentSubsampleRate <-
parameterList[["subsample"]]
currentColsampleRate <-
parameterList[["colsample_bytree"]]
currentDepth <-
parameterList[["max_depth"]]
currentEta <-
parameterList[["eta"]]
currentMinChildWeight <-
parameterList[["min_child_weight"]]
currentNRounds <-
parameterList[["n_rounds"]]
currentNFold <-
parameterList[["n_fold"]]
xgboostModelCV <-
xgb.cv(
objective = "reg:squarederror",
data = xgb_train,
booster = "gbtree",
showsd = TRUE,
#metrics = "rmse",
verbose = TRUE,
print_every_n = 10,
early_stopping_rounds = 10,
eval_metric = "rmse",
"nrounds" = currentNRounds,
"nfold" = currentNFold,
"max_depth" = currentDepth,
"eta" = currentEta,
"subsample" = currentSubsampleRate,
"colsample_bytree" = currentColsampleRate,
"min_child_weight" = currentMinChildWeight
)
xgb_cv_xvalidationScores <-
xgboostModelCV$evaluation_log
test_rmse <-
tail(xgb_cv_xvalidationScores$test_rmse_mean, 1)
train_rmse <-
tail(xgb_cv_xvalidationScores$train_rmse_mean, 1)
gs_results_output <-
c(
test_rmse,
train_rmse,
currentSubsampleRate,
currentColsampleRate,
currentDepth,
currentEta,
currentMinChildWeight,
currentNRounds,
currentNFold
)
return(gs_results_output)
})
gs_results_varnames <-
c(
"TestRMSE",
"TrainRMSE",
"SubSampRate",
"ColSampRate",
"Depth",
"eta",
"currentMinChildWeight",
"nrounds",
"nfold"
)
t_rmseErrorsHyperparameters <-
as.data.frame(t(rmseErrorsHyperparameters))
names(t_rmseErrorsHyperparameters) <- gs_results_varnames
return(t_rmseErrorsHyperparameters)
}
```