# nolint start
library(mlexperiments)
library(mlsurvlrnrs)
# nolint start
library(mlexperiments)
library(mlsurvlrnrs)
See https://github.com/kapsner/mlsurvlrnrs/blob/main/R/learner_surv_xgboost_aft.R for implementation details.
<- survival::colon |>
dataset ::as.data.table() |>
data.tablena.omit()
<- dataset[get("etype") == 2, ]
dataset
<- c("status", "time", "rx")
surv_cols <- colnames(dataset)[3:(ncol(dataset) - 1)] feature_cols
<- 123
seed if (isTRUE(as.logical(Sys.getenv("_R_CHECK_LIMIT_CORES_")))) {
# on cran
<- 2L
ncores else {
} <- ifelse(
ncores test = parallel::detectCores() > 4,
yes = 4L,
no = ifelse(
test = parallel::detectCores() < 2L,
yes = 1L,
no = parallel::detectCores()
)
)
}options("mlexperiments.bayesian.max_init" = 10L)
options("mlexperiments.optim.xgb.nrounds" = 100L)
options("mlexperiments.optim.xgb.early_stopping_rounds" = 10L)
<- splitTools::multi_strata(
split_vector df = dataset[, .SD, .SDcols = surv_cols],
strategy = "kmeans",
k = 4
)
<- splitTools::partition(
data_split y = split_vector,
p = c(train = 0.7, test = 0.3),
type = "stratified",
seed = seed
)
<- model.matrix(
train_x ~ -1 + .,
dataset[$train, .SD, .SDcols = setdiff(feature_cols, surv_cols[1:2])
data_split
]
)<- survival::Surv(
train_y event = (dataset[data_split$train, get("status")] |>
as.character() |>
as.integer()),
time = dataset[data_split$train, get("time")],
type = "right"
)<- splitTools::multi_strata(
split_vector_train df = dataset[data_split$train, .SD, .SDcols = surv_cols],
strategy = "kmeans",
k = 4
)
<- model.matrix(
test_x ~ -1 + .,
$test, .SD, .SDcols = setdiff(feature_cols, surv_cols[1:2])]
dataset[data_split
)<- survival::Surv(
test_y event = (dataset[data_split$test, get("status")] |>
as.character() |>
as.integer()),
time = dataset[data_split$test, get("time")],
type = "right"
)
<- splitTools::create_folds(
fold_list y = split_vector_train,
k = 3,
type = "stratified",
seed = seed
)
# required learner arguments, not optimized
<- list(
learner_args objective = "survival:aft",
eval_metric = "aft-nloglik"
)
# set arguments for predict function and performance metric,
# required for mlexperiments::MLCrossValidation and
# mlexperiments::MLNestedCV
<- NULL
predict_args <- c_index
performance_metric <- NULL
performance_metric_args <- FALSE
return_models
# required for grid search and initialization of bayesian optimization
<- expand.grid(
parameter_grid subsample = seq(0.6, 1, .2),
colsample_bytree = seq(0.6, 1, .2),
min_child_weight = seq(1, 5, 4),
learning_rate = seq(0.1, 0.2, 0.1),
max_depth = seq(1, 5, 4)
)# reduce to a maximum of 10 rows
if (nrow(parameter_grid) > 10) {
set.seed(123)
<- sample(seq_len(nrow(parameter_grid)), 10, FALSE)
sample_rows <- kdry::mlh_subset(parameter_grid, sample_rows)
parameter_grid
}
# required for bayesian optimization
<- list(
parameter_bounds subsample = c(0.2, 1),
colsample_bytree = c(0.2, 1),
min_child_weight = c(1L, 10L),
learning_rate = c(0.1, 0.2),
max_depth = c(1L, 10L)
)<- list(
optim_args iters.n = ncores,
kappa = 3.5,
acq = "ucb"
)
<- mlexperiments::MLTuneParameters$new(
tuner learner = LearnerSurvXgboostAft$new(
metric_optimization_higher_better = FALSE
),strategy = "grid",
ncores = ncores,
seed = seed
)
$parameter_grid <- parameter_grid
tuner$learner_args <- learner_args
tuner$split_type <- "stratified"
tuner$split_vector <- split_vector_train
tuner
$set_data(
tunerx = train_x,
y = train_y
)
<- tuner$execute(k = 3)
tuner_results_grid #>
#> Parameter settings [=======================================================>-----------------------------------------------------------------------------------] 4/10 ( 40%)
#> Parameter settings [=====================================================================>---------------------------------------------------------------------] 5/10 ( 50%)
#> Parameter settings [==================================================================================>--------------------------------------------------------] 6/10 ( 60%)
#> Parameter settings [================================================================================================>------------------------------------------] 7/10 ( 70%)
#> Parameter settings [==============================================================================================================>----------------------------] 8/10 ( 80%)
#> Parameter settings [============================================================================================================================>--------------] 9/10 ( 90%)
#> Parameter settings [==========================================================================================================================================] 10/10 (100%)
head(tuner_results_grid)
#> setting_id metric_optim_mean nrounds subsample colsample_bytree min_child_weight learning_rate max_depth objective eval_metric
#> 1: 1 4.508734 40.00000 0.6 0.8 5 0.2 1 survival:aft aft-nloglik
#> 2: 2 4.546383 39.33333 1.0 0.8 5 0.1 5 survival:aft aft-nloglik
#> 3: 3 4.505510 69.33333 0.8 0.8 5 0.1 1 survival:aft aft-nloglik
#> 4: 4 4.578441 19.33333 0.6 0.8 5 0.2 5 survival:aft aft-nloglik
#> 5: 5 4.561942 38.33333 1.0 0.8 1 0.1 5 survival:aft aft-nloglik
#> 6: 6 4.542217 37.66667 0.8 0.8 5 0.1 5 survival:aft aft-nloglik
<- mlexperiments::MLTuneParameters$new(
tuner learner = LearnerSurvXgboostAft$new(
metric_optimization_higher_better = FALSE
),strategy = "bayesian",
ncores = ncores,
seed = seed
)
$parameter_grid <- parameter_grid
tuner$parameter_bounds <- parameter_bounds
tuner
$learner_args <- learner_args
tuner$optim_args <- optim_args
tuner
$split_type <- "stratified"
tuner$split_vector <- split_vector_train
tuner
$set_data(
tunerx = train_x,
y = train_y
)
<- tuner$execute(k = 3)
tuner_results_bayesian #>
#> Registering parallel backend using 4 cores.
head(tuner_results_bayesian)
#> Epoch setting_id subsample colsample_bytree min_child_weight learning_rate max_depth gpUtility acqOptimum inBounds Elapsed Score metric_optim_mean nrounds
#> 1: 0 1 0.6 0.8 5 0.2 1 NA FALSE TRUE 3.705 -4.509285 4.509285 41.00000
#> 2: 0 2 1.0 0.8 5 0.1 5 NA FALSE TRUE 3.918 -4.542901 4.542901 41.66667
#> 3: 0 3 0.8 0.8 5 0.1 1 NA FALSE TRUE 3.980 -4.506211 4.506211 82.33333
#> 4: 0 4 0.6 0.8 5 0.2 5 NA FALSE TRUE 3.867 -4.582990 4.582990 22.33333
#> 5: 0 5 1.0 0.8 1 0.1 5 NA FALSE TRUE 2.638 -4.559373 4.559373 42.33333
#> 6: 0 6 0.8 0.8 5 0.1 5 NA FALSE TRUE 3.138 -4.548201 4.548201 44.00000
#> errorMessage objective eval_metric
#> 1: NA survival:aft aft-nloglik
#> 2: NA survival:aft aft-nloglik
#> 3: NA survival:aft aft-nloglik
#> 4: NA survival:aft aft-nloglik
#> 5: NA survival:aft aft-nloglik
#> 6: NA survival:aft aft-nloglik
<- mlexperiments::MLCrossValidation$new(
validator learner = LearnerSurvXgboostAft$new(
metric_optimization_higher_better = FALSE
),fold_list = fold_list,
ncores = ncores,
seed = seed
)
$learner_args <- tuner$results$best.setting[-1]
validator
$predict_args <- predict_args
validator$performance_metric <- performance_metric
validator$performance_metric_args <- performance_metric_args
validator$return_models <- return_models
validator
$set_data(
validatorx = train_x,
y = train_y
)
<- validator$execute()
validator_results #>
#> CV fold: Fold1
#>
#> CV fold: Fold2
#>
#> CV fold: Fold3
head(validator_results)
#> fold performance subsample colsample_bytree min_child_weight learning_rate max_depth nrounds objective eval_metric
#> 1: Fold1 0.3477846 0.2882211 0.9747412 1 0.1124153 1 60 survival:aft aft-nloglik
#> 2: Fold2 0.3601468 0.2882211 0.9747412 1 0.1124153 1 60 survival:aft aft-nloglik
#> 3: Fold3 0.3585996 0.2882211 0.9747412 1 0.1124153 1 60 survival:aft aft-nloglik
<- mlexperiments::MLNestedCV$new(
validator learner = LearnerSurvXgboostAft$new(
metric_optimization_higher_better = FALSE
),strategy = "grid",
fold_list = fold_list,
k_tuning = 3L,
ncores = ncores,
seed = seed
)
$parameter_grid <- parameter_grid
validator$learner_args <- learner_args
validator$split_type <- "stratified"
validator$split_vector <- split_vector_train
validator
$predict_args <- predict_args
validator$performance_metric <- performance_metric
validator$performance_metric_args <- performance_metric_args
validator$return_models <- return_models
validator
$set_data(
validatorx = train_x,
y = train_y
)
<- validator$execute()
validator_results #>
#> CV fold: Fold1
#>
#> Parameter settings [=======================================================>-----------------------------------------------------------------------------------] 4/10 ( 40%)
#> Parameter settings [=====================================================================>---------------------------------------------------------------------] 5/10 ( 50%)
#> Parameter settings [==================================================================================>--------------------------------------------------------] 6/10 ( 60%)
#> Parameter settings [================================================================================================>------------------------------------------] 7/10 ( 70%)
#> Parameter settings [==============================================================================================================>----------------------------] 8/10 ( 80%)
#> Parameter settings [============================================================================================================================>--------------] 9/10 ( 90%)
#> Parameter settings [==========================================================================================================================================] 10/10 (100%)
#> CV fold: Fold2
#> CV progress [=================================================================================================>-------------------------------------------------] 2/3 ( 67%)
#>
#> Parameter settings [=========================================>-------------------------------------------------------------------------------------------------] 3/10 ( 30%)
#> Parameter settings [=======================================================>-----------------------------------------------------------------------------------] 4/10 ( 40%)
#> Parameter settings [=====================================================================>---------------------------------------------------------------------] 5/10 ( 50%)
#> Parameter settings [==================================================================================>--------------------------------------------------------] 6/10 ( 60%)
#> Parameter settings [================================================================================================>------------------------------------------] 7/10 ( 70%)
#> Parameter settings [==============================================================================================================>----------------------------] 8/10 ( 80%)
#> Parameter settings [============================================================================================================================>--------------] 9/10 ( 90%)
#> Parameter settings [==========================================================================================================================================] 10/10 (100%)
#> CV fold: Fold3
#> CV progress [===================================================================================================================================================] 3/3 (100%)
#>
#> Parameter settings [=======================================================>-----------------------------------------------------------------------------------] 4/10 ( 40%)
#> Parameter settings [=====================================================================>---------------------------------------------------------------------] 5/10 ( 50%)
#> Parameter settings [==================================================================================>--------------------------------------------------------] 6/10 ( 60%)
#> Parameter settings [================================================================================================>------------------------------------------] 7/10 ( 70%)
#> Parameter settings [==============================================================================================================>----------------------------] 8/10 ( 80%)
#> Parameter settings [============================================================================================================================>--------------] 9/10 ( 90%)
#> Parameter settings [==========================================================================================================================================] 10/10 (100%)
head(validator_results)
#> fold performance nrounds subsample colsample_bytree min_child_weight learning_rate max_depth objective eval_metric
#> 1: Fold1 0.3609538 32.66667 0.6 0.8 5 0.2 1 survival:aft aft-nloglik
#> 2: Fold2 0.3665939 31.33333 0.6 1.0 1 0.2 1 survival:aft aft-nloglik
#> 3: Fold3 0.3549842 38.33333 0.6 1.0 1 0.2 1 survival:aft aft-nloglik
<- mlexperiments::MLNestedCV$new(
validator learner = LearnerSurvXgboostAft$new(
metric_optimization_higher_better = FALSE
),strategy = "bayesian",
fold_list = fold_list,
k_tuning = 3L,
ncores = ncores,
seed = 312
)
$parameter_grid <- parameter_grid
validator$learner_args <- learner_args
validator$split_type <- "stratified"
validator$split_vector <- split_vector_train
validator
$parameter_bounds <- parameter_bounds
validator$optim_args <- optim_args
validator
$predict_args <- predict_args
validator$performance_metric <- performance_metric
validator$performance_metric_args <- performance_metric_args
validator$return_models <- TRUE
validator
$set_data(
validatorx = train_x,
y = train_y
)
<- validator$execute()
validator_results #>
#> CV fold: Fold1
#>
#> Registering parallel backend using 4 cores.
#>
#> CV fold: Fold2
#> CV progress [=================================================================================================>-------------------------------------------------] 2/3 ( 67%)
#>
#> Registering parallel backend using 4 cores.
#>
#> CV fold: Fold3
#> CV progress [===================================================================================================================================================] 3/3 (100%)
#>
#> Registering parallel backend using 4 cores.
head(validator_results)
#> fold performance subsample colsample_bytree min_child_weight learning_rate max_depth nrounds objective eval_metric
#> 1: Fold1 0.3480615 0.6000000 0.8000000 5 0.2000000 1 44.33333 survival:aft aft-nloglik
#> 2: Fold2 0.3699332 0.6000000 1.0000000 1 0.2000000 1 36.66667 survival:aft aft-nloglik
#> 3: Fold3 0.3522341 0.7604887 0.7889484 1 0.1695828 1 31.00000 survival:aft aft-nloglik
<- mlexperiments::predictions(
preds_xgboost object = validator,
newdata = test_x
)
<- mlexperiments::performance(
perf_xgboost object = validator,
prediction_results = preds_xgboost,
y_ground_truth = test_y
)
perf_xgboost#> model performance
#> 1: Fold1 0.3401763
#> 2: Fold2 0.3213113
#> 3: Fold3 0.3136183