The goal of this vignette is to explain how to ResamplingVariableSizeTrainCV
, which can be used to determine how many train data are necessary to provide accurate predictions on a given test set.
The code below creates data for simulated regression problems. First we define a vector of input values,
N <- 300
abs.x <- 10
set.seed(1)
x.vec <- runif(N, -abs.x, abs.x)
str(x.vec)
#> num [1:300] -4.69 -2.56 1.46 8.16 -5.97 ...
Below we define a list of two true regression functions (tasks in mlr3 terminology) for our simulated data,
reg.pattern.list <- list(
sin=sin,
constant=function(x)0)
The constant function represents a regression problem which can be solved by always predicting the mean value of outputs (featureless is the best possible learning algorithm). The sin function will be used to generate data with a non-linear pattern that will need to be learned. Below we use a for loop over these two functions/tasks, to simulate the data which will be used as input to the learning algorithms:
library(data.table)
reg.task.list <- list()
reg.data.list <- list()
for(task_id in names(reg.pattern.list)){
f <- reg.pattern.list[[task_id]]
task.dt <- data.table(
x=x.vec,
y = f(x.vec)+rnorm(N,sd=0.5))
reg.data.list[[task_id]] <- data.table(task_id, task.dt)
reg.task.list[[task_id]] <- mlr3::TaskRegr$new(
task_id, task.dt, target="y"
)
}
(reg.data <- rbindlist(reg.data.list))
#> task_id x y
#> <char> <num> <num>
#> 1: sin -4.689827 1.2248390
#> 2: sin -2.557522 -0.5607042
#> 3: sin 1.457067 0.8345056
#> 4: sin 8.164156 0.4875994
#> 5: sin -5.966361 -0.4321800
#> ---
#> 596: constant 3.628850 -0.6728968
#> 597: constant -8.016618 0.5168327
#> 598: constant -7.621949 -0.4058882
#> 599: constant -8.991207 0.9008627
#> 600: constant 8.585078 0.8857710
In the table above, the input is x, and the output is y. Below we visualize these data, with one task in each facet/panel:
if(require(animint2)){
ggplot()+
geom_point(aes(
x, y),
data=reg.data)+
facet_grid(task_id ~ ., labeller=label_both)
}
In the plot above we can see two different simulated data sets (constant and sin). Note that the code above used the animint2
package, which provides interactive extensions to the static graphics of the ggplot2
package (see below section Interactive data viz).
In the code below, we define a K-fold cross-validation experiment, with K=3 folds.
reg_size_cv <- mlr3resampling::ResamplingVariableSizeTrainCV$new()
reg_size_cv$param_set$values$train_sizes <- 6
reg_size_cv
#> <ResamplingVariableSizeTrainCV> : Cross-Validation with variable size train sets
#> * Iterations:
#> * Instantiated: FALSE
#> * Parameters:
#> List of 4
#> $ folds : int 3
#> $ min_train_data: int 10
#> $ random_seeds : int 3
#> $ train_sizes : int 6
In the output above we can see the parameters of the resampling object, all of which should be integer scalars:
folds
is the number of cross-validation folds.min_train_data
is the minimum number of train data to consider.random_seeds
is the number of random seeds, each of which determines a different random ordering of the train data. The random ordering determines which data are included in small train set sizes.train_sizes
is the number of train set sizes, evenly spaced on a log scale, from min_train_data
to the max number of train data (determined by folds
).Below we instantiate the resampling on one of the tasks:
reg_size_cv$instantiate(reg.task.list[["sin"]])
reg_size_cv$instance
#> $iteration.dt
#> test.fold seed small_stratum_size train_size_i train_size
#> <int> <int> <int> <int> <int>
#> 1: 1 1 10 1 10
#> 2: 1 1 18 2 18
#> 3: 1 1 33 3 33
#> 4: 1 1 60 4 60
#> 5: 1 1 110 5 110
#> 6: 1 1 200 6 200
#> 7: 1 2 10 1 10
#> 8: 1 2 18 2 18
#> 9: 1 2 33 3 33
#> 10: 1 2 60 4 60
#> 11: 1 2 110 5 110
#> 12: 1 2 200 6 200
#> 13: 1 3 10 1 10
#> 14: 1 3 18 2 18
#> 15: 1 3 33 3 33
#> 16: 1 3 60 4 60
#> 17: 1 3 110 5 110
#> 18: 1 3 200 6 200
#> 19: 2 1 10 1 10
#> 20: 2 1 18 2 18
#> 21: 2 1 33 3 33
#> 22: 2 1 60 4 60
#> 23: 2 1 110 5 110
#> 24: 2 1 200 6 200
#> 25: 2 2 10 1 10
#> 26: 2 2 18 2 18
#> 27: 2 2 33 3 33
#> 28: 2 2 60 4 60
#> 29: 2 2 110 5 110
#> 30: 2 2 200 6 200
#> 31: 2 3 10 1 10
#> 32: 2 3 18 2 18
#> 33: 2 3 33 3 33
#> 34: 2 3 60 4 60
#> 35: 2 3 110 5 110
#> 36: 2 3 200 6 200
#> 37: 3 1 10 1 10
#> 38: 3 1 18 2 18
#> 39: 3 1 33 3 33
#> 40: 3 1 60 4 60
#> 41: 3 1 110 5 110
#> 42: 3 1 200 6 200
#> 43: 3 2 10 1 10
#> 44: 3 2 18 2 18
#> 45: 3 2 33 3 33
#> 46: 3 2 60 4 60
#> 47: 3 2 110 5 110
#> 48: 3 2 200 6 200
#> 49: 3 3 10 1 10
#> 50: 3 3 18 2 18
#> 51: 3 3 33 3 33
#> 52: 3 3 60 4 60
#> 53: 3 3 110 5 110
#> 54: 3 3 200 6 200
#> test.fold seed small_stratum_size train_size_i train_size
#> train test iteration train_min_size
#> <list> <list> <int> <int>
#> 1: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 1 10
#> 2: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 2 18
#> 3: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 3 33
#> 4: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 4 60
#> 5: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 5 110
#> 6: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 6 200
#> 7: 260,291, 16,164,109, 45,... 1, 7,11,13,15,19,... 7 10
#> 8: 260,291, 16,164,109, 45,... 1, 7,11,13,15,19,... 8 18
#> 9: 260,291, 16,164,109, 45,... 1, 7,11,13,15,19,... 9 33
#> 10: 260,291, 16,164,109, 45,... 1, 7,11,13,15,19,... 10 60
#> 11: 260,291, 16,164,109, 45,... 1, 7,11,13,15,19,... 11 110
#> 12: 260,291, 16,164,109, 45,... 1, 7,11,13,15,19,... 12 200
#> 13: 14,253,115,102,293, 18,... 1, 7,11,13,15,19,... 13 10
#> 14: 14,253,115,102,293, 18,... 1, 7,11,13,15,19,... 14 18
#> 15: 14,253,115,102,293, 18,... 1, 7,11,13,15,19,... 15 33
#> 16: 14,253,115,102,293, 18,... 1, 7,11,13,15,19,... 16 60
#> 17: 14,253,115,102,293, 18,... 1, 7,11,13,15,19,... 17 110
#> 18: 14,253,115,102,293, 18,... 1, 7,11,13,15,19,... 18 200
#> 19: 203,197, 81,171,130, 43,... 4, 6, 9,12,14,16,... 19 10
#> 20: 203,197, 81,171,130, 43,... 4, 6, 9,12,14,16,... 20 18
#> 21: 203,197, 81,171,130, 43,... 4, 6, 9,12,14,16,... 21 33
#> 22: 203,197, 81,171,130, 43,... 4, 6, 9,12,14,16,... 22 60
#> 23: 203,197, 81,171,130, 43,... 4, 6, 9,12,14,16,... 23 110
#> 24: 203,197, 81,171,130, 43,... 4, 6, 9,12,14,16,... 24 200
#> 25: 251,291, 19,164,109, 55,... 4, 6, 9,12,14,16,... 25 10
#> 26: 251,291, 19,164,109, 55,... 4, 6, 9,12,14,16,... 26 18
#> 27: 251,291, 19,164,109, 55,... 4, 6, 9,12,14,16,... 27 33
#> 28: 251,291, 19,164,109, 55,... 4, 6, 9,12,14,16,... 28 60
#> 29: 251,291, 19,164,109, 55,... 4, 6, 9,12,14,16,... 29 110
#> 30: 251,291, 19,164,109, 55,... 4, 6, 9,12,14,16,... 30 200
#> 31: 15,253,115,110,293, 18,... 4, 6, 9,12,14,16,... 31 10
#> 32: 15,253,115,110,293, 18,... 4, 6, 9,12,14,16,... 32 18
#> 33: 15,253,115,110,293, 18,... 4, 6, 9,12,14,16,... 33 33
#> 34: 15,253,115,110,293, 18,... 4, 6, 9,12,14,16,... 34 60
#> 35: 15,253,115,110,293, 18,... 4, 6, 9,12,14,16,... 35 110
#> 36: 15,253,115,110,293, 18,... 4, 6, 9,12,14,16,... 36 200
#> 37: 203,211, 82,194,130, 43,... 2, 3, 5, 8,10,17,... 37 10
#> 38: 203,211, 82,194,130, 43,... 2, 3, 5, 8,10,17,... 38 18
#> 39: 203,211, 82,194,130, 43,... 2, 3, 5, 8,10,17,... 39 33
#> 40: 203,211, 82,194,130, 43,... 2, 3, 5, 8,10,17,... 40 60
#> 41: 203,211, 82,194,130, 43,... 2, 3, 5, 8,10,17,... 41 110
#> 42: 203,211, 82,194,130, 43,... 2, 3, 5, 8,10,17,... 42 200
#> 43: 251,295, 19,189,102, 55,... 2, 3, 5, 8,10,17,... 43 10
#> 44: 251,295, 19,189,102, 55,... 2, 3, 5, 8,10,17,... 44 18
#> 45: 251,295, 19,189,102, 55,... 2, 3, 5, 8,10,17,... 45 33
#> 46: 251,295, 19,189,102, 55,... 2, 3, 5, 8,10,17,... 46 60
#> 47: 251,295, 19,189,102, 55,... 2, 3, 5, 8,10,17,... 47 110
#> 48: 251,295, 19,189,102, 55,... 2, 3, 5, 8,10,17,... 48 200
#> 49: 15,263,135,110,296, 25,... 2, 3, 5, 8,10,17,... 49 10
#> 50: 15,263,135,110,296, 25,... 2, 3, 5, 8,10,17,... 50 18
#> 51: 15,263,135,110,296, 25,... 2, 3, 5, 8,10,17,... 51 33
#> 52: 15,263,135,110,296, 25,... 2, 3, 5, 8,10,17,... 52 60
#> 53: 15,263,135,110,296, 25,... 2, 3, 5, 8,10,17,... 53 110
#> 54: 15,263,135,110,296, 25,... 2, 3, 5, 8,10,17,... 54 200
#> train test iteration train_min_size
#>
#> $id.dt
#> row_id fold
#> <int> <int>
#> 1: 1 1
#> 2: 2 3
#> 3: 3 3
#> 4: 4 2
#> 5: 5 3
#> ---
#> 296: 296 2
#> 297: 297 1
#> 298: 298 1
#> 299: 299 3
#> 300: 300 2
Above we see the instance, which need not be examined by the user, but for informational purposes, it contains the following data:
iteration.dt
has one row for each train/test split,id.dt
has one row for each data point.In the code below, we define two learners to compare,
(reg.learner.list <- list(
if(requireNamespace("rpart"))mlr3::LearnerRegrRpart$new(),
mlr3::LearnerRegrFeatureless$new()))
#> [[1]]
#> <LearnerRegrRpart:regr.rpart>: Regression Tree
#> * Model: -
#> * Parameters: xval=0
#> * Packages: mlr3, rpart
#> * Predict Types: [response]
#> * Feature Types: logical, integer, numeric, factor, ordered
#> * Properties: importance, missings, selected_features, weights
#>
#> [[2]]
#> <LearnerRegrFeatureless:regr.featureless>: Featureless Regression Learner
#> * Model: -
#> * Parameters: robust=FALSE
#> * Packages: mlr3, stats
#> * Predict Types: [response], se
#> * Feature Types: logical, integer, numeric, character, factor, ordered,
#> POSIXct
#> * Properties: featureless, importance, missings, selected_features
The code above defines
regr.rpart
: Regression Tree learning algorithm, which should be able to learn the non-linear pattern in the sin data (if there are enough data in the train set).regr.featureless
: Featureless Regression learning algorithm, which should be optimal for the constant data, and can be used as a baseline in the sin data. When the rpart learner gets smaller prediction error rates than featureless, then we know that it has learned some non-trivial relationship between inputs and outputs.In the code below, we define the benchmark grid, which is all combinations of tasks (constant and sin), learners (rpart and featureless), and the one resampling method.
(reg.bench.grid <- mlr3::benchmark_grid(
reg.task.list,
reg.learner.list,
reg_size_cv))
#> task learner resampling
#> <char> <char> <char>
#> 1: sin regr.rpart variable_size_train_cv
#> 2: sin regr.featureless variable_size_train_cv
#> 3: constant regr.rpart variable_size_train_cv
#> 4: constant regr.featureless variable_size_train_cv
In the code below, we execute the benchmark experiment (optionally in parallel using the multisession future plan).
if(FALSE){
if(require(future))plan("multisession")
}
if(require(lgr))get_logger("mlr3")$set_threshold("warn")
(reg.bench.result <- mlr3::benchmark(
reg.bench.grid, store_models = TRUE))
#> <BenchmarkResult> of 216 rows with 4 resampling runs
#> nr task_id learner_id resampling_id iters warnings errors
#> 1 sin regr.rpart variable_size_train_cv 54 0 0
#> 2 sin regr.featureless variable_size_train_cv 54 0 0
#> 3 constant regr.rpart variable_size_train_cv 54 0 0
#> 4 constant regr.featureless variable_size_train_cv 54 0 0
The code below computes the test error for each split, and visualizes the information stored in the first row of the result:
reg.bench.score <- mlr3resampling::score(reg.bench.result)
reg.bench.score[1]
#> test.fold seed small_stratum_size train_size_i train_size
#> <int> <int> <int> <int> <int>
#> 1: 1 1 10 1 10
#> train test iteration train_min_size
#> <list> <list> <int> <int>
#> 1: 216,197, 81,171,143, 36,... 1, 7,11,13,15,19,... 1 10
#> uhash nr task task_id
#> <char> <int> <list> <char>
#> 1: 132b693f-6201-4977-8de0-9f4e7ea70736 1 <TaskRegr:sin> sin
#> learner learner_id resampling
#> <list> <char> <list>
#> 1: <LearnerRegrRpart:regr.rpart> regr.rpart <ResamplingVariableSizeTrainCV>
#> resampling_id prediction regr.mse algorithm
#> <char> <list> <num> <char>
#> 1: variable_size_train_cv <PredictionRegr> 0.8008255 rpart
The output above contains all of the results related to a particular train/test split. In particular for our purposes, the interesting columns are:
test.fold
is the cross-validation fold ID.seed
is the random seed used to determine the train set order.train_size
is the number of data in the train set.train
and test
are vectors of row numbers assigned to each set.iteration
is an ID for the train/test split, for a particular learning algorithm and task. It is the row number of iteration.dt
(see instance above), which has one row for each unique combination of test.fold
, seed
, and train_size
.learner
is the mlr3 learner object, which can be used to compute predictions on new data (including a grid of inputs, to show predictions in the visualization below).regr.mse
is the mean squared error on the test set.algorithm
is the name of the learning algorithm (same as learner_id
but without regr.
prefix).The code below visualizes the resulting test accuracy numbers.
train_size_vec <- unique(reg.bench.score$train_size)
if(require(animint2)){
ggplot()+
scale_x_log10(
breaks=train_size_vec)+
scale_y_log10()+
geom_line(aes(
train_size, regr.mse,
group=paste(algorithm, seed),
color=algorithm),
shape=1,
data=reg.bench.score)+
geom_point(aes(
train_size, regr.mse, color=algorithm),
shape=1,
data=reg.bench.score)+
facet_grid(
test.fold~task_id,
labeller=label_both,
scales="free")
}
Above we plot the test error for each fold and train set size. There is a different panel for each task and test fold. Each line represents a random seed (ordering of data in train set), and each dot represents a specific train set size. So the plot above shows that some variation in test error, for a given test fold, is due to the random ordering of the train data.
Below we summarize each train set size, by taking the mean and standard deviation over each random seed.
reg.mean.dt <- dcast(
reg.bench.score,
task_id + train_size + test.fold + algorithm ~ .,
list(mean, sd),
value.var="regr.mse")
if(require(animint2)){
ggplot()+
scale_x_log10(
breaks=train_size_vec)+
scale_y_log10()+
geom_ribbon(aes(
train_size,
ymin=regr.mse_mean-regr.mse_sd,
ymax=regr.mse_mean+regr.mse_sd,
fill=algorithm),
alpha=0.5,
data=reg.mean.dt)+
geom_line(aes(
train_size, regr.mse_mean, color=algorithm),
shape=1,
data=reg.mean.dt)+
facet_grid(
test.fold~task_id,
labeller=label_both,
scales="free")
}
The plot above shows a line for the mean, and a ribbon for the standard deviation, over the three random seeds. It is clear from the plot above that
The code below can be used to create an interactive data visualization which allows exploring how different functions are learned during different splits.
grid.dt <- data.table(x=seq(-abs.x, abs.x, l=101), y=0)
grid.task <- mlr3::TaskRegr$new("grid", grid.dt, target="y")
pred.dt.list <- list()
point.dt.list <- list()
for(score.i in 1:nrow(reg.bench.score)){
reg.bench.row <- reg.bench.score[score.i]
task.dt <- data.table(
reg.bench.row$task[[1]]$data(),
reg.bench.row$resampling[[1]]$instance$id.dt)
set.ids <- data.table(
set.name=c("test","train")
)[
, data.table(row_id=reg.bench.row[[set.name]][[1]])
, by=set.name]
i.points <- set.ids[
task.dt, on="row_id"
][
is.na(set.name), set.name := "unused"
]
point.dt.list[[score.i]] <- data.table(
reg.bench.row[, .(task_id, iteration)],
i.points)
i.learner <- reg.bench.row$learner[[1]]
pred.dt.list[[score.i]] <- data.table(
reg.bench.row[, .(
task_id, iteration, algorithm
)],
as.data.table(
i.learner$predict(grid.task)
)[, .(x=grid.dt$x, y=response)]
)
}
(pred.dt <- rbindlist(pred.dt.list))
#> task_id iteration algorithm x y
#> <char> <int> <char> <num> <num>
#> 1: sin 1 rpart -10.0 0.25011658
#> 2: sin 1 rpart -9.8 0.25011658
#> 3: sin 1 rpart -9.6 0.25011658
#> 4: sin 1 rpart -9.4 0.25011658
#> 5: sin 1 rpart -9.2 0.25011658
#> ---
#> 21812: constant 54 featureless 9.2 -0.03385654
#> 21813: constant 54 featureless 9.4 -0.03385654
#> 21814: constant 54 featureless 9.6 -0.03385654
#> 21815: constant 54 featureless 9.8 -0.03385654
#> 21816: constant 54 featureless 10.0 -0.03385654
(point.dt <- rbindlist(point.dt.list))
#> task_id iteration set.name row_id y x fold
#> <char> <int> <char> <int> <num> <num> <int>
#> 1: sin 1 test 1 1.2248390 -4.689827 1
#> 2: sin 1 unused 2 -0.5607042 -2.557522 3
#> 3: sin 1 unused 3 0.8345056 1.457067 3
#> 4: sin 1 unused 4 0.4875994 8.164156 2
#> 5: sin 1 unused 5 -0.4321800 -5.966361 3
#> ---
#> 64796: constant 54 train 296 -0.6728968 3.628850 2
#> 64797: constant 54 train 297 0.5168327 -8.016618 1
#> 64798: constant 54 train 298 -0.4058882 -7.621949 1
#> 64799: constant 54 test 299 0.9008627 -8.991207 3
#> 64800: constant 54 train 300 0.8857710 8.585078 2
set.colors <- c(
train="#1B9E77",
test="#D95F02",
unused="white")
algo.colors <- c(
featureless="blue",
rpart="red")
if(require(animint2)){
viz <- animint(
title="Variable size train set, regression",
pred=ggplot()+
ggtitle("Predictions for selected train/test split")+
theme_animint(height=400)+
scale_fill_manual(values=set.colors)+
geom_point(aes(
x, y, fill=set.name),
showSelected="iteration",
size=3,
shape=21,
data=point.dt)+
scale_size_manual(values=c(
featureless=3,
rpart=2))+
scale_color_manual(values=algo.colors)+
geom_line(aes(
x, y,
color=algorithm,
size=algorithm,
group=paste(algorithm, iteration)),
showSelected="iteration",
data=pred.dt)+
facet_grid(
task_id ~ .,
labeller=label_both),
err=ggplot()+
ggtitle("Test error for each split")+
theme_animint(width=500)+
theme(
panel.margin=grid::unit(1, "lines"),
legend.position="none")+
scale_y_log10(
"Mean squared error on test set")+
scale_color_manual(values=algo.colors)+
scale_x_log10(
"Train set size",
breaks=train_size_vec)+
geom_line(aes(
train_size, regr.mse,
group=paste(algorithm, seed),
color=algorithm),
clickSelects="seed",
alpha_off=0.2,
showSelected="algorithm",
size=4,
data=reg.bench.score)+
facet_grid(
test.fold~task_id,
labeller=label_both,
scales="free")+
geom_point(aes(
train_size, regr.mse,
color=algorithm),
size=5,
stroke=3,
fill="black",
fill_off=NA,
showSelected=c("algorithm","seed"),
clickSelects="iteration",
data=reg.bench.score),
source="https://github.com/tdhock/mlr3resampling/blob/main/vignettes/Simulations.Rmd")
viz
}
if(FALSE){
animint2pages(viz, "2023-12-26-train-sizes-regression")
}
If you are viewing this in an installed package or on CRAN, then there will be no data viz on this page, but you can view it on: https://tdhock.github.io/2023-12-26-train-sizes-regression/
The interactive data viz consists of two plots:
Whereas in the section above, we focused on regression (output is a real number), in this section we simulate a binary classification problem (output if a factor with two levels).
class.N <- 300
class.abs.x <- 1
rclass <- function(){
runif(class.N, -class.abs.x, class.abs.x)
}
library(data.table)
set.seed(1)
class.x.dt <- data.table(x1=rclass(), x2=rclass())
class.fun.list <- list(
constant=function(...)0.5,
xor=function(x1, x2)xor(x1>0, x2>0))
class.data.list <- list()
class.task.list <- list()
for(task_id in names(class.fun.list)){
class.fun <- class.fun.list[[task_id]]
y <- factor(ifelse(
class.x.dt[, class.fun(x1, x2)+rnorm(class.N, sd=0.5)]>0.5,
"spam", "not"))
task.dt <- data.table(class.x.dt, y)
this.task <- mlr3::TaskClassif$new(
task_id, task.dt, target="y")
this.task$col_roles$stratum <- "y"
class.task.list[[task_id]] <- this.task
class.data.list[[task_id]] <- data.table(task_id, task.dt)
}
(class.data <- rbindlist(class.data.list))
#> task_id x1 x2 y
#> <char> <num> <num> <fctr>
#> 1: constant -0.4689827 0.347424466 spam
#> 2: constant -0.2557522 -0.810284289 not
#> 3: constant 0.1457067 -0.014807758 spam
#> 4: constant 0.8164156 -0.076896319 not
#> 5: constant -0.5966361 -0.249566938 spam
#> ---
#> 596: xor 0.3628850 0.297101895 not
#> 597: xor -0.8016618 -0.040328411 not
#> 598: xor -0.7621949 -0.009871789 spam
#> 599: xor -0.8991207 -0.240254817 not
#> 600: xor 0.8585078 -0.099029126 spam
The simulated data table above consists of two input features (x1
and x2
) along with an output/label to predict (y
). Below we count the number of times each label appears in each task:
class.data[, .(count=.N), by=.(task_id, y)]
#> task_id y count
#> <char> <fctr> <int>
#> 1: constant spam 143
#> 2: constant not 157
#> 3: xor spam 145
#> 4: xor not 155
The table above shows that the spam
label is the minority class (not
is majority, so that will be the prediction of the featureless baseline). Below we visualize the data in the feature space:
if(require(animint2)){
ggplot()+
geom_point(aes(
x1, x2, color=y),
shape=1,
data=class.data)+
facet_grid(. ~ task_id, labeller=label_both)+
coord_equal()
}
The plot above shows how the output y
is related to the two inputs x1
and x2
, for the two tasks.
x1
or x2
being negative (but not both).In the mlr3 code below, we define a list of learners, our resampling method, and a benchmark grid:
class.learner.list <- list(
if(requireNamespace("rpart"))mlr3::LearnerClassifRpart$new(),
mlr3::LearnerClassifFeatureless$new())
size_cv <- mlr3resampling::ResamplingVariableSizeTrainCV$new()
(class.bench.grid <- mlr3::benchmark_grid(
class.task.list,
class.learner.list,
size_cv))
#> task learner resampling
#> <char> <char> <char>
#> 1: constant classif.rpart variable_size_train_cv
#> 2: constant classif.featureless variable_size_train_cv
#> 3: xor classif.rpart variable_size_train_cv
#> 4: xor classif.featureless variable_size_train_cv
Below we run the learning algorithm for each of the train/test splits defined by our benchmark grid:
if(FALSE){
if(require(future))plan("multisession")
}
if(require(lgr))get_logger("mlr3")$set_threshold("warn")
(class.bench.result <- mlr3::benchmark(
class.bench.grid, store_models = TRUE))
#> <BenchmarkResult> of 180 rows with 4 resampling runs
#> nr task_id learner_id resampling_id iters warnings errors
#> 1 constant classif.rpart variable_size_train_cv 45 0 0
#> 2 constant classif.featureless variable_size_train_cv 45 0 0
#> 3 xor classif.rpart variable_size_train_cv 45 0 0
#> 4 xor classif.featureless variable_size_train_cv 45 0 0
Below we compute scores (test error) for each resampling iteration, and show the first row of the result.
class.bench.score <- mlr3resampling::score(class.bench.result)
class.bench.score[1]
#> test.fold seed small_stratum_size train_size_i train_size
#> <int> <int> <int> <int> <int>
#> 1: 1 1 10 1 21
#> train test iteration train_min_size
#> <list> <list> <int> <int>
#> 1: 132,239, 10,216,245,276,... 5, 6, 8,21,23,28,... 1 21
#> uhash nr task task_id
#> <char> <int> <list> <char>
#> 1: 936db87d-1a46-427e-abb6-d67b1e877686 1 <TaskClassif:constant> constant
#> learner learner_id
#> <list> <char>
#> 1: <LearnerClassifRpart:classif.rpart> classif.rpart
#> resampling resampling_id prediction
#> <list> <char> <list>
#> 1: <ResamplingVariableSizeTrainCV> variable_size_train_cv <PredictionClassif>
#> classif.ce algorithm
#> <num> <char>
#> 1: 0.4257426 rpart
The output above has columns which are very similar to the regression example in the previous section. The main difference is the classif.ce
column, which is the classification error on the test set.
Finally we plot the test error values below.
if(require(animint2)){
ggplot()+
geom_line(aes(
train_size, classif.ce,
group=paste(algorithm, seed),
color=algorithm),
shape=1,
data=class.bench.score)+
geom_point(aes(
train_size, classif.ce, color=algorithm),
shape=1,
data=class.bench.score)+
facet_grid(
task_id ~ test.fold,
labeller=label_both,
scales="free")+
scale_x_log10()
}
It is clear from the plot above that
Exercise for the reader: compute and plot mean and SD for these classification tasks, similar to the plot for the regression tasks in the previous section.
The code below can be used to create an interactive data visualization which allows exploring how different functions are learned during different splits.
class.grid.vec <- seq(-class.abs.x, class.abs.x, l=21)
class.grid.dt <- CJ(x1=class.grid.vec, x2=class.grid.vec)
class.pred.dt.list <- list()
class.point.dt.list <- list()
for(score.i in 1:nrow(class.bench.score)){
class.bench.row <- class.bench.score[score.i]
task.dt <- data.table(
class.bench.row$task[[1]]$data(),
class.bench.row$resampling[[1]]$instance$id.dt)
set.ids <- data.table(
set.name=c("test","train")
)[
, data.table(row_id=class.bench.row[[set.name]][[1]])
, by=set.name]
i.points <- set.ids[
task.dt, on="row_id"
][
is.na(set.name), set.name := "unused"
][]
class.point.dt.list[[score.i]] <- data.table(
class.bench.row[, .(task_id, iteration)],
i.points)
if(class.bench.row$algorithm!="featureless"){
i.learner <- class.bench.row$learner[[1]]
i.learner$predict_type <- "prob"
i.task <- class.bench.row$task[[1]]
grid.class.task <- mlr3::TaskClassif$new(
"grid", class.grid.dt[, label:=factor(NA,levels(task.dt$y))], target="label")
pred.grid <- as.data.table(
i.learner$predict(grid.class.task)
)[, data.table(class.grid.dt, prob.spam)]
pred.wide <- dcast(pred.grid, x1 ~ x2, value.var="prob.spam")
prob.mat <- as.matrix(pred.wide[,-1])
if(length(table(prob.mat))>1){
contour.list <- contourLines(
class.grid.vec, class.grid.vec, prob.mat, levels=0.5)
class.pred.dt.list[[score.i]] <- data.table(
class.bench.row[, .(
task_id, iteration, algorithm
)],
data.table(contour.i=seq_along(contour.list))[, {
do.call(data.table, contour.list[[contour.i]])[, .(level, x1=x, x2=y)]
}, by=contour.i]
)
}
}
}
(class.pred.dt <- rbindlist(class.pred.dt.list))
#> task_id iteration algorithm contour.i level x1 x2
#> <char> <int> <char> <int> <num> <num> <num>
#> 1: constant 1 rpart 1 0.5 0.0375 -1.00000000
#> 2: constant 1 rpart 1 0.5 0.0375 -0.90000000
#> 3: constant 1 rpart 1 0.5 0.0375 -0.80000000
#> 4: constant 1 rpart 1 0.5 0.0375 -0.70000000
#> 5: constant 1 rpart 1 0.5 0.0375 -0.60000000
#> ---
#> 5190: xor 45 rpart 2 0.5 0.6000 0.04888889
#> 5191: xor 45 rpart 2 0.5 0.7000 0.04888889
#> 5192: xor 45 rpart 2 0.5 0.8000 0.04888889
#> 5193: xor 45 rpart 2 0.5 0.9000 0.04888889
#> 5194: xor 45 rpart 2 0.5 1.0000 0.04888889
(class.point.dt <- rbindlist(class.point.dt.list))
#> task_id iteration set.name row_id y x1 x2 fold
#> <char> <int> <char> <int> <fctr> <num> <num> <int>
#> 1: constant 1 unused 1 spam -0.4689827 0.347424466 3
#> 2: constant 1 unused 2 not -0.2557522 -0.810284289 2
#> 3: constant 1 unused 3 spam 0.1457067 -0.014807758 3
#> 4: constant 1 train 4 not 0.8164156 -0.076896319 3
#> 5: constant 1 test 5 spam -0.5966361 -0.249566938 1
#> ---
#> 53996: xor 45 train 296 not 0.3628850 0.297101895 2
#> 53997: xor 45 train 297 not -0.8016618 -0.040328411 2
#> 53998: xor 45 test 298 spam -0.7621949 -0.009871789 3
#> 53999: xor 45 test 299 not -0.8991207 -0.240254817 3
#> 54000: xor 45 train 300 spam 0.8585078 -0.099029126 2
set.colors <- c(
train="#1B9E77",
test="#D95F02",
unused="white")
algo.colors <- c(
featureless="blue",
rpart="red")
if(require(animint2)){
viz <- animint(
title="Variable size train sets, classification",
pred=ggplot()+
ggtitle("Predictions for selected train/test split")+
theme(panel.margin=grid::unit(1, "lines"))+
theme_animint(width=600)+
coord_equal()+
scale_fill_manual(values=set.colors)+
scale_color_manual(values=c(spam="black","not spam"="white"))+
geom_point(aes(
x1, x2, color=y, fill=set.name),
showSelected="iteration",
size=3,
stroke=2,
shape=21,
data=class.point.dt)+
geom_path(aes(
x1, x2,
group=paste(algorithm, iteration, contour.i)),
showSelected=c("iteration","algorithm"),
color=algo.colors[["rpart"]],
data=class.pred.dt)+
facet_grid(
. ~ task_id,
labeller=label_both,
space="free",
scales="free"),
err=ggplot()+
ggtitle("Test error for each split")+
theme_animint(height=400)+
theme(panel.margin=grid::unit(1, "lines"))+
scale_y_continuous(
"Classification error on test set")+
scale_color_manual(values=algo.colors)+
scale_x_log10(
"Train set size")+
geom_line(aes(
train_size, classif.ce,
group=paste(algorithm, seed),
color=algorithm),
clickSelects="seed",
alpha_off=0.2,
showSelected="algorithm",
size=4,
data=class.bench.score)+
facet_grid(
test.fold~task_id,
labeller=label_both,
scales="free")+
geom_point(aes(
train_size, classif.ce,
color=algorithm),
size=5,
stroke=3,
fill="black",
fill_off=NA,
showSelected=c("algorithm","seed"),
clickSelects="iteration",
data=class.bench.score),
source="https://github.com/tdhock/mlr3resampling/blob/main/vignettes/ResamplingVariableSizeTrainCV.Rmd")
viz
}
if(FALSE){
animint2pages(viz, "2023-12-27-train-sizes-classification")
}
If you are viewing this in an installed package or on CRAN, then there will be no data viz on this page, but you can view it on: https://tdhock.github.io/2023-12-27-train-sizes-classification/
The interactive data viz consists of two plots
In this vignette we have shown how to use mlr3resampling for comparing test error of models trained on different sized train sets.
sessionInfo()
#> R Under development (unstable) (2024-01-23 r85822 ucrt)
#> Platform: x86_64-w64-mingw32/x64
#> Running under: Windows 10 x64 (build 19045)
#>
#> Matrix products: default
#>
#>
#> locale:
#> [1] LC_COLLATE=C
#> [2] LC_CTYPE=English_United States.utf8
#> [3] LC_MONETARY=English_United States.utf8
#> [4] LC_NUMERIC=C
#> [5] LC_TIME=English_United States.utf8
#>
#> time zone: America/Phoenix
#> tzcode source: internal
#>
#> attached base packages:
#> [1] stats graphics grDevices utils datasets methods base
#>
#> other attached packages:
#> [1] mlr3_0.18.0 lgr_0.4.4 animint2_2024.1.24 data.table_1.15.99
#>
#> loaded via a namespace (and not attached):
#> [1] future.apply_1.11.2 gtable_0.3.4 jsonlite_1.8.8
#> [4] highr_0.10 compiler_4.4.0 crayon_1.5.2
#> [7] rpart_4.1.23 Rcpp_1.0.12 stringr_1.5.1
#> [10] parallel_4.4.0 jquerylib_0.1.4 globals_0.16.3
#> [13] scales_1.3.0 uuid_1.2-0 RhpcBLASctl_0.23-42
#> [16] yaml_2.3.8 fastmap_1.1.1 R6_2.5.1
#> [19] plyr_1.8.9 mlr3tuning_0.19.2 labeling_0.4.3
#> [22] knitr_1.46 palmerpenguins_0.1.1 backports_1.4.1
#> [25] checkmate_2.3.1 future_1.33.2 munsell_0.5.1
#> [28] paradox_0.11.1 bslib_0.7.0 mlr3measures_0.5.0
#> [31] rlang_1.1.3 stringi_1.8.3 cachem_1.0.8
#> [34] xfun_0.43 mlr3misc_0.15.0 sass_0.4.9
#> [37] RJSONIO_1.3-1.9 cli_3.6.2 magrittr_2.0.3
#> [40] digest_0.6.34 grid_4.4.0 bbotk_0.7.3
#> [43] nc_2024.2.21 lifecycle_1.0.4 evaluate_0.23
#> [46] glue_1.7.0 farver_2.1.1 listenv_0.9.1
#> [49] codetools_0.2-19 parallelly_1.37.1 colorspace_2.1-0
#> [52] reshape2_1.4.4 rmarkdown_2.26 mlr3resampling_2024.4.14
#> [55] tools_4.4.0 htmltools_0.5.8.1