
Class for Logging Evaluated Hyperparameter Configurations
Source:R/ArchiveTuning.R
ArchiveTuning.RdThe ArchiveTuning stores all evaluated hyperparameter configurations and performance scores.
Details
The ArchiveTuning is a container around a data.table::data.table().
Each row corresponds to a single evaluation of a hyperparameter configuration.
See the section on Data Structure for more information.
The archive stores additionally a mlr3::BenchmarkResult ($benchmark_result) that records the resampling experiments.
Each experiment corresponds to to a single evaluation of a hyperparameter configuration.
The table ($data) and the benchmark result ($benchmark_result) are linked by the uhash column.
If the archive is passed to as.data.table(), both are joined automatically.
Data Structure
The table ($data) has the following columns:
One column for each hyperparameter of the search space (
$search_space).One column for each performance measure (
$codomain).x_domain(list())
Lists of (transformed) hyperparameter values that are passed to the learner.runtime_learners(numeric(1))
Sum of training and predict times logged in learners per mlr3::ResampleResult / evaluation. This does not include potential overhead time.timestamp(POSIXct)
Time stamp when the evaluation was logged into the archive.batch_nr(integer(1))
Hyperparameters are evaluated in batches. Each batch has a unique batch number.uhash(character(1))
Connects each hyperparameter configuration to the resampling experiment stored in the mlr3::BenchmarkResult.
Analysis
For analyzing the tuning results, it is recommended to pass the ArchiveTuning to as.data.table().
The returned data table is joined with the benchmark result which adds the mlr3::ResampleResult for each hyperparameter evaluation.
The archive provides various getters (e.g. $learners()) to ease the access.
All getters extract by position (i) or unique hash (uhash).
For a complete list of all getters see the methods section.
The benchmark result ($benchmark_result) allows to score the hyperparameter configurations again on a different measure.
Alternatively, measures can be supplied to as.data.table().
The mlr3viz package provides visualizations for tuning results.
S3 Methods
as.data.table.ArchiveTuning(x, unnest = "x_domain", exclude_columns = "uhash", measures = NULL)
Returns a tabular view of all evaluated hyperparameter configurations.
ArchiveTuning ->data.table::data.table()x(ArchiveTuning)unnest(character())
Transforms list columns to separate columns. Set toNULLif no column should be unnested.exclude_columns(character())
Exclude columns from table. Set toNULLif no column should be excluded.measures(List of mlr3::Measure)
Score hyperparameter configurations on additional measures.
Super class
bbotk::Archive -> ArchiveTuning
Public fields
benchmark_result(mlr3::BenchmarkResult)
Benchmark result.
Methods
Method new()
Creates a new instance of this R6 class.
Usage
ArchiveTuning$new(search_space, codomain, check_values = TRUE)Arguments
search_space(paradox::ParamSet)
Hyperparameter search space. IfNULL(default), the search space is constructed from the TuneToken of the learner's parameter set (learner$param_set).codomain(bbotk::Codomain)
Specifies codomain of objective function i.e. a set of performance measures. Internally created from provided mlr3::Measures.check_values(
logical(1))
IfTRUE(default), hyperparameter configurations are check for validity.
Method learner()
Retrieve mlr3::Learner of the i-th evaluation, by position or by unique hash uhash.
i and uhash are mutually exclusive.
Learner does not contain a model. Use $learners() to get learners with models.
Method learners()
Retrieve list of trained mlr3::Learner objects of the i-th evaluation, by position or by unique hash uhash.
i and uhash are mutually exclusive.
Method learner_param_vals()
Retrieve param values of the i-th evaluation, by position or by unique hash uhash.
i and uhash are mutually exclusive.
Method predictions()
Retrieve list of mlr3::Prediction objects of the i-th evaluation, by position or by unique hash uhash.
i and uhash are mutually exclusive.
Method resample_result()
Retrieve mlr3::ResampleResult of the i-th evaluation, by position or by unique hash uhash.
i and uhash are mutually exclusive.