Learn R Programming

mlrCPO: Composable Preprocessing Operators for mlr

GSoC 2017 Project: Operator Based Machine Learning Pipeline Construction

What is CPO?

> task = iris.task
> task %<>>% cpoScale(scale = FALSE) %>>% cpoPca() %>>%  # pca
>   cpoFilterChiSquared(abs = 3) %>>%  # filter
>   cpoModelMatrix(~ 0 + .^2)  # interactions
> head(getTaskData(task))
        PC1        PC2         PC3    PC1:PC2     PC1:PC3      PC2:PC3 Species
1 -2.684126 -0.3193972  0.02791483  0.8573023 -0.07492690 -0.008915919  setosa
2 -2.714142  0.1770012  0.21046427 -0.4804064 -0.57122986  0.037252434  setosa
3 -2.888991  0.1449494 -0.01790026 -0.4187575  0.05171367 -0.002594632  setosa
4 -2.745343  0.3182990 -0.03155937 -0.8738398  0.08664130 -0.010045316  setosa
5 -2.728717 -0.3267545 -0.09007924  0.8916204  0.24580071  0.029433798  setosa
6 -2.280860 -0.7413304 -0.16867766  1.6908707  0.38473006  0.125045884  setosa

"Composable Preprocessing Operators" are an extension for the mlr ("Machine Learning in R") project which represent preprocessing operations (e.g. imputation or PCA) in the form of R objects. These CPO objects can be composed to form more complex operations, they can be applied to data sets, and they can be attached to mlr Learner objects to generate complex machine learning pipelines that perform both preprocessing and model fitting.

Table of Contents

Short Overview

CPOs are created by calling a constructor.

> cpoScale()
scale(center = TRUE, scale = TRUE)

The created objects have Hyperparameters that can be manipulated using getHyperPars, setHyperPars etc, just like in mlr.

> getHyperPars(cpoScale())
$scale.center
[1] TRUE

$scale.scale
[1] TRUE

> setHyperPars(cpoScale(), scale.center = FALSE)
scale(center = FALSE, scale = TRUE)

The %>>%-operator can be used to create complex pipelines.

> cpoScale() %>>% cpoPca()
(scale >> pca)(scale.center = TRUE, scale.scale = TRUE)

This operator can also be used to apply an operation to a data set:

> head(iris %>>% cpoPca())
  Species       PC1      PC2          PC3          PC4
1  setosa -5.912747 2.302033  0.007401536  0.003087706
2  setosa -5.572482 1.971826  0.244592251  0.097552888
3  setosa -5.446977 2.095206  0.015029262  0.018013331
4  setosa -5.436459 1.870382  0.020504880 -0.078491501
5  setosa -5.875645 2.328290 -0.110338269 -0.060719326
6  setosa -6.477598 2.324650 -0.237202487 -0.021419633

Or to attach an operation to an MLR Learner, which extends the Learner's hyperparameters by the CPO's hyperparameters:

> cpoScale() %>>% makeLearner("classif.logreg")
Learner classif.logreg.scale from package stats
Type: classif
Name: ; Short name:
Class: CPOLearner
Properties: numerics,factors,prob,twoclass
Predict-Type: response
Hyperparameters: model=FALSE,scale.center=TRUE,scale.scale=TRUE

Get a list of all CPOs by calling listCPO().

Installation

Install mlrCPO from CRAN, or use the more recent GitHub version:

devtools::install_github("mlr-org/mlrCPO")

Documentation

To effectively use mlrCPO, you should first familiarize yourself a little with mlr. There is an extensive tutorial online; for more resources on mlr, see the overview on mlr's GitHub page.

To get familiar with mlrCPO, it is recommended that you read the vignettes. For each vignette, there is also a compact version that has all the R output removed.

  1. First Steps: Introduction and short overview (compact version).
  2. mlrCPO Core: Description of general tools for CPO handling (compact version).
  3. Builtin CPOs: Listing and description of all builtin CPOs (compact version).
  4. Custom CPOs: How to create your own CPOs. (compact version).
  5. CPO Internals: A small intro guide for developers into the code base. See the info directory for pdf / html versions.

For more documentation of individual mlrCPO functions, use R's built-in help() functionality.

Project Status

The foundation of mlrCPO is built and is reasonably stable, only small improvements and stability fixes are expected here. There are still many concrete implementations of preprocessing operators to be written.

Contributing

Bugs, Questions, Feedback

mlrCPO is a free and open source software project that encourages participation and feedback. If you have any issues, questions, suggestions or feedback, please do not hesitate to open an "issue" about it on the GitHub page!

In case of problems / bugs, it is often helpful if you provide a "minimum working example" that showcases the behaviour (but don't worry about this if the bug is obvious).

Please understand that the resources of the project are limited: response may sometimes be delayed by a few days, and some suggestions may not not make it to become features for a while.

Contributing Code, Pull Requests

Pull Requests that fix small issues are very welcome, especially if they contain tests that check for the given issue. For larger contributions, or Pull Requests that add features, please note:

  1. Adding new CPOs is always welcome. Please have a look at a few examples in the current codebase (the PCA CPO and the corresponding tests file are good for this, and show that adding a CPO does not require a lot of code) to familiarise yourself with the conventions. A CPO that comes with documentation, in particular also documenting the CPOTrained state, and with tests, is most likely to get merged quickly.

  2. Adding or changing features of the backend, or changing the functioning of the backend, is a more complicated story. If a Pull Request is incongruent with the "vision" behind mlrCPO, or if it appears to put a large burden on the mlrCPO developers in the long term relative to the problems it solves, it may have a slim chance of getting merged. Therefore, if you plan to make a contribution changing CPO core behaviour, it is best if you first open an "issue" about it for discussion.

When creating Pull Requests, please follow the Style Guide. Adherence to this is checked by the CI system (Travis). On Linux (and possibly Mac) you can check this locally on your computer using the quicklint tool in the tools directory. This is recommended to avoid frustrating failed builds caused by style violations.

Before merging a Pull Request, it is possible that an mlrCPO developer makes further changes to it, e.g. to harmonise it with conventions, or to incorporate other ideas.

When you make a Pull Request, it is assumed that you permit us (and are able to permit us) to incorporate the given code into the mlrCPO codebase as given, or with modifications, and distribute the result under the BSD 2-Clause License.

Similar Projects

There are other projects that provide functionality similar to mlrCPO for other machine learning frameworks. The caret project provides some preprocessing functionality, though not as flexible as mlrCPO. dplyr has similar syntax and some overlapping functionality, but is focused ultimately more on (manual) data manipulation instead of (machine learning pipeline integrated) preprocessing. Much more close to mlrCPO's functionality is the Recipes package. scikit learn also has preprocessing functionality built in.

License

The BSD 2-Clause License

Copy Link

Version

Install

install.packages('mlrCPO')

Monthly Downloads

310

Version

0.3.7-7

License

BSD_2_clause + file LICENSE

Issues

Pull Requests

Stars

Forks

Maintainer

Martin Binder

Last Published

February 20th, 2024

Functions in mlrCPO (0.3.7-7)

covrTraceCPOs

Add 'covr' coverage to CPOs
cpoCache

Caches the Result of CPO Transformations
cpoDropConstants

Drop Constant or Near-Constant Features
cpoCollapseFact

Compine Rare Factors
cpoAsNumeric

Convert All Features to Numerics
cpoDropMostlyConstants

Drop Constant or Near-Constant Features
cpoDummyEncode

CPO Dummy Encoder
cpoApplyFunRegrTarget

Transform a Regression Target Variable
cpoCbind

“cbind” the Result of Multiple CPOs
cpoApplyFun

Apply a Function Element-Wise
cpoFilterInformationGain

Filter Features: “information.gain”
cpoFilterMrmr

Filter Features: “mrmr”
cpoFilterKruskal

Filter Features: “kruskal.test”
cpoFilterCarscore

Filter Features: “carscore”
cpoFilterOneR

Filter Features: “oneR”
cpoFilterLinearCorrelation

Filter Features: “linear.correlation”
cpoFilterGainRatio

Filter Features: “gain.ratio”
cpoFilterAnova

Filter Features: “anova.test”
cpoFilterFeatures

Filter Features by Thresholding Filter Values
cpoFilterChiSquared

Filter Features: “chi.squared”
cpoFilterUnivariate

Filter Features: “univariate.model.score”
cpoFilterRfSRCImportance

Filter Features: “randomForestSRC.rfsrc”
cpoFilterSymmetricalUncertainty

Filter Features: “symmetrical.uncertainty”
cpoFilterRelief

Filter Features: “relief”
cpoFilterRankCorrelation

Filter Features: “rank.correlation”
cpoFilterVariance

Filter Features: “variance”
cpoFilterRfSRCMinDepth

Filter Features: “randomForestSRC.var.select”
cpoFilterRfImportance

Filter Features: “randomForest.importance”
cpoFilterRfCImportance

Filter Features: “cforest.importance”
cpoFilterPermutationImportance

Filter Features: “permutation.importance”
cpoImpute

Impute and Re-Impute Data
cpoImputeHist

Perform Imputation with Random Values
cpoImputeMax

Perform Imputation with Multiple of Minimum
cpoImpactEncodeClassif

Impact Encoding
cpoImputeMean

Perform Imputation with Mean Value
cpoFixFactors

Clean Up Factorial Features
cpoImputeConstant

Perform Imputation with Constant Value
cpoIca

Construct a CPO for ICA Preprocessing
cpoImpactEncodeRegr

Impact Encoding
cpoImputeLearner

Perform Imputation with an mlr Learner
cpoMakeCols

Create Columns from Expressions
cpoOversample

Over- or Undersample Binary Classification Tasks
cpoImputeNormal

Perform Imputation with Normally Distributed Random Values
cpoMissingIndicators

Convert Data into Factors Indicating Missing Data
cpoImputeMode

Perform Imputation with Mode Value
cpoImputeMin

Perform Imputation with Multiple of Minimum
cpoModelMatrix

Create a “Model Matrix” from the Data Given a Formula
cpoImputeUniform

Perform Imputation with Uniformly Random Values
cpoImputeMedian

Perform Imputation with Median Value
cpoLogTrafoRegr

Log-Transform a Regression Target Variable.
cpoSelect

Drop All Columns Except Certain Selected Ones from Data
cpoResponseFromSE

Use the “se” predict.type for “response” Prediction
cpoSample

Sample Data from a Task
cpoRegrResiduals

Train a Model on a Task and Return the Residual Task
cpoScaleRange

Range Scaling CPO
cpoScaleMaxAbs

Max Abs Scaling CPO
cpoPca

Construct a CPO for PCA Preprocessing
cpoScale

Construct a CPO for Scaling / Centering
cpoProbEncode

Probability Encoding
cpoQuantileBinNumerics

Split Numeric Features into Quantile Bins
cpoSmote

Perform SMOTE Oversampling for Binary Classification
cpoWrap

CPO Wrapper
getCPOConstructor

Get the CPOConstructor Used to Create a CPO Object
cpoTemplate

Dummy Function for Documentation Purposes
funct

defined to avoid problems with the static type checker
getCPOAffect

Get the Selection Arguments for Affected CPOs
cpoTransformParams

Transform CPO Hyperparameters
discrete

defined to avoid problems with the static type checker
cpoSpatialSign

Scale Rows to Unit Length
getCPOClass

Get the CPO Class
getCPOPredictType

Get the CPO predict.type
getCPOOperatingType

Determine the Operating Type of the CPO
getCPOProperties

Get the Properties of the Given CPO Object
getCPOId

Get the ID of a CPO Object
getCPOTrainedCPO

Get CPO Used to Train a Retrafo / Inverter
getCPOTrainedCapability

Get the CPOTrained's Capabilities
getLearnerBare

Get the Learner with the CPOs Removed
getCPOTrainedState

Get the Internal State of a CPORetrafo Object
getCPOName

Get the CPO Object's Name
getLearnerCPO

Get the CPO Associated with a Learner
is.inverter

Check CPOInverter
listCPO

List all Built-in CPOs
internal%>>%

Internally Used %>>% Operators
invert

Invert Target Preprocessing
is.retrafo

Check CPORetrafo
%>>%

CPO Composition / Attachment / Application Operator
makeCPO

Create a Custom CPO Constructor
identicalCPO

Check Whether Two CPO are Fundamentally the Same
is.nullcpo

Check for NULLCPO
makeCPOCase

Build Data-Dependent CPOs
makeCPOTrainedFromState

Create a CPOTrained with Given Internal State
mlrCPO-package

Composable Preprocessing Operators
pipeCPO

Turn a list of CPOs into a Single Chained One
setCPOId

Set the ID of a CPO Object
makeCPOMultiplex

CPO Multiplexer
pSS

Turn the argument list into a ParamSet
randomForestSRC_filters

Filter “randomForestSRC_importance” computes the importance of random forests fitted in package randomForestSRC. The concrete method is selected via the `method` parameter. Possible values are `permute` (default), `random`, `anti`, `permute.ensemble`, `random.ensemble`, `anti.ensemble`. See the VIMP section in the docs for [randomForestSRC::rfsrc] for details.
nullcpoToNull

NULLCPO to NULL
print.CPOConstructor

Print CPO Objects
nullToNullcpo

NULL to NULLCPO
untyped

defined to avoid problems with the static type checker
as.list.CPO

Split a Pipeline into Its Constituents
CPOConstructor

Constructor for CPO Objects
composeCPO

CPO Composition
CPOTrained

Get the Retransformation or Inversion Function from a Resulting Object
CPOLearner

CPO Learner Object
attachCPO

Attach a CPO to a Learner
clearRI

Clear Retrafo and Inverter Attributes
NULLCPO

CPO Composition Neutral Element
applyCPO

Apply a CPO to Data
CPO

Composable Preprocessing Operators