CRAN

missForest 1.4

Nonparametric Missing Value Imputation using Random Forest

Released Dec 31, 2013 by Daniel J. Stekhoven

This package is available for Renjin and there are no known compatibility issues.

Dependencies

foreach 1.4.4 itertools 0.1-3 randomForest 4.6-14

The function 'missForest' in this package is used to impute missing values particularly in the case of mixed-type data. It uses a random forest trained on the observed values of a data matrix to predict the missing values. It can be used to impute continuous and/or categorical data including complex interactions and non-linear relations. It yields an out-of-bag (OOB) imputation error estimate without the need of a test set or elaborate cross-validation. It can be run in parallel to save computation time.

Installation

Maven

This package can be included as a dependency from a Java or Scala project by including the following your project's pom.xml file. Read more about embedding Renjin in JVM-based projects.

<dependencies>
  <dependency>
    <groupId>org.renjin.cran</groupId>
    <artifactId>missForest</artifactId>
    <version>1.4-b45</version>
  </dependency>
</dependencies>
<repositories>
  <repository>
    <id>bedatadriven</id>
    <name>bedatadriven public repo</name>
    <url>https://nexus.bedatadriven.com/content/groups/public/</url>
  </repository>
</repositories>

View build log

Renjin CLI

If you're using Renjin from the command line, you load this library by invoking:

library('org.renjin.cran:missForest')

Test Results

This package was last tested against Renjin 0.9.2687 on Aug 25, 2018.

Source

R

View GitHub Mirror

Release History