|
||
---|---|---|
inst/java | ||
java | ||
licenses | ||
man | ||
R | ||
tests | ||
.gitignore | ||
.Rbuildignore | ||
COPYING | ||
DESCRIPTION | ||
NAMESPACE | ||
NOTICE | ||
README.md |
README
This R package is used to train random competing risks forests, ideally for large data. It's based heavily off of randomForestSRC, although there are some differences.
This package is still in a pre-release state and so it not yet available on CRAN.
To install it now, in R install the devtools
package and run the following command:
R> devtools::install_git("https://github.com/jatherrien/largeRCRF.git")
System Requirements
You need:
- R version 3.4.0 or greater
- The
rJava
package version 0.9-9 or greater - A Java runtime version 1.8 or greater
Troubleshooting
I get an OutOfMemoryException
error but I have plenty of RAM
largeRCRF
makes use of the Java virtual machine, which unfortunately restricts itself by default to a quarter of your system memory.
You can override the default by including before loading largeRCRF
or any other rJava
based package the following line:
R> options(java.parameters <- c("-Xmx13G", "-Xms13G"))
with 13G
replaced with a little less than your available system memory.
I get an OutOfMemoryException
error and I'm short on RAM
Obviously if you're short on RAM there is a limit on how large of a dataset you can train,
but there are some techniques you can use to limit how much largeRCRF
needs.
- If your training dataset is large you might not want both R and
largeRCRF
to have their own separate copies (limitations due to Java requirelargeRCRF
have its own copy). When specifying thedata
parameter intotrain
, instead provide an environment containing one object calleddata
which is the dataset.largeRCRF
will delete that variable after importing it into the Java environment.
Example:
R> data.env <- new.env()
R> data.env$data <- trainingData
R> rm(trainingData)
R> model <- train(..., data=data.env, ...)
-
Each core that is training trees requires its own memory; you can try limiting
largeRCRF
to train only one tree at a time by specifiyingcores=1
. -
By default
largeRCRF
keeps the entire forest loaded in memory during training, when in practice only the trees being trained on need to be loaded. You can specifysavePath
to give a directory forlargeRCRF
to save trees in during training, which will allow tolargeRCRF
to conserve memory for only those trees being currently trained.
Training stalls immediately at 0 trees and the CPU is idle
This issue has been observed before on one particular system (and only on that system) but it's not clear what causes it.
It would be appreciated if you could report this bug to joelt@sfu.ca and give your operating system
and the version of Java installed (the entire output of java --version
).
As a workaround, this issue seems to occur randomly; so try restarting your code to see if it runs.