Forest algorithms are powerful ensemble methods for classification and regression. However, predictions from these algorithms do contain some amount of error. Prediction variability can illustrate how influential the training set is for producing the observed random forest predictions.
forest-confidence-interval
is a Python module that adds a calculation of
variance and computes confidence intervals to the basic functionality
implemented in scikit-learn random forest regression or classification objects.
The core functions calculate an in-bag and error bars for random forest
objects.
This module is based on R code from Stefan Wager
(randomForestCI
deprecated in favor of grf
)
and is licensed under the MIT open source license (see LICENSE).
The present project makes the algorithm compatible with scikit-learn
.
To get the proper confidence interval, you need to use a large number of trees (estimators).
The calibration routine
(which can be included or excluded on top of the algorithm) tries to extrapolate
the results for an infinite number of trees, but it is instable and it can cause numerical errors:
if this is the case, the suggestion is to exclude it with calibrate=False
and test increasing the number of trees in the model to reach convergence.
Before installing the module you will need numpy
, scipy
and scikit-learn
.
To install forest-confidence-interval
execute:
pip install forestci
If would like to install the development version of the software use:
pip install git+git://github.com/scikit-learn-contrib/forest-confidence-interval.git
Usage:
import import forestci as fci
ci = fci.random_forest_error(
forest=model, # scikit-learn Forest model fitted on X_train
X_train_shape=X_train.shape,
X_test=X, # the samples you want to compute the CI
inbag=None,
calibrate=True,
memory_constrained=False,
memory_limit=None,
y_output=0 # in case of multioutput model, consider target 0
)
The examples (gallery below) demonstrates the package functionality with random forest classifiers and regression models. The regression example uses a popular UCI Machine Learning data set on cars while the classifier example simulates how to add measurements of uncertainty to tasks like predicting spam emails.
Contributions are very welcome, but we ask that contributors abide by the contributor covenant.
To report issues with the software, please post to the issue log Bug reports are also appreciated, please add them to the issue log after verifying that the issue does not already exist. Comments on existing issues are also welcome.
Please submit improvements as pull requests against the repo after verifying that the existing tests pass and any new code is well covered by unit tests. Please write code that complies with the Python style guide, PEP8.
E-mail Ariel Rokem, Kivan Polimis, or Bryna Hazelton if you have any questions, suggestions or feedback.
Requires installation of nose
package. Tests are located in the forestci/tests
folder
and can be run with the nosetests
command in the main directory.
Click on the JOSS status badge for the Journal of Open Source Software article on this project. The BibTeX citation for the JOSS article is below:
@article{polimisconfidence,
title={Confidence Intervals for Random Forests in Python},
author={Polimis, Kivan and Rokem, Ariel and Hazelton, Bryna},
journal={Journal of Open Source Software},
volume={2},
number={1},
year={2017}
}