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libact: Pool-based Active Learning in Python
authors: Yao-Yuan Yang, Shao-Chuan Lee, Yu-An Chung, Tung-En Wu, Si-An Chen, Hsuan-Tien Lin
Introduction
libact
is a Python package designed to make active learning easier for
real-world users. The package not only implements several popular active learning strategies, but also features the active-learning-by-learning
meta-algorithm that assists the users to automatically select the best strategy
on the fly. Furthermore, the package provides a unified interface for implementing more strategies, models and application-specific labelers. The package is open-source along with issue trackers on github, and can be easily installed from Python Package Index repository.
Documentation
The technical report associated with the package is on arXiv, and the documentation for the latest release is available on readthedocs.
Comments and questions on the package is welcomed at libact-users@googlegroups.com
. All contributions to the documentation are greatly appreciated!
Basic Dependencies
-
Python 2.7, 3.3, 3.4, 3.5, 3.6
-
Python dependencies
pip install -r requirements.txt
- Debian (>= 7) / Ubuntu (>= 14.04)
sudo apt-get install build-essential gfortran libatlas-base-dev liblapacke-dev python3-dev
- Arch
sudo pacman -S lapacke
- macOS
brew install openblas
Installation
After resolving the dependencies, you may install the package via pip (for all users):
sudo pip install libact
or pip install in home directory:
pip install --user libact
or pip install from github repository for latest source:
pip install git+https://github.com/ntucllab/libact.git
To build and install from souce in your home directory:
python setup.py install --user
To build and install from souce for all users on Unix/Linux:
python setup.py build
sudo python setup.py install
Installation Options
LIBACT_BUILD_HINTSVM
: set this variable to 1 if you would like to build hintsvm c-extension. If set to 0, you will not be able to use the HintSVM query strategy. Default=1.LIBACT_BUILD_VARIANCE_REDUCTION
: set this variable to 1 if you would like to build variance reduction c-extension. If set to 0, you will not be able to use the VarianceReduction query strategy. Default=1.
Example:
LIBACT_BUILD_HINTSVM=1 pip install git+https://github.com/ntucllab/libact.git
Usage
The main usage of libact
is as follows:
qs = UncertaintySampling(trn_ds, method='lc') # query strategy instance
ask_id = qs.make_query() # let the specified query strategy suggest a data to query
X, y = zip(*trn_ds.data)
lb = lbr.label(X[ask_id]) # query the label of unlabeled data from labeler instance
trn_ds.update(ask_id, lb) # update the dataset with newly queried data
Some examples are available under the examples
directory. Before running, use
examples/get_dataset.py
to retrieve the dataset used by the examples.
Available examples:
- plot : This example performs basic usage of libact. It splits a fully-labeled dataset and remove some label from dataset to simulate the pool-based active learning scenario. Each query of an unlabeled dataset is then equivalent to revealing one labeled example in the original data set.
- label_digits : This example shows how to use libact in the case that you want a human to label the selected sample for your algorithm.
- albl_plot: This example compares the performance of ALBL with other active learning algorithms.
- multilabel_plot: This example compares the performance of algorithms under multilabel setting.
- alce_plot: This example compares the performance of algorithms under cost-sensitive multi-class setting.
Running tests
To run the test suite:
python setup.py test
To run pylint, install pylint through pip install pylint
and run the following command in root directory:
pylint libact
To measure the test code coverage, install coverage through pip install coverage
and run the following commands in root directory:
coverage run --source libact --omit */tests/* setup.py test
coverage report
Citing
If you find this package useful, please cite the original works (see Reference of each strategy) as well as the following
@techreport{YY2017,
author = {Yao-Yuan Yang and Shao-Chuan Lee and Yu-An Chung and Tung-En Wu and Si-An Chen and Hsuan-Tien Lin},
title = {libact: Pool-based Active Learning in Python},
institution = {National Taiwan University},
url = {https://github.com/ntucllab/libact},
note = {available as arXiv preprint \url{https://arxiv.org/abs/1710.00379}},
month = oct,
year = 2017
}
Acknowledgments
The authors thank Chih-Wei Chang and other members of the Computational Learning Lab at National Taiwan University for valuable discussions and various contributions to making this package better.