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Hauptverfasser: Scherer, Paul, Pouplin, Alison, Del Vecchio, Alice, S, Suraj M, Bolton, Oliver, Soman, Jyothish, Taylor-King, Jake P., Edwards, Lindsay, Gaudelet, Thomas
Format: Preprint
Veröffentlicht: 2022
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2205.11117
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author Scherer, Paul
Pouplin, Alison
Del Vecchio, Alice
S, Suraj M
Bolton, Oliver
Soman, Jyothish
Taylor-King, Jake P.
Edwards, Lindsay
Gaudelet, Thomas
author_facet Scherer, Paul
Pouplin, Alison
Del Vecchio, Alice
S, Suraj M
Bolton, Oliver
Soman, Jyothish
Taylor-King, Jake P.
Edwards, Lindsay
Gaudelet, Thomas
contents Active learning (AL) is a sub-field of ML focused on the development of methods to iteratively and economically acquire data by strategically querying new data points that are the most useful for a particular task. Here, we introduce PyRelationAL, an open source library for AL research. We describe a modular toolkit based around a two step design methodology for composing pool-based active learning strategies applicable to both single-acquisition and batch-acquisition strategies. This framework allows for the mathematical and practical specification of a broad number of existing and novel strategies under a consistent programming model and abstraction. Furthermore, we incorporate datasets and active learning tasks applicable to them to simplify comparative evaluation and benchmarking, along with an initial group of benchmarks across datasets included in this library. The toolkit is compatible with existing ML frameworks. PyRelationAL is maintained using modern software engineering practices -- with an inclusive contributor code of conduct -- to promote long term library quality and utilisation. PyRelationAL is available under a permissive Apache licence on PyPi and at https://github.com/RelationRx/pyrelational.
format Preprint
id arxiv_https___arxiv_org_abs_2205_11117
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle PyRelationAL: a python library for active learning research and development
Scherer, Paul
Pouplin, Alison
Del Vecchio, Alice
S, Suraj M
Bolton, Oliver
Soman, Jyothish
Taylor-King, Jake P.
Edwards, Lindsay
Gaudelet, Thomas
Machine Learning
Artificial Intelligence
Active learning (AL) is a sub-field of ML focused on the development of methods to iteratively and economically acquire data by strategically querying new data points that are the most useful for a particular task. Here, we introduce PyRelationAL, an open source library for AL research. We describe a modular toolkit based around a two step design methodology for composing pool-based active learning strategies applicable to both single-acquisition and batch-acquisition strategies. This framework allows for the mathematical and practical specification of a broad number of existing and novel strategies under a consistent programming model and abstraction. Furthermore, we incorporate datasets and active learning tasks applicable to them to simplify comparative evaluation and benchmarking, along with an initial group of benchmarks across datasets included in this library. The toolkit is compatible with existing ML frameworks. PyRelationAL is maintained using modern software engineering practices -- with an inclusive contributor code of conduct -- to promote long term library quality and utilisation. PyRelationAL is available under a permissive Apache licence on PyPi and at https://github.com/RelationRx/pyrelational.
title PyRelationAL: a python library for active learning research and development
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2205.11117