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ALE: a simulation-based active learning evaluation framework for the parameter-driven comparison of query strategies for NLP

  • Supervised machine learning and deep learning require a large amount of labeled data, which data scientists obtain in a manual, and time-consuming annotation process. To mitigate this challenge, Active Learning (AL) proposes promising data points to annotators they annotate next instead of a subsequent or random sample. This method is supposed to save annotation effort while maintaining model performance. However, practitioners face many AL strategies for different tasks and need an empirical basis to choose between them. Surveys categorize AL strategies into taxonomies without performance indications. Presentations of novel AL strategies compare the performance to a small subset of strategies. Our contribution addresses the empirical basis by introducing a reproducible active learning evaluation (ALE) framework for the comparative evaluation of AL strategies in NLP. The framework allows the implementation of AL strategies with low effort and a fair data-driven comparison through defining and tracking experiment parameters (e.g., initial dataset size, number of data points per query step, and the budget). ALE helps practitioners to make more informed decisions, and researchers can focus on developing new, effective AL strategies and deriving best practices for specific use cases. With best practices, practitioners can lower their annotation costs. We present a case study to illustrate how to use the framework.

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Metadaten
Author:Philipp KohlORCiD, Nils FreyerORCiD, Yoka KrämerORCiD, Henri WerthORCiD, Steffen WolfORCiD, Bodo Kraft, Matthias MeineckeORCiD, Albert Zündorf
DOI:https://doi.org/978-3-031-39059-3
ISBN:978-3-031-39058-6 (Print)
ISBN:978-3-031-39059-3 (Online)
Parent Title (English):Deep Learning Theory and Applications. DeLTA 2023. Communications in Computer and Information Science
Publisher:Springer
Place of publication:Cham
Editor:Donatello Conte, Ana Fred, Oleg Gusikhin, Carlo Sansone
Document Type:Conference Proceeding
Language:English
Year of Completion:2023
Date of the Publication (Server):2023/08/03
Tag:Active learning; Deep learning; Natural language processing; Query learning; Reproducible research
First Page:235
Last Page:253
Note:
4th International Conference, DeLTA 2023, Rome, Italy, July 13–14, 2023.
Link:https://doi.org/10.1007/978-3-031-39059-3_16
Zugriffsart:campus
Institutes:FH Aachen / Fachbereich Medizintechnik und Technomathematik
FH Aachen / Fachbereich Wirtschaftswissenschaften
collections:Verlag / Springer