ALANNO: An Active Learning Annotation System for Mortals
- URL: http://arxiv.org/abs/2211.06224v1
- Date: Fri, 11 Nov 2022 14:19:41 GMT
- Title: ALANNO: An Active Learning Annotation System for Mortals
- Authors: Josip Juki\'c, Fran Jeleni\'c, Miroslav Bi\'cani\'c, Jan \v{S}najder
- Abstract summary: ALANNO is an open-source annotation system for NLP tasks powered by active learning.
We focus on the practical challenges in deploying active learning systems.
We support the system with a wealth of active learning methods and underlying machine learning models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In today's data-driven society, supervised machine learning is rapidly
evolving, and the need for labeled data is increasing. However, the process of
acquiring labels is often expensive and tedious. For this reason, we developed
ALANNO, an open-source annotation system for NLP tasks powered by active
learning. We focus on the practical challenges in deploying active learning
systems and try to find solutions to make active learning effective in
real-world applications. We support the system with a wealth of active learning
methods and underlying machine learning models. In addition, we leave open the
possibility to add new methods, which makes the platform useful for both
high-quality data annotation and research purposes.
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