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Label Sleuth: From Unlabeled Text to a Classifier in a Few Hours

2 August 2022
Eyal Shnarch
Alon Halfon
Ariel Gera
Marina Danilevsky
Yannis Katsis
Leshem Choshen
M. Cooper
Dina Epelboim
Zheng Zhang
Dakuo Wang
Lucy Yip
L. Ein-Dor
Lena Dankin
Ilya Shnayderman
R. Aharonov
Yunyao Li
Naftali Liberman
Philip Levin Slesarev
Gwilym Newton
Shila Ofek-Koifman
Noam Slonim
Yoav Katz
    VLM
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Abstract

Text classification can be useful in many real-world scenarios, saving a lot of time for end users. However, building a custom classifier typically requires coding skills and ML knowledge, which poses a significant barrier for many potential users. To lift this barrier, we introduce Label Sleuth, a free open source system for labeling and creating text classifiers. This system is unique for (a) being a no-code system, making NLP accessible to non-experts, (b) guiding users through the entire labeling process until they obtain a custom classifier, making the process efficient -- from cold start to classifier in a few hours, and (c) being open for configuration and extension by developers. By open sourcing Label Sleuth we hope to build a community of users and developers that will broaden the utilization of NLP models.

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