Albeit Natural Language Processing has seen major breakthroughs in the last few years, transferring such advances into real-world business cases can be challenging. One of the reasons resides in the displacement between popular benchmarks and actual data. Lack of supervision, unbalanced classes, noisy data and long documents often affect real problems in vertical domains such as finance, law and health. To support industry-oriented research, we present BUSTER, a BUSiness Transaction Entity Recognition dataset. The dataset consists of 3779 manually annotated documents on financial transactions. We establish several baselines exploiting both general-purpose and domain-specific language models. The best performing model is also used to automatically annotate 6196 documents, which we release as an additional silver corpus to BUSTER.

Zugarini, A., Zamai, A., Ernandes, M., Rigutini, L. (2023). BUSTER: a “BUSiness Transaction Entity Recognition” dataset. In Proceedings of the 2023 Conference on empirical methods in natural language processing: industry track (pp.605-611). Association for Computational Linguistics [10.18653/v1/2023.emnlp-industry.57].

BUSTER: a “BUSiness Transaction Entity Recognition” dataset

Zugarini, Andrea
Investigation
;
Zamai, Andrew
Software
;
Ernandes, Marco
Membro del Collaboration Group
;
Rigutini, Leonardo
Conceptualization
2023-01-01

Abstract

Albeit Natural Language Processing has seen major breakthroughs in the last few years, transferring such advances into real-world business cases can be challenging. One of the reasons resides in the displacement between popular benchmarks and actual data. Lack of supervision, unbalanced classes, noisy data and long documents often affect real problems in vertical domains such as finance, law and health. To support industry-oriented research, we present BUSTER, a BUSiness Transaction Entity Recognition dataset. The dataset consists of 3779 manually annotated documents on financial transactions. We establish several baselines exploiting both general-purpose and domain-specific language models. The best performing model is also used to automatically annotate 6196 documents, which we release as an additional silver corpus to BUSTER.
2023
Zugarini, A., Zamai, A., Ernandes, M., Rigutini, L. (2023). BUSTER: a “BUSiness Transaction Entity Recognition” dataset. In Proceedings of the 2023 Conference on empirical methods in natural language processing: industry track (pp.605-611). Association for Computational Linguistics [10.18653/v1/2023.emnlp-industry.57].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11365/1255434