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Communication Dans Un Congrès Année : 2022

A Two-Step Approach for Explainable Relation Extraction

Résumé

Knowledge Graphs (KG) offer easy-to-process information. An important issue to build a KG from texts is the Relation Extraction (RE) task that identifies and labels relationships between entity mentions. In this paper, to address the RE problem, we propose to combine a deep learning approach for relation detection, and a symbolic method for relation classification. It allows to have at the same time the performance of deep learning methods and the interpretability of symbolic methods. This method has been evaluated and compared with state-ofthe-art methods on TACRED, a relation extraction benchmark, and has shown interesting quantitative and qualitative results.
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hal-03866083 , version 1 (22-11-2022)

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  • HAL Id : hal-03866083 , version 1

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H. Ambre Ayats, Peggy Cellier, Sébastien Ferré. A Two-Step Approach for Explainable Relation Extraction. IDA 2022 - Symposium on Intelligent Data Analysis, Apr 2022, Rennes, France. pp.1-12. ⟨hal-03866083⟩
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