Code for reproducing Manifold Mixup results (ICML 2019)
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Updated
Mar 31, 2024 - Python
Code for reproducing Manifold Mixup results (ICML 2019)
This repository implements our ACL Findings 2022 research paper RelationPrompt: Leveraging Prompts to Generate Synthetic Data for Zero-Shot Relation Triplet Extraction. The goal of Zero-Shot Relation Triplet Extraction (ZeroRTE) is to extract relation triplets of the format (head entity, tail entity, relation), despite not having annotated data …
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