@inproceedings{huidong-etal-2024-generate,
title = "Generate-then-Revise: An Effective Synthetic Training Data Generation Framework For Event Detection Retrieval",
author = "Huidong, Du and
Hao, Sun and
Pengyuan, Liu and
Dong, Yu",
editor = "Sun, Maosong and
Liang, Jiye and
Han, Xianpei and
Liu, Zhiyuan and
He, Yulan",
booktitle = "Proceedings of the 23rd Chinese National Conference on Computational Linguistics (Volume 1: Main Conference)",
month = jul,
year = "2024",
address = "Taiyuan, China",
publisher = "Chinese Information Processing Society of China",
url = "https://preview.aclanthology.org/fix-sig-urls/2024.ccl-1.78/",
pages = "1011--1022",
language = "eng",
abstract = "``Large language models (LLMs) struggle with event detection (ED) due to the structured and vari-able number of events in the output. Existing supervised approaches rely on a large amount ofmanually annotated corpora, facing challenges in practice when event types are diverse and theannotated data is scarce. We propose Generate-then-Revise (GtR), a framework that leveragesLLMs in the opposite direction to address these challenges in ED. GtR utilizes an LLM to gen-erate high-quality training data in three stages, including a novel data revision step to minimizenoise in the synthetic data. The generated data is then used to train a smaller model for evalua-tion. Our approach demonstrates significant improvements on the low-resource ED. We furtheranalyze the generated data, highlighting the potential of synthetic data generation for enhancingED performance.Introduction''"
}
Markdown (Informal)
[Generate-then-Revise: An Effective Synthetic Training Data Generation Framework For Event Detection Retrieval](https://preview.aclanthology.org/fix-sig-urls/2024.ccl-1.78/) (Huidong et al., CCL 2024)
ACL