NumHG: A Dataset for Number-Focused Headline Generation
Abstract
Headline generation, a key task in abstractive summarization, strives to condense a full-length article into a succinct, single line of text. Notably, while contemporary encoder-decoder models excel based on the ROUGE metric, they often falter when it comes to the precise generation of numerals in headlines. We identify the lack of datasets providing fine-grained annotations for accurate numeral generation as a major roadblock. To address this, we introduce a new dataset, the NumHG, and provide over 27,000 annotated numeral-rich news articles for detailed investigation. Further, we evaluate five well-performing models from previous headline generation tasks using human evaluation in terms of numerical accuracy, reasonableness, and readability. Our study reveals a need for improvement in numerical accuracy, demonstrating the potential of the NumHG dataset to drive progress in number-focused headline generation and stimulate further discussions in numeral-focused text generation.
Keywords
Cite
@article{arxiv.2309.01455,
title = {NumHG: A Dataset for Number-Focused Headline Generation},
author = {Jian-Tao Huang and Chung-Chi Chen and Hen-Hsen Huang and Hsin-Hsi Chen},
journal= {arXiv preprint arXiv:2309.01455},
year = {2023}
}
Comments
NumEval@SemEval-2024 Dataset