Chem-FINESE: Validating Fine-Grained Few-shot Entity Extraction through Text Reconstruction

Findings Pub Date : 2024-01-18 DOI:10.48550/arXiv.2401.10189
Qingyun Wang, Zixuan Zhang, Hongxiang Li, Xuan Liu, Jiawei Han, Heng Ji, Huimin Zhao
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引用次数: 1

Abstract

Fine-grained few-shot entity extraction in the chemical domain faces two unique challenges. First, compared with entity extraction tasks in the general domain, sentences from chemical papers usually contain more entities. Moreover, entity extraction models usually have difficulty extracting entities of long-tailed types. In this paper, we propose Chem-FINESE, a novel sequence-to-sequence (seq2seq) based few-shot entity extraction approach, to address these two challenges. Our Chem-FINESE has two components: a seq2seq entity extractor to extract named entities from the input sentence and a seq2seq self-validation module to reconstruct the original input sentence from extracted entities. Inspired by the fact that a good entity extraction system needs to extract entities faithfully, our new self-validation module leverages entity extraction results to reconstruct the original input sentence. Besides, we design a new contrastive loss to reduce excessive copying during the extraction process. Finally, we release ChemNER+, a new fine-grained chemical entity extraction dataset that is annotated by domain experts with the ChemNER schema. Experiments in few-shot settings with both ChemNER+ and CHEMET datasets show that our newly proposed framework has contributed up to 8.26% and 6.84% absolute F1-score gains respectively.
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Chem-FINESE:通过文本重构验证细粒度少量实体提取
化学领域的细粒度少量实体提取面临两个独特的挑战。首先,与一般领域的实体提取任务相比,化学论文中的句子通常包含更多实体。此外,实体提取模型通常难以提取长尾类型的实体。在本文中,我们提出了一种基于序列到序列(seq2seq)的新型少量实体提取方法--Chem-FINESE,以解决这两个难题。我们的 Chem-FINESE 有两个组成部分:一个是 seq2seq 实体提取器,用于从输入句子中提取命名实体;另一个是 seq2seq 自我验证模块,用于从提取的实体中重建原始输入句子。一个好的实体提取系统需要忠实地提取实体,受此启发,我们的新自我验证模块利用实体提取结果来重构原始输入句。此外,我们还设计了一种新的对比损失,以减少提取过程中的过度复制。最后,我们发布了新的细粒度化学实体提取数据集 ChemNER+,该数据集由领域专家根据 ChemNER 模式进行注释。使用 ChemNER+ 和 CHEMET 数据集进行的少量实验表明,我们新提出的框架分别提高了 8.26% 和 6.84% 的 F1 分数绝对值。
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