Towards Generalized Open Information Extraction

Yu Bowen, Zhenyu Zhang, Jingyang Li, Haiyang Yu, Tingwen Liu, Jianguo Sun, Yongbin Li, Bin Wang
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Abstract

Open Information Extraction (OpenIE) facilitates the open-domain discovery of textual facts. However, the prevailing solutions evaluate OpenIE models on in-domain test sets aside from the training corpus, which certainly violates the initial task principle of domain-independence. In this paper, we propose to advance OpenIE towards a more realistic scenario: generalizing over unseen target domains with different data distributions from the source training domains, termed Generalized OpenIE. For this purpose, we first introduce GLOBE, a large-scale human-annotated multi-domain OpenIE benchmark, to examine the robustness of recent OpenIE models to domain shifts, and the relative performance degradation of up to 70% implies the challenges of generalized OpenIE. Then, we propose DragonIE, which explores a minimalist graph expression of textual fact: directed acyclic graph, to improve the OpenIE generalization. Extensive experiments demonstrate that DragonIE beats the previous methods in both in-domain and out-of-domain settings by as much as 6.0% in F1 score absolutely, but there is still ample room for improvement.
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面向广义开放信息提取
开放信息抽取(OpenIE)促进了文本事实的开放领域发现。然而,目前的解决方案是在领域内测试集上评估OpenIE模型,而不是在训练语料库上,这显然违反了领域独立的初始任务原则。在本文中,我们建议将OpenIE推进到一个更现实的场景:在不可见的目标域上泛化与源训练域不同的数据分布,称为广义OpenIE。为此,我们首先引入了GLOBE,一个大规模的人类注释的多域OpenIE基准,以检查最近的OpenIE模型对域转移的鲁棒性,并且高达70%的相对性能下降意味着广义OpenIE的挑战。然后,我们提出了DragonIE,它探索了文本事实的极简图表达:有向无环图,以提高OpenIE的泛化。大量的实验表明,DragonIE在域内和域外设置下的F1分数都比以前的方法高出6.0%,但仍有很大的改进空间。
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