Runxin XuPeiyi WangTianyu LiShuang ZengBaobao ChangZhifang Sui
Most previous studies aim at extracting events from a single sentence, while document-level event extraction still remains under-explored.In this paper, we focus on extracting event arguments from an entire document, which mainly faces two critical problems: a) the longdistance dependency between trigger and arguments over sentences; b) the distracting context towards an event in the document.To address these issues, we propose a Two-Stream Abstract meaning Representation enhanced extraction model (TSAR).TSAR encodes the document from different perspectives by a twostream encoding module, to utilize local and global information and lower the impact of distracting context.Besides, TSAR introduces an AMR-guided interaction module to capture both intra-sentential and inter-sentential features, based on the locally and globally constructed AMR semantic graphs.An auxiliary boundary loss is introduced to enhance the boundary information for text spans explicitly.Extensive experiments illustrate that TSAR outperforms previous state-of-the-art by a large margin, with 2.54 F1 and 5.13 F1 performance gain on the public RAMS and WikiEvents datasets respectively, showing the superiority in the cross-sentence arguments extraction.We release our code in
Runxin XuPeiyi WangTianyu LiuShuang ZengBaobao ChangZhifang Sui
Runxin XuPeiyi WangTianyu LiShuang ZengBaobao ChangZhifang Sui
Shuting HuangJian ZhangR. C. Shang
Pushi WangTao LuoXin WangGuozheng Rao