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首页> 外文期刊>Journal of web semantics: >FAT-RE: A faster dependency-free model for relation extraction
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FAT-RE: A faster dependency-free model for relation extraction

机译:FAT-RE:关系提取的无依赖模型

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摘要

Recent years have seen the dependency tree as effective information for relation extraction. Two problems still exist in previous methods: (1) dependency tree relies on external tools and needs to be carefully integrated with a trade-off between pruning noisy words and keeping semantic integrity; (2) dependency-based methods still have to encode sequential context as a supplement, which needs extra time. To tackle the two problems, we propose a faster dependency-free model in this paper: regarding the sentence as a fully-connected graph, we customize the vanilla transformer architecture to remove the irrelevant information via filtering mechanism and further aggregate the sentence information through the enhanced query. Our model yields comparable results on the SemEval2010 Task8 dataset and better results on the TACRED dataset, without requiring external information from the dependency tree but with improved time efficiency. (C) 2020 Elsevier B.V. All rights reserved.
机译:近年来已经看到依赖树作为关系提取的有效信息。以前的方法中仍存在两个问题:(1)依赖树依赖于外部工具,并且需要在修剪嘈杂的单词和保持语义完整之间进行折衷。 (2)基于依赖性的方法仍然必须将顺序上下文编码为补充,需要额外的时间。为了解决这两个问题,我们提出了一个更快的无依赖模型:关于作为一个完全连接的图形的句子,我们通过过滤机制自定义Vanilla变压器架构,并通过筛选机制进一步聚合句子信息来删除无关信息增强查询。我们的模型在Semeval2010 Task8数据集中产生了可比的结果,并且在TACRED数据集上更好地结果,而不需要来自依赖树的外部信息,但具有改善的时间效率。 (c)2020 Elsevier B.v.保留所有权利。

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