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基于动态损失函数的远程监督关系抽取
引用本文:彭正阳,吕立,于碧辉. 基于动态损失函数的远程监督关系抽取[J]. 小型微型计算机系统, 2021, 0(2): 251-255
作者姓名:彭正阳  吕立  于碧辉
作者单位:中国科学院大学;中国科学院沈阳计算技术研究所
摘    要:关系抽取是信息抽取的主要任务之一,远程监督作为关系抽取中的一种有效的方法,已成功地应用于包含上千关系的大型语料库.然而,远程监督造成的错误标注会影响关系抽取的性能.为了缓解这一问题,现有的远程监督关系抽取方法选择每个实体对中一个最好的句子或通过注意力机制赋予每个句子不同的权重.但这些方法并不能完全解决错误标注的问题.本...

关 键 词:信息抽取  关系抽取  远程监督  动态损失函数

Dynamic Loss Function for Distant Supervision Relation Extraction
PENG Zheng-yang,LV Li,YU Bi-hui. Dynamic Loss Function for Distant Supervision Relation Extraction[J]. Mini-micro Systems, 2021, 0(2): 251-255
Authors:PENG Zheng-yang  LV Li  YU Bi-hui
Affiliation:(University of Chinese Academy of Sciences,Beijing 100049,China;Shenyang Institute of Computing Technology,Chinese Academy of Sciences,Shenyang 110168,China)
Abstract:Relation extraction is an important task in information extraction.Distantsupervision for relation extraction is an efficient method,and it has been successfully applied to large corpus with thousands of relations.However,the wrong labeling problem will hurt the performance of relation extraction.To alleviate this issue,most of the recent existing distant supervision methods get instances by selecting one best sentence or calculating attention weights over the bag of sentences.These methods are not optimal,so the instances still exist problems.In this paper,we propose a novel method to find the instances that might be noise or simple,and reduce their weights in Mini-Batch Gradient Descent by changing the loss function dynamically.Experiments show that our method outperforms the baseline methods on a widely used dataset.
Keywords:information extraction  relation extraction  distant supervision  dynamic loss function
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