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基于层次注意力机制和门机制的属性级别情感分析
引用本文:冯超,黎海辉,赵洪雅,薛云,唐婧尧.基于层次注意力机制和门机制的属性级别情感分析[J].中文信息学报,2021,35(10):128-136.
作者姓名:冯超  黎海辉  赵洪雅  薛云  唐婧尧
作者单位:1.云南广电网络集团有限公司,云南 昆明 650100;
2.深圳职业技术学院 工业中心,广东 深圳 518055;
3.华南师范大学 物理与电信工程学院,广东 广州 510006
基金项目:深圳市科创委知识创新基础研究项目(JCYJ20160527172144272);广东省教育厅特色创新项目(2019GKTSCX090,2018KTSCX049);全国统计科学研究项目(2016LY98);广州市科技计划项目(202102080258, 201903010013)
摘    要:近年来,作为细粒度的属性级别情感分析在商业界和学术界受到越来越多的关注,其目的在于识别一个句子中多个属性词所对应的情感极性。目前,在解决属性级别情感分析问题的绝大多数工作都集中在注意力机制的设计上,以此突出上下文和属性词中不同词对于属性级别情感分析的贡献,同时使上下文和属性词之间相互关联。该文提出使用层次注意力机制和门机制处理属性级别情感分析任务,在得到属性词的隐藏状态之后,通过注意力机制得到属性词新的表示,然后利用属性词新的表示和注意力机制进一步得到上下文新的表示,层次注意力机制的设计使得上下文和属性词的表达更加准确;同时通过门机制选择对属性词而言上下文中有用的信息,以此丰富上下文的表达,在SemEval 2014 Task 4和Twitter数据集上的实验结果表明了该文提出模型的有效性。

关 键 词:属性级别  情感分析  注意力机制  门机制  
收稿时间:2021-02-23

Aspect-level Sentiment Analysis Based on Hierarchical Attention and Gate Networks
FENG Chao,LI Haihui,ZHAO Hongya,XUE Yun,TANG Jingyao.Aspect-level Sentiment Analysis Based on Hierarchical Attention and Gate Networks[J].Journal of Chinese Information Processing,2021,35(10):128-136.
Authors:FENG Chao  LI Haihui  ZHAO Hongya  XUE Yun  TANG Jingyao
Affiliation:1.Yunnan Radio Broadcasting Television Networking Group CO., Ltd, Kunming, Yunnan 650100, China;2.Industrial Centre, Shenzhen Polytechnic, Shenzhen, Guangdong 518055, China;3.School of Physics and Telecommunication Engineering, South China Normal University, Guangzhou, Guangdong 510006, China
Abstract:As a fine-grained task, aspect-level sentiment analysis is aimed at identifying the sentiment polarity corresponding to the specific aspect in a sentence. Most existing works are focused on the design of attention network to highlight the different contributions of words in context and associate the context and the aspect properly. In this paper, we put forward to combine the hierarchical attention and gate networks to process aspect-level sentiment analysis task. we obtain the representation of the context through the attention between the context and a new representation of the aspect weighted by the context. At the same time, the useful information in the context is selected through the gate networks to enrich the representation of the context. The design of hierarchical attention gate networks is to make the representation of the context and the aspect more accurate. The experimental results on the Sem-Eval 2014 Task4 and Twitter show the validity of the model.
Keywords:aspect-level  sentiment analysis  attention networks  gate networks  
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