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面向方面记忆网络的IT产品细粒度情感分析
引用本文:李晋源,康雁,杨其越,王沛尧,崔国荣.面向方面记忆网络的IT产品细粒度情感分析[J].计算机工程与应用,2020,56(3):159-164.
作者姓名:李晋源  康雁  杨其越  王沛尧  崔国荣
作者单位:云南大学 软件学院,昆明 650500
基金项目:国家自然科学基金;云南省软件工程重点实验室开放基金
摘    要:以用户情感需求为导向进行产品的设计和营销定位已成为研究热点,细粒度的情感挖掘可进一步提高评论分析的效率。提出一种面向方面深度记忆网络模型进行细粒度情感分析。对京东等IT产品评论数据进行爬取,应用依存句法分析方法抽取评论中的方面词,采用基于self-attention机制的深度记忆网络模型实现基于方面的细粒度情感分类。实验结果表明,面向方面深度记忆网络模型在英文数据集上的准确率相比一些经典模型有所提升,同时在京东等40?000条IT的用户评价数据进行情感倾向分析也具有良好的效果。

关 键 词:深度记忆网络  self-attention机制  细粒度情感分析  依存句法分析  情感需求  

Aspect-Based Memory Network for Fine-Grained Product Sentiment Analysis
LI Jinyuan,KANG Yan,YANG Qiyue,WANG Peiyao,CUI Guorong.Aspect-Based Memory Network for Fine-Grained Product Sentiment Analysis[J].Computer Engineering and Applications,2020,56(3):159-164.
Authors:LI Jinyuan  KANG Yan  YANG Qiyue  WANG Peiyao  CUI Guorong
Affiliation:Department of Software, Yunnan University, Kunming 650500, China
Abstract:The design and marketing positioning of products based on the emotional needs of users has become a research hotspot,and fine-grained emotional mining can further improve the efficiency of comment analysis.This paper proposes an aspect-oriented deep memory network model for fine-grained sentiment analysis.The IT product review data of JD.com is crawled,the dependency syntax analysis method is used to extract the aspect words in the comments,the aspect-based fine-grained emotional classification is achieved by using the deep memory network model based on the self-attention mechanism effectively.The experimental results show that the accuracy of the aspect-oriented deep memory network model on the English dataset is improved compared with some classical models.At the same time,in the Jingdong and other 40000 IT user evaluation data for emotional sentiment analysis also has a good effect.
Keywords:deep memory network  self-attention mechanism  fine-grained sentiment analysis  dependency syntax analysis method  emotional needs
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