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基于多通道BERT的跨语言属性级情感分类方法
引用本文:陈潇,王晶晶,李寿山,韦思义,张啸宇,陈强.基于多通道BERT的跨语言属性级情感分类方法[J].中文信息学报,2022,36(2):121-128.
作者姓名:陈潇  王晶晶  李寿山  韦思义  张啸宇  陈强
作者单位:苏州大学 计算机科学与技术学院,江苏 苏州 215006
基金项目:国家自然科学基金(62006166,62076175,62076176);中国博士后科学基金(2019M661930);江苏省高校优势学科建设工程自主项目
摘    要:属性级情感分类是情感分析领域中一个细粒度的情感分类任务,旨在判断文本中针对某个属性的情感极性.现有的属性级情感分类方法大多是使用同一种语言的标注文本进行模型的训练与测试,而现实中很多语言的标注文本规模并不足以训练一个高性能的模型,因此跨语言属性级情感分类是一个亟待解决的问题.跨语言属性级情感分类是指利用源语言文本的语义...

关 键 词:多通道  跨语言  属性级情感分类

Cross-lingual Aspect Sentiment Classification Based on Multi-channel BERT
CHEN Xiao,WANG Jingjing,LI Shoushan,WEI Siyi,ZHANG Xiaoyu,CHEN Qiang.Cross-lingual Aspect Sentiment Classification Based on Multi-channel BERT[J].Journal of Chinese Information Processing,2022,36(2):121-128.
Authors:CHEN Xiao  WANG Jingjing  LI Shoushan  WEI Siyi  ZHANG Xiaoyu  CHEN Qiang
Affiliation:School of Computer Science and Technology, Soochow University, Suzhou, Jiangsu 215006, China
Abstract:Aspect sentiment classification is a fine-grained sentiment classification task in the field of sentiment analysis, which aims to judge the sentiment polarity of a certain aspect in a text. Cross-language aspect sentiment classification refers to mining and classifying aspect sentiment contained in target language text by using semantic and sentimental information provided by source language text, which is more challenging than monolingual aspect sentiment classification task. This paper proposes a multi-channel BERT model (Multi-BERT) for cross-lingual aspect sentiment classification. This approach employs different BERT models to learn the semantic features and beyond different grammatical features in source and target language text. Then, the text representation learned by multiple BERT models are interacted with each other, in order to mine more sufficient aspect sentiment information and improve the performance of cross-lingual aspect sentiment classification.
Keywords:multi-channel  cross-lingual  aspect sentiment classification  
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