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基于跨语言图神经网络模型的属性级情感分类
引用本文:鲍小异,姜晓彤,王中卿,周国栋. 基于跨语言图神经网络模型的属性级情感分类[J]. 软件学报, 2023, 34(2): 676-689
作者姓名:鲍小异  姜晓彤  王中卿  周国栋
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(62076175,61976146);江苏省双创博士计划
摘    要:目前,在属性级情感分类任务上较为成熟的有标注数据集均为英文数据集,而有标注的中文数据集较少.为了能够更好地利用规模庞大但却缺乏成熟标注数据的中文语言数据集,针对跨语言属性级情感分类任务进行了研究.在跨语言属性级情感分类中,一个核心问题为如何构建不同语言的文本之间的联系.针对该问题,在传统的单语言情感分类模型的基础上,使用图神经网络模型对跨语言词-词、词-句之间的关系信息进行建模,从而有效地刻画两种语言数据集之间的联系.通过构建单语词-句之间的联系和双语词-句之间的联系,将不同语言的文本关联起来,并利用图神经网络进行建模,从而实现利用英文数据集预测中文数据集的跨语言神经网络模型.实验结果表明:相较于其他基线模型,所提出的模型在F1值指标上有着较大的提升,从而说明使用图神经网络建立的模型能够有效地应用于跨语言的应用场.

关 键 词:图神经网络  属性级情感分析  跨语言
收稿时间:2021-10-08
修稿时间:2022-01-09

Cross-lingual Aspect-level Sentiment Classification with Graph Neural Network
BAO Xiao-Yi,JIANG Xiao-Tong,WANG Zhong-Qing,ZHOU Guo-Dong. Cross-lingual Aspect-level Sentiment Classification with Graph Neural Network[J]. Journal of Software, 2023, 34(2): 676-689
Authors:BAO Xiao-Yi  JIANG Xiao-Tong  WANG Zhong-Qing  ZHOU Guo-Dong
Affiliation:School of Computer Science and Technology, Soochow University, Suzhou 215006, China
Abstract:Most of the mature labeled dataset of aspect-level sentiment analysis are in English, it is quite rare in some low-resource language such as Chinese. For the sake of utilizing the vast but unlabeled Chinese aspect-level sentiment classification dataset, this study works on cross-lingual aspect-level sentiment classification. Nevertheless, the most central and difficult problem in cross-lingual mission is how to construct the connection between the documents in two languages. In order to solve this problem, this study proposes a method using graph neural network structure to model the connection of multilingual word-to-document and word-to-word, which could effectively model the interaction between the high-resource language (source language) and low-resource language (target language). The connections include multilingual word-to-document connection and monolingual word-to-document connection are constructed to tie the source language data and target language data, which are modeled by graph neural network to realize using English labeled dataset as trainset to predict Chinese dataset. Compared with other baseline model, the proposed model achieves a higher performance in F1-score, which indicates that the presented work does contributing to the cross-lingual aspect-level sentiment classification.
Keywords:graph neural network  aspect level sentiment analysis  cross-lingual classification
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