Sentiment Infomation based Model For Chinese text Sentiment Analysis

Gen Li, Qiusheng Zheng, Long Zhang, Suzhou Guo, Liyue Niu
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引用次数: 19

Abstract

As an important task of natural language processing, chinese text sentiment analysis aims to analyze the comprehensive sentiment polarity of chinese text. With the emergence of various deep neural network models, sentiment analysis tasks have once again made significant progress. However, these neural network models could not accurately capture sentiment information on sentiment analysis tasks, which leads to their instability. In order to enable the model to explicitly learn the sentiment knowledge in chinese text, this paper proposes a sentiment information based network model(SINM). We use Transfomer encoder and LSTM as model components. With the help of Chinese emotional dictionary, we can automatically find sentiment knowledge in chinese text. In SINM, we designed a hybrid task learning method to learn valuable emotional expressions and predict sentiment tendencies. First of all, SINM needs to learn the sentiment knowledge in the text. Under the auxiliary influence of emotional information, SINM will pay more attention to sentiment information rather than useless information. Experiments on the dataset of ChnSentiCorp and ChnFoodReviews have found that SINM can achieve better performance and generalization ability than most existing methods.
基于情感信息的中文文本情感分析模型
汉语文本情感分析是自然语言处理的一项重要任务,旨在分析汉语文本的综合情感极性。随着各种深度神经网络模型的出现,情感分析任务再次取得了重大进展。然而,这些神经网络模型在情感分析任务中不能准确捕获情感信息,导致其不稳定。为了使模型能够明确地学习中文文本中的情感知识,本文提出了一种基于情感信息的网络模型(SINM)。我们使用transformer编码器和LSTM作为模型组件。在中文情感词典的帮助下,我们可以自动找到中文文本中的情感知识。在SINM中,我们设计了一种混合任务学习方法来学习有价值的情绪表达并预测情绪倾向。首先,SINM需要学习文本中的情感知识。在情绪信息的辅助影响下,SINM会更加关注情绪信息,而不是无用信息。在cnsenticorp和cnfoodreviews数据集上的实验发现,与大多数现有方法相比,SINM可以获得更好的性能和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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