A Stance Detection Approach Based on Generalized Autoregressive pretrained Language Model in Chinese Microblogs

Zhizhong Su, Yaoyi Xi, Rong Cao, Huifeng Tang, Hangyu Pan
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引用次数: 2

Abstract

Timely identification of Chinese Microblogs users' stance and tendency is of great significance for social managers to understand the trends of online public opinion. Traditional stance detection methods underutilize target information, which affects the detection effect. This paper proposes to integrate the target subject information into a Chinese Microblogs stance detection method based on a generalized autoregressive pretraining language model, and use the advantages of the generalized autoregressive model to extract deep semantics to weaken the high randomness of Microblogs self-media text language and lack of grammar. The impact of norms on text modeling. First carry out microblog data preprocessing to reduce the influence of noise data on the detection effect; then connect the target subject information and the text sequence to be tested into the XLNet network for fine-tuning training; Finally, the fine-tuned XLNet network is combined with the Softmax regression model for stance classification. The experimental results show that the value of the proposed method in the NLPCC2016 Chinese Microblogs detection and evaluation task reaches 0.75, which is better than the existing public model, and the effect is improved significantly.
基于广义自回归预训练语言模型的中文微博姿态检测方法
及时识别中国微博用户的立场和倾向,对于社会管理者了解网络舆情趋势具有重要意义。传统的姿态检测方法对目标信息利用不足,影响了检测效果。本文提出将目标主题信息整合到基于广义自回归预训练语言模型的中文微博立场检测方法中,并利用广义自回归模型提取深层语义的优势,削弱微博自媒体文本语言随机性高和语法缺失的问题。规范对文本建模的影响。首先对微博数据进行预处理,降低噪声数据对检测效果的影响;然后将目标科目信息与待测文本序列连接到XLNet网络中进行微调训练;最后,将经过微调的XLNet网络与Softmax回归模型相结合进行姿态分类。实验结果表明,本文方法在NLPCC2016中文微博检测评价任务中的值达到0.75,优于现有的公共模型,效果显著提高。
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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