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句子级状态下LSTM对谣言鉴别的研究
引用本文:庞源焜,张宇山.句子级状态下LSTM对谣言鉴别的研究[J].计算机应用研究,2022,39(4):1064-1070.
作者姓名:庞源焜  张宇山
作者单位:广东财经大学 统计与数学学院,广州510320
基金项目:国家自然科学基金资助项目(61876207);;广东省基础与应用基础研究基金资助项目(2020A1515011405);
摘    要:针对目前网络谣言鉴别研究,文本学习往往会受到文本读入内容过长导致长距离信息丢失或者是为了捕捉局部信息而依赖于长期输入表示从而影响鉴别结果。通过提出S-LSTM(sentence-state long short term memory networks)算法在保留字词节点信息的同时对句子进行聚合,从而保留句子的局部和全局信息,进而提升网络谣言鉴别的精确性和有效性。与TextGCN、Bi-GCN、Att_BiLSTM等几种深度网络谣言鉴别方法的对比中,该方法在两组模型测试上的准确率分别达到78.87%、90.30%,均取得了不错的效果,在考虑句子全局信息的情况下,其对谣言鉴别效果会有不错的提升。

关 键 词:谣言鉴别  S-LSTM  图神经网络  文本分类
收稿时间:2021/8/31 0:00:00
修稿时间:2022/3/15 0:00:00

Rumor identification research based on sentence-state LSTM
pangyuankun and zhangyushan.Rumor identification research based on sentence-state LSTM[J].Application Research of Computers,2022,39(4):1064-1070.
Authors:pangyuankun and zhangyushan
Affiliation:Lewis Pong,
Abstract:Aiming at the current research on the identification of online rumors, text learning is often affected by the long-distance information loss due to the long-distance reading of the text or the long-term input representation in order to capture local information, which affects the identification result. This paper proposed that the S-LSTM algorithm was used to aggregate sentences while retaining the word node information, thereby retaining the local and global information of the sentence, thereby improving the accuracy and effectiveness of network rumors identification. In comparison with several deep network rumor identification methods such as TextGCN, Bi-GCN, and Att_BiLSTM, the accuracy of this method on the two sets of model tests reaches 78.87% and 90.30%, respectively, and achieves good results. The result proves that the rumor identification effect can be improved in the case of considering the global information of the sentence.
Keywords:rumor identification  S-LSTM  graph neural network  text classification
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