结合LSTM和CNN进行新闻文章级宣传检测

Dimas Sony Dewantara, I. Budi
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引用次数: 1

摘要

宣传是一种传播信息的方式,不管信息是否真实。宣传通常使用偏见来模糊对宣传对象的理解。新闻文章是一种经常用于传播宣传的媒介。新闻文章中以宣传检测的形式进行文本分类,是防止宣传传播的一项重要工作。长短期记忆(LSTM)是递归神经网络(RNN)的一种变体,已广泛应用于文本分类。然而,LSTM在通过词序从信息中提取上下文时存在高偏差的倾向。卷积神经网络(CNN)在文本分析中可以通过使用卷积层进行重要的特征提取,但在上下文提取中表现较弱。本研究试图比较LSTM、CNN以及两者结合的方法在新闻文章中以宣传检测的形式进行文本分类。结果表明,各方法的结合不仅提高了分类性能,而且缩短了所需的运行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combination of LSTM and CNN for Article-Level Propaganda Detection in News Articles
Propaganda is a way of disseminating information, regardless of whether the information is true or not. Propaganda usually uses bias in obscuring the understanding of the propaganda targets. News articles are one of the media that is often used in spreading propaganda. Text classification in the form of propaganda detection in news articles is a crucial thing to do in relation to preventing the spread of the propaganda. Long Short-Term Memory (LSTM) is a variant of the Recurrent Neural Network (RNN) which has been widely used in text classification. However, LSTM has a weakness in the form of a tendency to high bias in extracting context from information through word order. Convolutional Neural Network (CNN) in text analysis can perform important feature extraction through the use of convolutional layers but is weak when assigned to context extraction. This research tries to compare LSTM, CNN and the combination of the two methods in text classification in the form of propaganda detection in news articles. The combination of each method is proved to improve classification performance and also shorten the required running time.
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