在线文本中假新闻检测的深度学习算法

Sherry Girgis, Eslam Amer, M. Gadallah
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引用次数: 83

摘要

假新闻的传播是一种社会现象,在个人之间的社会层面普遍存在,也通过Facebook和Twitter等社交媒体传播。我们感兴趣的假新闻是社交媒体上众多欺骗行为中的一种,但它更重要,因为它是出于误导人们的不诚实意图而创造的。我们关注这个问题,因为我们注意到这一现象最近通过社会传播的手段改变了社会和人民的进程,也改变了他们的观点,例如,在一些阿拉伯国家的革命期间出现了一些虚假新闻,导致缺乏真相,煽动民意,新闻的虚假也是特朗普在总统选举中获胜的因素之一。所以我们决定面对和减少这种现象,这仍然是选择我们大多数决定的主要因素。检测假新闻的技术多种多样,别出心裁,而且常常令人兴奋。在本文中,我们的目标是构建一个分类器,该分类器可以仅根据其内容来预测一条新闻是否为假,从而通过RNN技术模型(vanilla, GRU)和lstm从纯粹的深度学习角度来解决问题。我们将通过将结果应用于我们使用的数据集LAIR来显示结果的差异和分析。我们发现结果很接近,但GRU是我们结果中最好的,达到了(0.217),其次是LSTM(0.2166),最后是香草(0.215)。由于这些结果,我们将寻求通过在同一数据集上应用GRU和CNN技术之间的混合模型来提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Algorithms for Detecting Fake News in Online Text
Spreading of fake news is a social phenomenon that is pervasive at the social level between individuals, and also through social media such as Facebook and Twitter. Fake news that we are interested in is one of many kinds of deception in social media, but it’s more important one as it is created with dishonest intention to mislead people. We are concerned about this issue because we have noticed that this phenomenon has recently caused through the means of social communication to change the course of society and peoples and also their views, for example, during revolutions in some Arab countries have emerged some false news that led to the absence of truth and stirs up public opinion and also fake of news is one of the factors Trump successes in the presidential election. So we decided to face and reduce this phenomenon, which is still the main factor to choose most of our decisions. Techniques of fake news detection varied, ingenious, and often exciting. In this paper our objective is to build a classifier that can predict whether a piece of news is fake or not based only its content, thereby approaching the problem from a purely deep learning perspective by RNN technique models (vanilla, GRU) and LSTMs. We will show the difference and analysis of results by applying them to the dataset that we used called LAIR. We found that the results are close, but the GRU is the best of our results that reached (0.217) followed by LSTM (0.2166) and finally comes vanilla (0.215). Due to these results, we will seek to increase accuracy by applying a hybrid model between the GRU and CNN techniques on the same data set.
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