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A Hybrid Approach for Identifying Authentic News Using Deep Learning Methods on Popular Twitter Threads

机译:一种混合方法,用于在流行推特线程上使用深度学习方法识别真实新闻

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Now a day’s social networks have become a crucial part and parcel in our day to day life. The gradual rise of the amount of information available in different kind of social media is the sole reason behind this impact. However, having the scope of accessing this huge amount of information so easily has made it complicated to find the contrast between counterfeit and an actual news. Some group of people often grabs this chance to share manipulated information to a huge number of people with an intent of destroying the image of any people, person or any specific groups. This results in creating such agendas which creates havoc to social welfare and peacefulness. Due to this fast circulation in such a small amount of time, it is almost impossible to manually detect the sources and authenticity of fake news effectively and efficiently. This is where computational and automated methods come handy to detect such kind of act in social media. We can decide whether any piece of text is either fabricated or not based on previously experienced real or fabricated news. In this study our contribution has three principal parts. First, we introduce our manually collected dataset and its details, then we go on to use some significant concepts of Natural Language Processing and Machine Learning models to train our model and lastly, we provided some comparison with the existing algorithms from different machine learning techniques which proves the superiority of our proposed model. Our model achieved a highest accuracy of 80% using Bayesian Classifier and 77% using a Hybrid Long Short-Term Memory Neural Network Architecture.
机译:现在,一天的社交网络在我们日常生活中成为一个关键的部分和包裹。不同类型社交媒体可用的信息量的逐步增加是这种影响背后的唯一原因。然而,具有访问这一大量信息的范围,因此很容易使其变得复杂,以找到假冒和实际新闻之间的对比。有些人经常抓住这个机会,将操纵信息分享到大量的人,意图摧毁任何人,人或任何特定群体的形象。这导致创造了造成社会福利与和平的议程。由于这种快速的循环在如此少的时间内,几乎不可能有效和有效地手动检测假新闻的来源和真实性。这是计算和自动化方法派上派出易于检测社交媒体中这种行为的地方。我们可以根据以前经历的真实或制作的新闻来决定是否制造任何文本。在这项研究中,我们的贡献有三个主要部分。首先,我们介绍了手动收集的数据集及其详细信息,然后我们继续使用自然语言处理和机器学习模型的一些重要概念来培训我们的模型,最后,我们与来自不同机器学习技术的现有算法进行了一些比较证明了我们提出的模型的优势。我们的模型使用贝叶斯分类器和77%实现了80%的最高精度,使用混合长短短期内存神经网络架构。

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