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Rumor Detect: Detection of Rumors in Twitter Using Convolutional Deep Tweet Learning Approach

机译:谣言检测:使用卷积的深度推文学习方法检测Twitter中的谣言

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Nowadays social media is a common platform to exchange ideas, news, and opinions as the usage of social media sites is increasing exponentially. Twitter is one such micro-blogging site and most of the early update tweets are unverified at the time of posting leading to rumors. The spread of rumors in certain situations make the people panic. Therefore, early detection of rumors in Twitter is needed and recently deep learning approaches have been used for rumor detection. The lacuna in the existing rumor detection systems is the curse of dimensionality problem in the extracted features of Twitter tweets which leads to high detection time. In this paper, the issue of dimensionality is addressed and a solution is proposed to overcome the same. The detection time could be reduced if the relevant features are only considered for rumor detection. This is captured by the proposed approach which extracts the features based on tweet, reduces the dimension of tweet features using convolutional neural network, and learns using fully connected deep network. Experiments were conducted on events in Twitter PHEME dataset and it is evident that the proposed convolutional deep tweet learning approach yields promising results with less detection time compared to the conventional deep learning approach.
机译:如今,社交媒体是交换想法,新闻和意见的共同平台,因为社交媒体网站的使用是呈指数增长的。 Twitter是一个这样的微博博站点,大部分早期更新推文在发布导致谣言时未经验证。在某些情况下谣言的传播使人们恐慌。因此,需要在推特中的谣言检测,并且最近已经用于谣言检测。现有谣言检测系统中的LACUNA是Twitter推文的提取特征中的维数问题的诅咒,这导致了高检测时间。在本文中,解决了维度问题,并提出了解决方案来克服该问题。如果仅考虑有关谣言检测,则可以减少检测时间。这是通过提取基于推文的特征的提出方法捕获,减少了使用卷积神经网络的推文特征的维度,并使用完全连接的深网络了解。在Twitter Pheme数据集中进行了实验,很明显,拟议的卷积深度推文学习方法与传统的深度学习方法相比,较少的检测时间产生了有希望的结果。

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