基于贝叶斯推理的海湾辩证法阿拉伯语推文恶意数据发现

Dema Alorini, D. Rawat
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引用次数: 0

摘要

书面交流的最大领域之一是在线领域。今天,社交媒体已经被不同年龄、群体和国籍的人广泛使用。在海湾地区,Twitter是最受欢迎的社交网站之一。推文不仅包含观点、新闻和对话信息,还包含虚假信息、恶意链接和其他类型的网络威胁等恶意内容。因此,需要首先识别这些推文,以便发现它是否是恶意的。海湾地区的推文不是用现代标准语言(MSA)书写的,而现代标准语言在大多数翻译系统中被用作阿拉伯语来源。在本文中,我们首先提出一个海湾辩证阿拉伯语(Gulf DA)到英语的数据集,以创建一个海湾知识库(GulfKB)。然后,我们使用基于Bayesian推理的基于GulfKB模型的推理来发现恶意内容和可疑用户。我们用数值结果评估了所提出的方法。我们的方法给出了91%的准确性,并优于现有的方法在艺术文献的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Reasoning Based Malicious Data Discovery on Gulf-Dialectical Arabic Tweets
One of the largest domains for written communication is the on-line domain. Today, social media has become widely used among people of different ages, groups and nationalities. In the Gulf region, Twitter is one of popular social networking sites. Tweets do not only contain information about opinions, news, and conversations, but also contain malicious content such as false information, malicious links, and other types of cyber threats. Therefore, those tweets need to be identified first in order to discover whether it is malicious or not. Tweets from the Gulf region are not written in the Modern Standard Language (MSA), which is used in most translation systems as an Arabic source. In this paper, we first present a Gulf Dialectical Arabic (Gulf DA) to English dataset in order to create a Gulf Knowledge Base (GulfKB). Then, we use the GulfKB model-based reasoning that is based on Bayesian inference to uncover malicious content and suspicious users. We have evaluated the proposed approach using numerical results. Our approach gives accuracy of 91% and outperforms the existing approaches in the state of art literature.
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