Recognizing Fake News in Social Media with Deep Learning: A Systematic Review

R. Katarya, Mahboob Massoudi
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引用次数: 8

Abstract

In the last several years' social media has become a pivotal open communication model for connecting people through several platforms and in this generation, social media networks have become extremely popular, people have become more in touch with social media networks. They are using online social networks to keep in touch with other people, relatives, and friends. In the past, people were using verbal and non-verbal networks to share their ideas, opinion, feeling, and emotions with other individuals. Nowadays, people are using social media networks to share their ideas, opinions, and feeling. Also, access to news is effortless and comfort with the using of social media networks which in the past people had to use newspapers and magazines to get aware of the world situations, but now they are using from social media networks to read the latest news just in a minute after a bad or good news occurred in the world.Nowadays, people are addicted to reading the news by using social media networks, which is the easiest way for them, but one issue that sometimes decreases the popularity of social media is dealing with fake news. Here the main work is to seek the best outcome to find and detect fake and misleading news from social media networks. In addition to this, various research articles have pointed out to our research questions that are noticed in section three.
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用深度学习识别社交媒体中的假新闻:系统回顾
在过去的几年里,社交媒体已经成为一种关键的开放式交流模式,通过几个平台将人们联系起来,在这一代,社交媒体网络已经变得非常流行,人们越来越多地接触社交媒体网络。他们使用在线社交网络与其他人、亲戚和朋友保持联系。在过去,人们使用语言和非语言网络与他人分享他们的想法、观点、感觉和情绪。如今,人们正在使用社交媒体网络来分享他们的想法、观点和感受。此外,使用社交媒体网络获取新闻是毫不费力和舒适的,过去人们不得不使用报纸和杂志来了解世界局势,但现在他们正在使用社交媒体网络在世界上发生坏消息或好消息后的一分钟内阅读最新的新闻。如今,人们沉迷于通过使用社交媒体网络来阅读新闻,这对他们来说是最简单的方式,但有时会降低社交媒体受欢迎程度的一个问题是处理假新闻。这里的主要工作是寻求最佳结果,以发现和检测来自社交媒体网络的虚假和误导性新闻。除此之外,各种研究文章都指出了我们在第三部分要注意的研究问题。
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