Meme Detection of Journalists from Social Media by Using Data Mining Techniques

Sajawal Khan, Adeela Ashraf, Muhammad Shoaib, Muhammad Iftikhar, I. Siddiq, Muhammad Dawood Khan, Abdullah Faisal
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Abstract

With regard to today's social media networks, memes have become central. Share a million memes per second on different social media. The detection of memes is a very concentrated and demanding subject in the current field of research. Share about a million memes on various social media. Today's social media (What's App, Twitter, and Facebook) is widespread around the world. Since people in all countries are heavily used, use a set of social media application data (Twitter). As social media has an enormous amount of data overall the world. That will use that data set of Twitter for meme detection of journalists in Pakistan. So, this is done by getting data set from social media (Twitter, What’s App, and Facebook) by using their authenticated APIs. For this analysis use some opinion mining techniques and sentiment analysis like the statistical descriptive and content analysis. In our society, it is the better way to analysis about any journalists because social media can provide very huge amounts of data about any journalist which is true or false but I can make approximate correct perceptions by using sentiment analysis and text mining techniques. It will provide highly wanted and hidden characteristics and perceptions for searchers and demanding people about journalists. Finally use for sentiment analysis by using Python.
基于数据挖掘技术的社交媒体记者模因检测
就当今的社交媒体网络而言,表情包已经成为核心。在不同的社交媒体上每秒分享一百万个表情包。模因的检测是当前研究领域中一个非常集中和要求很高的课题。在各种社交媒体上分享大约一百万个表情包。今天的社交媒体(What's App、Twitter和Facebook)在世界各地广泛传播。由于所有国家的人都被大量使用,所以使用一套社交媒体应用数据(Twitter)。因为社交媒体在全球范围内拥有大量的数据。这将使用推特的数据集来检测巴基斯坦记者的表情包。所以,这是通过使用他们的认证api从社交媒体(Twitter, What 's App和Facebook)获取数据集来完成的。在此分析中使用了一些观点挖掘技术和情感分析,如统计描述分析和内容分析。在我们的社会中,这是分析任何记者的更好方式,因为社交媒体可以提供关于任何记者的大量数据,这些数据是真的还是假的,但我可以通过使用情感分析和文本挖掘技术做出近似正确的感知。它将为搜索者和对记者有要求的人提供非常需要和隐藏的特征和看法。最后使用Python进行情感分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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