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The evolution of political memes: Detecting and characterizing internet memes with multi-modal deep learning

机译:政治模因的演变:通过多模式深度学习检测和表征网络模因

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Combining humor with cultural relevance, Internet memes have become an ubiquitous artifact of the digital age. As Richard Dawkins described in his book The Selfish Gene, memes behave like cultural genes as they propagate and evolve through a complex process of 'mutation' and 'inheritance'. On the Internet, these memes activate inherent biases in a culture or society, sometimes replacing logical approaches to persuasive argument. Despite their fair share of success on the Internet, their detection and evolution have remained understudied. In this research, we propose and evaluate Meme-Hunter, a multi-modal deep learning model to classify images on the Internet as memes vs non-memes, and compare this to uni-modal approaches. We then use image similarity, meme specific optical character recognition, and face detection to find and study families of memes shared on Twitter in the 2018 US Mid-term elections. By mapping meme mutation in an electoral process, this study confirms Richard Dawkins' concept of meme evolution.
机译:网络幽默因将幽默与文化相关性结合在一起,已成为数字时代无处不在的人工产物。正如理查德·道金斯(Richard Dawkins)在他的《自私的基因》(The Selfish Gene)一书中所描述的那样,模因在通过“突变”和“传承”的复杂过程进行传播和进化时,其行为就像文化基因一样。在互联网上,这些模因激发了文化或社会中的固有偏见,有时取代了有说服力的论点的逻辑方法。尽管他们在互联网上取得了相当大的成功,但是他们的发现和发展仍处于研究不足状态。在这项研究中,我们提出并评估了Meme-Hunter,这是一种多模式深度学习模型,用于将Internet上的图像分类为模因与非模因,并将其与单模方法进行比较。然后,我们使用图像相似性,模因特定的光学字符识别和面部检测来查找和研究在2018年美国中期选举中在Twitter上共享的模因族。通过在选举过程中绘制模因突变图,本研究证实了理查德·道金斯的模因进化概念。

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