Despite the increasingly important role played by image memes, we do not yet have a solid understanding of the elements that might make a meme go viral on social media. In this paper, we investigate what visual elements distinguish image memes that are highly viral on social media from those that do not get re-shared, across three dimensions: composition, subjects, and target audience. Drawing from research in art theory, psychology, marketing, and neuroscience, we develop a codebook to characterize image memes, and use it to annotate a set of 100 image memes collected from 4chan's Politically Incorrect Board (/pol/). On the one hand, we find that highly viral memes are more likely to use a close-up scale, contain characters, and include positive or negative emotions. On the other hand, image memes that do not present a clear subject the viewer can focus attention on, or that include long text are not likely to be re-shared by users. We train machine learning models to distinguish between image memes that are likely to go viral and those that are unlikely to be re-shared, obtaining an AUC of 0.866 on our dataset. We also show that the indicators of virality identified by our model can help characterize the most viral memes posted on mainstream online social networks too, as our classifiers are able to predict 19 out of the 20 most popular image memes posted on Twitter and Reddit between 2016 and 2018. Overall, our analysis sheds light on what indicators characterize viral and non-viral visual content online, and set the basis for developing better techniques to create or moderate content that is more likely to catch the viewer's attention.
翻译:尽管图像Memes 扮演了越来越重要的作用,但我们还没有真正理解使社交媒体中Meme 变得充满病毒的元素。 在本文中,我们调查了在社交媒体中高度活跃的图像Memes与那些没有被重新分享的图像Memes之间的哪些视觉元素区别:组成、主题和目标受众。在艺术理论、心理学、营销和神经科学的研究中,我们开发了一个代码手册来描述图像Memes,并用它来说明从4chan的政治不正确的董事会(/Pol/)中收集的100个中度图像Memes。一方面,我们发现高病毒Memes更有可能使用近距离的缩放比例,包含字符,并包含积极或消极的情绪。另一方面,我们根据艺术理论、心理学、营销和神经科学的研究,我们开发了一个包含长文本的代码来描述图像Memus,我们训练了机器学习模型来区分那些可能变得病毒化的图像Memes 和那些不可能被重新分享的图像Memes, 获取到我们最接近的在线的 A0866 和最接近的图像的图像信息网络上,我们所设定的图像流的图像流的图像可以显示的图像数据。我们所设定的图像可以用来显示的图像信息在2018点上,我们所标定的图像中,我们所标定的图像和最接近的图像流的图像上我所标定的图像数据可以用来在20/直路。