预测社会内容流行程度的常用方法综述

A. Shahid, M. Akram, Anum Abdul Salam, Jahan Zeb
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引用次数: 0

摘要

社交媒体图片的命运取决于它们的受欢迎程度:一些上传的图片/视频在人们中获得了很多名声,而另一些则完全没有被注意到。为什么会这样呢?这篇调查论文解决了这个问题,并讨论了与图像/视频相关的所有特征,这些特征导致了它在人们中的流行。这些图片/视频中一定有一些共同的特征,如果我们了解了这些特征,那么我们就可以在将媒体上传到社交媒体平台之前预测媒体是否会成名。对一个形象的参与程度的预测可以被公司用来改进他们的营销策略。这对于明智地瞄准正确的受众,有效地管理资源和做出战略决策非常有用。在这篇调查论文中,讨论了过去研究人员使用的不同流行方法,他们用来预测特定天数的图像受欢迎程度分数的技术以及他们使用的特征类型。这篇调查论文表明,与图像上下文相关的特征优于与图像内容相关的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey On Prevalent Approaches To Predict The Popularity Of Social Content
The destiny of social media images depends upon their popularity: some of the uploaded images/videos get a lot of fame among people while others just get completely unnoticed. Why is this so? This survey paper addresses this question and discusses all the features related to an image/video that are responsible for its popularity among people. Their must be some common features in the images/videos that gets fame, if we get to learn the pattern or features that are responsible for the fame then we can predict if media will get fame or not before actually uploading the media on social media platforms. The prediction of engagement level for an image can be used by companies to improve their marketing strategies. This can be very useful to target the right audience sagaciously, manage the resources efficiently and make strategical decisions. In this survey paper, different prevalent methodologies are discussed that are used by researchers in the past, the techniques they have used to predict the popularity score of an image for a specific number of days and the types of features they have used. This survey paper manifest that the features related to the image context outperforms the features related to image content.
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