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Poster

SMTPD: A New Benchmark for Temporal Prediction of Social Media Popularity

Yijie Xu · Bolun Zheng · Wei Zhu · Hangjia Pan · Yuchen Yao · Ning Xu · An-An Liu · Quan Zhang · Chenggang Yan


Abstract:

Social media popularity prediction task aims to predict the popularity of posts on social media platforms, which has a positive driving effect on application scenarios such as content optimization, digital marketing and online advertising. Though many studies have made significant progress, few of them pay much attention to the integration between popularity prediction with temporal alignment. In this paper, with exploring YouTube’s multilingual and multi-modal content, we construct a new social media temporal popularity prediction benchmark, namely SMTPD, and suggest a baseline framework for temporal popularity prediction. Through data analysis and experiments, we verify that temporal alignment and early popularity play crucial roles in social media popularity prediction for not only deepening the understanding of temporal dynamics of popularity in social media but also offering a suggestion about developing more effective prediction models in thisfield.

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