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PREP: Pre-training with Temporal Elapse Inference for Popularity Prediction

Published: 16 August 2022 Publication History

Abstract

Predicting the popularity of online content is a fundamental problem in various applications. One practical challenge takes roots in the varying length of observation time or prediction horizon, i.e., a good model for popularity prediction is desired to handle various prediction settings. However, most existing methods adopt a separate training paradigm for each prediction setting and the obtained model for one setting is difficult to be generalized to others, causing a great waste of computational resources and a large demand for downstream labels. To solve the above issues, we propose a novel pre-training framework for popularity prediction, namely PREP, aiming to pre-train a general representation model from the readily available unlabeled diffusion data, which can be effectively transferred into various prediction settings. We design a novel pretext task for pre-training, i.e., temporal elapse inference for two randomly sampled time slices of popularity dynamics, impelling the representation model to learn intrinsic knowledge about popularity dynamics. Experimental results conducted on two real datasets demonstrate the generalization and efficiency of the pre-training framework for different popularity prediction task settings.

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Cited By

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  • (2023)Key Factor Analysis of Influencer Popularity based on Adjective and Emotion in Twitter User Opinions2023 IEEE International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT)10.1109/WI-IAT59888.2023.00041(263-267)Online publication date: 26-Oct-2023

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Published In

cover image ACM Conferences
WWW '22: Companion Proceedings of the Web Conference 2022
April 2022
1338 pages
ISBN:9781450391306
DOI:10.1145/3487553
This work is licensed under a Creative Commons Attribution International 4.0 License.

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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 16 August 2022

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Author Tags

  1. Popularity Prediction
  2. Pre-training
  3. Temporal Elapse Inference

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  • Poster
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  • Refereed limited

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WWW '22
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WWW '22: The ACM Web Conference 2022
April 25 - 29, 2022
Virtual Event, Lyon, France

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Overall Acceptance Rate 1,899 of 8,196 submissions, 23%

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View all
  • (2023)Key Factor Analysis of Influencer Popularity based on Adjective and Emotion in Twitter User Opinions2023 IEEE International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT)10.1109/WI-IAT59888.2023.00041(263-267)Online publication date: 26-Oct-2023

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