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OmniTrend: Content-Context Modeling for Scalable Social Popularity Prediction

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Predicting social media popularity requires understanding both the intrinsic appeal of content and the external context that determines how it is exposed to users. Existing methods focus on content signals but do not separate them from exposure-related patterns, which causes the learned representations to absorb platform-specific visibility effects and weakens both interpretability and cross-platform transfer. This paper introduces OmniTrend, a unified framework that models popularity as the joint outcome of content attractiveness and contextual exposure. The content module learns cross-modal representations from visual, audio, and textual cues to quantify intrinsic appeal, while the context module estimates exposure from exogenous signals such as posting time, author activity, topical trends, and retrieval-based neighborhood statistics. OmniTrend learns separate predictors for content attractiveness and contextual exposure and integrates them in the final popularity estimate, which makes the role of each factor explicit and supports robust transfer across image and video platforms.

Liliang Ye, Guiyi Zeng, Yunyao Zhang, Yi-Ping Phoebe Chen, Junqing Yu, Zikai Song• 2026

Related benchmarks

TaskDatasetResultRank
Social Media Popularity PredictionSMPD-Image (test)
MSE3.06
12
Social Media Popularity PredictionICIP (test)
MSE1.7
12
Video Social Media Popularity PredictionMicroLens
MSE1.07
10
Video Social Media Popularity PredictionSMPD-Video
MSE3.92
10
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