Multi-modal and Metadata Capture Model for Micro Video Popularity Prediction
Jiacheng Lu, Mingyuan Xiao, Weijian Wang, Yuxin Du, Zhengze Wu, Cheng, Hua

TL;DR
This paper introduces the 3M model, a multi-modal approach that combines video, audio, descriptions, and metadata with retrieval and semi-supervised techniques to improve short video popularity prediction accuracy.
Contribution
The paper presents a novel multi-modal prediction model that integrates various data sources and employs advanced retrieval and semi-supervised methods for enhanced accuracy.
Findings
Outperforms traditional tag-based algorithms on validation data
Significantly improves prediction accuracy over existing methods
Provides practical tools for short video popularity analysis
Abstract
As short videos have become the primary form of content consumption across various industries, accurately predicting their popularity has become key to enhancing user engagement and optimizing business strategies. This report presents a solution for the 2024 INFORMS Data Mining Challenge, focusing on our developed 3M model (Multi-modal and Metadata Capture Model), which is a multi-modal popularity prediction model. The 3M model integrates video, audio, descriptions, and metadata to fully explore the multidimensional information of short videos. We employ a retriever-based method to retrieve relevant instances from a multi-modal memory bank, filtering similar videos based on visual, acoustic, and text-based features for prediction. Additionally, we apply a random masking method combined with a semi-supervised model for incomplete multi-modalities to leverage the metadata of videos.…
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Taxonomy
TopicsComputational and Text Analysis Methods · Sentiment Analysis and Opinion Mining
