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Main Authors: Xue, Haoning, Zhang, Jingwen, Wang, Xiaohui, Kim, Diane Dagyong, Song, Yunya
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.19995
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author Xue, Haoning
Zhang, Jingwen
Wang, Xiaohui
Kim, Diane Dagyong
Song, Yunya
author_facet Xue, Haoning
Zhang, Jingwen
Wang, Xiaohui
Kim, Diane Dagyong
Song, Yunya
contents The contemporary media landscape is characterized by sensational short videos. While prior research examines the effects of individual multimodal features, the collective impact of multimodal features on viewer engagement with short videos remains unknown. Grounded in the theoretical framework of Message Sensation Value (MSV), this study develops and tests a computational model of MSV with multimodal feature analysis and human evaluation of 1,200 short videos. This model that predicts sensory and behavioral engagement was further validated across two unseen datasets from three short video platforms (combined N = 14,492). While MSV is positively associated with sensory engagement, it shows an inverted U-shaped relationship with behavioral engagement: Higher MSV elicits stronger sensory stimulation, but moderate MSV optimizes behavioral engagement. This research advances the theoretical understanding of short video engagement and introduces a robust computational tool for short video research.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19995
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Computational Model of Message Sensation Value in Short Video Multimodal Features that Predicts Sensory and Behavioral Engagement
Xue, Haoning
Zhang, Jingwen
Wang, Xiaohui
Kim, Diane Dagyong
Song, Yunya
Computer Vision and Pattern Recognition
The contemporary media landscape is characterized by sensational short videos. While prior research examines the effects of individual multimodal features, the collective impact of multimodal features on viewer engagement with short videos remains unknown. Grounded in the theoretical framework of Message Sensation Value (MSV), this study develops and tests a computational model of MSV with multimodal feature analysis and human evaluation of 1,200 short videos. This model that predicts sensory and behavioral engagement was further validated across two unseen datasets from three short video platforms (combined N = 14,492). While MSV is positively associated with sensory engagement, it shows an inverted U-shaped relationship with behavioral engagement: Higher MSV elicits stronger sensory stimulation, but moderate MSV optimizes behavioral engagement. This research advances the theoretical understanding of short video engagement and introduces a robust computational tool for short video research.
title A Computational Model of Message Sensation Value in Short Video Multimodal Features that Predicts Sensory and Behavioral Engagement
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.19995