Personality Analysis from Online Short Video Platforms with Multi-domain Adaptation
Sixu An, Xiangguo Sun, Yicong Li, Yu Yang, Guandong Xu

TL;DR
This paper introduces a multi-modal, domain-adaptive framework for personality analysis from short videos, leveraging synchronized features and advanced neural networks to improve accuracy and generalization across diverse domains.
Contribution
It proposes a novel timestamp-based modality alignment, bidirectional LSTM with self-attention, and a gradient-based domain adaptation method for enhanced personality prediction.
Findings
Outperforms existing methods in real-world datasets
Effectively captures complex behavioral cues
Demonstrates robustness in new domains
Abstract
Personality analysis from online short videos has gained prominence due to its applications in personalized recommendation systems, sentiment analysis, and human-computer interaction. Traditional assessment methods, such as questionnaires based on the Big Five Personality Framework, are limited by self-report biases and are impractical for large-scale or real-time analysis. Leveraging the rich, multi-modal data present in short videos offers a promising alternative for more accurate personality inference. However, integrating these diverse and asynchronous modalities poses significant challenges, particularly in aligning time-varying data and ensuring models generalize well to new domains with limited labeled data. In this paper, we propose a novel multi-modal personality analysis framework that addresses these challenges by synchronizing and integrating features from multiple…
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Taxonomy
TopicsImpact of Technology on Adolescents · Digital Games and Media
MethodsFocus
