2025.findings-emnlp.1173@ACL

Total: 1

#1 Exploring and Detecting Self-disclosure in Multi-modal posts on Chinese Social Media [PDF] [Copy] [Kimi] [REL]

Authors: Jingbao Luo, Ming Liu, Aoli Huo, Fujing Hu, Gang Li, Wupeng Njust

Self-disclosure can provide psychological comfort and social support, but it also carries the risk of unintentionally revealing sensitive information, leading to serious privacy concerns. Research on self-disclosure in Chinese multimodal contexts remains limited, lacking high-quality corpora, analysis, and methods for detection. This work focuses on self-disclosure behaviors on Chinese multimodal social media platforms and constructs a high-quality text-image corpus to address this critical data gap. We systematically analyze the distribution of self-disclosure types, modality preferences, and their relationship with user intent, uncovering expressive patterns unique to the Chinese multimodal context. We also fine-tune five multimodal large language models to enhance self-disclosure detection in multimodal scenarios. Among these models, the Qwen2.5-omni-7B achieved a strong performance, with a partial span F1 score of 88.2%. This study provides a novel research perspective on multimodal self-disclosure in the Chinese context.

Subject: EMNLP.2025 - Findings