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Exploring Machine Learning and Language Models for Multimodal Depression Detection

28 August 2025
Javier Si Zhao Hong
Timothy Zoe Delaya
Sherwyn Chan Yin Kit
Pai Chet Ng
Xiaoxiao Miao
ArXiv (abs)PDFHTMLGithub (7863★)
Main:5 Pages
1 Figures
Bibliography:1 Pages
Abstract

This paper presents our approach to the first Multimodal Personality-Aware Depression Detection Challenge, focusing on multimodal depression detection using machine learning and deep learning models. We explore and compare the performance of XGBoost, transformer-based architectures, and large language models (LLMs) on audio, video, and text features. Our results highlight the strengths and limitations of each type of model in capturing depression-related signals across modalities, offering insights into effective multimodal representation strategies for mental health prediction.

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