Depression Detection
Depression detection research aims to develop accurate and reliable methods for identifying depression using various data sources, primarily focusing on improving diagnostic accuracy and providing explainable results. Current research heavily utilizes machine learning, particularly deep learning models like transformers (e.g., BERT, GPT), recurrent neural networks (RNNs), and convolutional neural networks (CNNs), often incorporating multimodal data (text, speech, images, video) and leveraging techniques like attention mechanisms and feature fusion. These advancements hold significant promise for improving early diagnosis and intervention, potentially leading to more effective and timely mental healthcare, particularly in resource-constrained settings.
Papers
Multimodal Gender Fairness in Depression Prediction: Insights on Data from the USA & China
Joseph Cameron, Jiaee Cheong, Micol Spitale, Hatice Gunes
HiQuE: Hierarchical Question Embedding Network for Multimodal Depression Detection
Juho Jung, Chaewon Kang, Jeewoo Yoon, Seungbae Kim, Jinyoung Han
FacialPulse: An Efficient RNN-based Depression Detection via Temporal Facial Landmarks
Ruiqi Wang, Jinyang Huang, Jie Zhang, Xin Liu, Xiang Zhang, Zhi Liu, Peng Zhao, Sigui Chen, Xiao Sun