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A Topic-Attentive Transformer-based Model For Multimodal Depression Detection - 2022


Topic-Attentive Transformer-based Model For Multimodal Depression Detection | S-Logix

Research Area:  Machine Learning

Abstract:

Depression is one of the most common mental disorders, which imposes heavy negative impacts on one daily life. Diagnosing depression based on the interview is usually in the form of questions and answers. In this process, the audio signals and their text transcripts of a subject are correlated to depression cues and easily recorded. Therefore, it is feasible to build an Automatic Depression Detection (ADD) model based on the data of these modalities in practice. However, there are two major challenges that should be addressed for constructing an effective ADD model. The first challenge is the organization of the textual and audio data, which can be of various contents and lengths for different subjects. The second challenge is the lack of training samples due to the privacy concern. Targeting to these two challenges, we propose the TOpic ATtentive transformer-based ADD model, abbreviated as TOAT. To address the first challenge, in the TOAT model, topic is taken as the basic unit of the textual and audio data according to the question-answer form in a typical interviewing process. Based on that, a topic attention module is designed to learn the importance of of each topic, which helps the model better retrieve the depressed samples. To solve the issue of data scarcity, we introduce large pre-trained models, and the fine-tuning strategy is adopted based on the small-scale ADD training data. We also design a two-branch architecture with a late-fusion strategy for building the TOAT model, in which the textual and audio data are encoded independently. We evaluate our model on the multimodal DAIC-WOZ dataset specifically designed for the ADD task. Experimental results show the superiority of our method. More importantly, the ablation studies demonstrate the effectiveness of the key elements in the TOAT model.

Keywords:  
Depression
Diagnosing
modalities
organization
TOAT
late-fusion
superiority

Author(s) Name:  Yanrong Guo, Chenyang Zhu, Shijie Hao, Richang Hong

Journal name:  Multimedia

Conferrence name:  

Publisher name:  arXiv

DOI:  https://doi.org/10.48550/arXiv.2206.13256

Volume Information:  Volume 1