FedTherapist

Mental Health Monitoring with User-Generated Linguistic Expressions on Smartphones via Federated Learning



Abstract


Psychiatrists diagnose mental disorders via the linguistic use of patients. Still, due to data privacy, existing passive mental health monitoring systems use alternative features such as activity, app usage, and location via mobile devices. We propose FedTherapist, a mobile mental health monitoring system that utilizes continuous speech and keyboard input in a privacy-preserving way via federated learning. We explore multiple model designs by comparing their performance and overhead for FedTherapist to overcome the complex nature of on-device language model training on smartphones. We further propose a Context-Aware Language Learning (CALL) methodology to effectively utilize smartphones' large and noisy text for mental health signal sensing. Our IRB-approved evaluation of the prediction of self-reported depression, stress, anxiety, and mood from 46 participants shows higher accuracy of FedTherapist compared with the performance with non-language features, achieving 0.15 AUROC improvement and 8.21% MAE reduction.


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Publications


FedTherapist: Mental Health Monitoring with User-Generated Linguistic Expressions on Smartphones via Federated Learning
Jaemin Shin, Hyungjun Yoon, Seungjoo Lee, Sungjoon Park, Yunxin Liu, Jinho D. Choi, Sung-Ju Lee
The 2023 Conference on Empirical Methods in Natural Language Processing (EMNLP)
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People


Jaemin Shin

KAIST

Hyungjun Yoon

KAIST

Seungjoo Lee

KAIST

Sungjoon Park

Softly.ai

Yunxin Liu

Tsinghua University

Jinho D. Choi

Emory University

Sung-Ju Lee

KAIST



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