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Main Authors: Abdelkadir, Nuredin Ali, Ratnam, Anjali, Talat, Zeerak, Chancellor, Stevie
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.18936
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author Abdelkadir, Nuredin Ali
Ratnam, Anjali
Talat, Zeerak
Chancellor, Stevie
author_facet Abdelkadir, Nuredin Ali
Ratnam, Anjali
Talat, Zeerak
Chancellor, Stevie
contents Social media text data are often used to train Machine Learning (ML) models to identify users exhibiting high-risk mental health behaviors. However, sharing this sensitive data poses privacy risks and limits the growth of benchmark datasets. We comprehensively evaluate whether privacy-preserving ML techniques can enable safer data sharing while preserving performance. Specifically, we apply federated learning (FL) and Differentially Private FL for two widely-studied mental health prediction tasks: depression detection on X (Twitter) and suicide crisis detection on Reddit. We simulate realistic data-sharing scenarios by treating each user as a client in a non-IID setting, evaluating across different client fractions, aggregation strategies, and privacy budgets. While FL achieves comparable performance to centralized training (centralized F1 = 85.63; best FL model F1 = 83.16) on depression identification, we find that Differentially Private FL has a large performance-privacy trade-off (up to F1 = 27.01 drop) even with low levels of noise (epsilon = 50). This is due to the distortion of highly informative yet sparse mental health linguistic markers related to mental health, like health topics and emotion words. This research empirically demonstrates the potential and limitations of current privacy preservation techniques for mental health inference tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2605_18936
institution arXiv
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record_format arxiv
spellingShingle FedMental: Evaluating Federated Learning for Mental Health Detection from Social Media Data
Abdelkadir, Nuredin Ali
Ratnam, Anjali
Talat, Zeerak
Chancellor, Stevie
Machine Learning
Computation and Language
Social media text data are often used to train Machine Learning (ML) models to identify users exhibiting high-risk mental health behaviors. However, sharing this sensitive data poses privacy risks and limits the growth of benchmark datasets. We comprehensively evaluate whether privacy-preserving ML techniques can enable safer data sharing while preserving performance. Specifically, we apply federated learning (FL) and Differentially Private FL for two widely-studied mental health prediction tasks: depression detection on X (Twitter) and suicide crisis detection on Reddit. We simulate realistic data-sharing scenarios by treating each user as a client in a non-IID setting, evaluating across different client fractions, aggregation strategies, and privacy budgets. While FL achieves comparable performance to centralized training (centralized F1 = 85.63; best FL model F1 = 83.16) on depression identification, we find that Differentially Private FL has a large performance-privacy trade-off (up to F1 = 27.01 drop) even with low levels of noise (epsilon = 50). This is due to the distortion of highly informative yet sparse mental health linguistic markers related to mental health, like health topics and emotion words. This research empirically demonstrates the potential and limitations of current privacy preservation techniques for mental health inference tasks.
title FedMental: Evaluating Federated Learning for Mental Health Detection from Social Media Data
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2605.18936