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Main Authors: Zhang, Tianyi, Xue, Xiangyuan, Ruan, Lingyan, Fu, Shiya, Xia, Feng, D'Alfonso, Simon, Kostakos, Vassilis, Dang, Ting, Jia, Hong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.02716
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author Zhang, Tianyi
Xue, Xiangyuan
Ruan, Lingyan
Fu, Shiya
Xia, Feng
D'Alfonso, Simon
Kostakos, Vassilis
Dang, Ting
Jia, Hong
author_facet Zhang, Tianyi
Xue, Xiangyuan
Ruan, Lingyan
Fu, Shiya
Xia, Feng
D'Alfonso, Simon
Kostakos, Vassilis
Dang, Ting
Jia, Hong
contents Mental health conditions affect hundreds of millions globally, yet early detection remains limited. While large language models (LLMs) have shown promise in mental health applications, their size and computational demands hinder practical deployment. Small language models (SLMs) offer a lightweight alternative, but their use for social media--based mental health prediction remains largely underexplored. In this study, we introduce Menta, the first optimized SLM fine-tuned specifically for multi-task mental health prediction from social media data. Menta is jointly trained across six classification tasks using a LoRA-based framework, a cross-dataset strategy, and a balanced accuracy--oriented loss. Evaluated against nine state-of-the-art SLM baselines, Menta achieves an average improvement of 15.2\% across tasks covering depression, stress, and suicidality compared with the best-performing non--fine-tuned SLMs. It also achieves higher accuracy on depression and stress classification tasks compared to 13B-parameter LLMs, while being approximately 3.25x smaller. Moreover, we demonstrate real-time, on-device deployment of Menta on an iPhone 15 Pro Max, requiring only approximately 3GB RAM. Supported by a comprehensive benchmark against existing SLMs and LLMs, Menta highlights the potential for scalable, privacy-preserving mental health monitoring. Code is available at: https://hong-labs.github.io/menta-project/
format Preprint
id arxiv_https___arxiv_org_abs_2512_02716
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Menta: A Small Language Model for On-Device Mental Health Prediction
Zhang, Tianyi
Xue, Xiangyuan
Ruan, Lingyan
Fu, Shiya
Xia, Feng
D'Alfonso, Simon
Kostakos, Vassilis
Dang, Ting
Jia, Hong
Artificial Intelligence
Mental health conditions affect hundreds of millions globally, yet early detection remains limited. While large language models (LLMs) have shown promise in mental health applications, their size and computational demands hinder practical deployment. Small language models (SLMs) offer a lightweight alternative, but their use for social media--based mental health prediction remains largely underexplored. In this study, we introduce Menta, the first optimized SLM fine-tuned specifically for multi-task mental health prediction from social media data. Menta is jointly trained across six classification tasks using a LoRA-based framework, a cross-dataset strategy, and a balanced accuracy--oriented loss. Evaluated against nine state-of-the-art SLM baselines, Menta achieves an average improvement of 15.2\% across tasks covering depression, stress, and suicidality compared with the best-performing non--fine-tuned SLMs. It also achieves higher accuracy on depression and stress classification tasks compared to 13B-parameter LLMs, while being approximately 3.25x smaller. Moreover, we demonstrate real-time, on-device deployment of Menta on an iPhone 15 Pro Max, requiring only approximately 3GB RAM. Supported by a comprehensive benchmark against existing SLMs and LLMs, Menta highlights the potential for scalable, privacy-preserving mental health monitoring. Code is available at: https://hong-labs.github.io/menta-project/
title Menta: A Small Language Model for On-Device Mental Health Prediction
topic Artificial Intelligence
url https://arxiv.org/abs/2512.02716