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Main Authors: Li, Jun, Wang, Xiangmeng, Li, Haoyang, Yan, Yifei, Leong, Hong Va, Feng, Ling, Yu, Nancy Xiaonan, Li, Qing
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.10008
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author Li, Jun
Wang, Xiangmeng
Li, Haoyang
Yan, Yifei
Leong, Hong Va
Feng, Ling
Yu, Nancy Xiaonan
Li, Qing
author_facet Li, Jun
Wang, Xiangmeng
Li, Haoyang
Yan, Yifei
Leong, Hong Va
Feng, Ling
Yu, Nancy Xiaonan
Li, Qing
contents Suicide is a critical global health issue that requires urgent attention. Even though prior work has revealed valuable insights into detecting current suicide risk on social media, little attention has been paid to developing models that can predict subsequent suicide risk over time, limiting their ability to capture rapid fluctuations in individuals' mental state transitions. In addition, existing work ignores protective factors that play a crucial role in suicide risk prediction, focusing predominantly on risk factors alone. Protective factors such as social support and coping strategies can mitigate suicide risk by moderating the impact of risk factors. Therefore, this study proposes a novel framework for predicting subsequent suicide risk by jointly learning the dynamic influence of both risk factors and protective factors on users' suicide risk transitions. We propose a novel Protective Factor-Aware Dataset, which is built from 12 years of Reddit posts along with comprehensive annotations of suicide risk and both risk and protective factors. We also introduce a Dynamic Factors Influence Learning approach that captures the varying impact of risk and protective factors on suicide risk transitions, recognizing that suicide risk fluctuates over time according to established psychological theories. Our thorough experiments demonstrate that the proposed model significantly outperforms state-of-the-art models and large language models across three datasets. In addition, the proposed Dynamic Factors Influence Learning provides interpretable weights, helping clinicians better understand suicidal patterns and enabling more targeted intervention strategies.
format Preprint
id arxiv_https___arxiv_org_abs_2507_10008
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Protective Factor-Aware Dynamic Influence Learning for Suicide Risk Prediction on Social Media
Li, Jun
Wang, Xiangmeng
Li, Haoyang
Yan, Yifei
Leong, Hong Va
Feng, Ling
Yu, Nancy Xiaonan
Li, Qing
Computation and Language
Suicide is a critical global health issue that requires urgent attention. Even though prior work has revealed valuable insights into detecting current suicide risk on social media, little attention has been paid to developing models that can predict subsequent suicide risk over time, limiting their ability to capture rapid fluctuations in individuals' mental state transitions. In addition, existing work ignores protective factors that play a crucial role in suicide risk prediction, focusing predominantly on risk factors alone. Protective factors such as social support and coping strategies can mitigate suicide risk by moderating the impact of risk factors. Therefore, this study proposes a novel framework for predicting subsequent suicide risk by jointly learning the dynamic influence of both risk factors and protective factors on users' suicide risk transitions. We propose a novel Protective Factor-Aware Dataset, which is built from 12 years of Reddit posts along with comprehensive annotations of suicide risk and both risk and protective factors. We also introduce a Dynamic Factors Influence Learning approach that captures the varying impact of risk and protective factors on suicide risk transitions, recognizing that suicide risk fluctuates over time according to established psychological theories. Our thorough experiments demonstrate that the proposed model significantly outperforms state-of-the-art models and large language models across three datasets. In addition, the proposed Dynamic Factors Influence Learning provides interpretable weights, helping clinicians better understand suicidal patterns and enabling more targeted intervention strategies.
title Protective Factor-Aware Dynamic Influence Learning for Suicide Risk Prediction on Social Media
topic Computation and Language
url https://arxiv.org/abs/2507.10008