Minghao Lv
2025
Tracking Life’s Ups and Downs: Mining Life Events from Social Media Posts for Mental Health Analysis
Minghao Lv
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Siyuan Chen
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Haoan Jin
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Minghao Yuan
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Qianqian Ju
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Yujia Peng
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Kenny Q. Zhu
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Mengyue Wu
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Social media platforms possess considerable potential in the realm of exploring mental health. Previous research has indicated that major life events can greatly impact individuals’ mental health. However, due to the complexity and ambiguity nature of life events, shedding its light on social media data is quite challenging. In this paper, we are dedicated to uncovering life events mentioned in posts on social media. We hereby provide a carefully-annotated social media event dataset, PsyEvent, which encompasses 12 major life event categories that are likely to occur in everyday life. This dataset is human-annotated under iterative procedure and boasts a high level of quality. Furthermore, by applying the life events extracted from posts to downstream tasks such as early risk detection of depression and suicide risk prediction, we have observed a considerable improvement in performance. This suggests that extracting life events from social media can be beneficial for the analysis of individuals’ mental health.
2024
Mapping Long-term Causalities in Psychiatric Symptomatology and Life Events from Social Media
Siyuan Chen
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Meilin Wang
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Minghao Lv
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Zhiling Zhang
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Juqianqian Juqianqian
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Dejiyangla Dejiyangla
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Yujia Peng
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Kenny Zhu
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Mengyue Wu
Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Social media is a valuable data source for exploring mental health issues. However, previous studies have predominantly focused on the semantic content of these posts, overlooking the importance of their temporal attributes, as well as the evolving nature of mental disorders and symptoms.In this paper, we study the causality between psychiatric symptoms and life events, as well as among different symptoms from social media posts, which leads to better understanding of the underlying mechanisms of mental disorders. By applying these extracted causality features to tasks such as diagnosis point detection and early risk detection of depression, we notice considerable performance enhancement. This indicates that causality information extracted from social media data can boost the efficacy of mental disorder diagnosis and treatment planning.
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- Siyuan Chen 2
- Yujia Peng 2
- Mengyue Wu 2
- Kenny Zhu 2
- Dejiyangla Dejiyangla 1
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