Understanding the mindset of people who die by suicide remains a key research challenge. We map conceptual and emotional word–word co-occurrences in 139 genuine suicide notes and in reference word lists, an Emotional Recall Task, from 200 individuals grouped by high/low depression, anxiety, and stress levels on DASS-21. Positive words cover most of the suicide notes’ vocabulary; however, co-occurrences in suicide notes overlap mostly with those produced by individuals with low anxiety (Jaccard index of 0.42 for valence and 0.38 for arousal). We introduce a “words not said” method: It removes every word that corpus A shares with a comparison corpus B and then checks the emotions of “residual” words in (Formula presented.). With no leftover emotions, A and B are similar in expressing the same emotions. Simulations indicate this method can classify high/low levels of depression, anxiety and stress with 80% accuracy in a balanced task. After subtracting suicide note words, only the high-anxiety corpus displays no significant residual emotions. Our findings thus pin anxiety as a key latent feature of suicidal psychology and offer an interpretable language-based marker for suicide risk detection.

Cognitive Networks and Text Analysis Identify Anxiety as a Key Dimension of Distress in Genuine Suicide Notes / Stella, Massimo; Swanson, Trevor James; Teixeira, Andreia Sofia; Richson, Brianne N.; Li, Ying; Hills, Thomas T.; Forbush, Kelsie T.; Watson, David. - In: BIG DATA AND COGNITIVE COMPUTING. - ISSN 2504-2289. - 9:7(2025), p. 171. [10.3390/bdcc9070171]

Cognitive Networks and Text Analysis Identify Anxiety as a Key Dimension of Distress in Genuine Suicide Notes

Stella, Massimo
;
2025-01-01

Abstract

Understanding the mindset of people who die by suicide remains a key research challenge. We map conceptual and emotional word–word co-occurrences in 139 genuine suicide notes and in reference word lists, an Emotional Recall Task, from 200 individuals grouped by high/low depression, anxiety, and stress levels on DASS-21. Positive words cover most of the suicide notes’ vocabulary; however, co-occurrences in suicide notes overlap mostly with those produced by individuals with low anxiety (Jaccard index of 0.42 for valence and 0.38 for arousal). We introduce a “words not said” method: It removes every word that corpus A shares with a comparison corpus B and then checks the emotions of “residual” words in (Formula presented.). With no leftover emotions, A and B are similar in expressing the same emotions. Simulations indicate this method can classify high/low levels of depression, anxiety and stress with 80% accuracy in a balanced task. After subtracting suicide note words, only the high-anxiety corpus displays no significant residual emotions. Our findings thus pin anxiety as a key latent feature of suicidal psychology and offer an interpretable language-based marker for suicide risk detection.
2025
7
Stella, Massimo; Swanson, Trevor James; Teixeira, Andreia Sofia; Richson, Brianne N.; Li, Ying; Hills, Thomas T.; Forbush, Kelsie T.; Watson, David...espandi
Cognitive Networks and Text Analysis Identify Anxiety as a Key Dimension of Distress in Genuine Suicide Notes / Stella, Massimo; Swanson, Trevor James; Teixeira, Andreia Sofia; Richson, Brianne N.; Li, Ying; Hills, Thomas T.; Forbush, Kelsie T.; Watson, David. - In: BIG DATA AND COGNITIVE COMPUTING. - ISSN 2504-2289. - 9:7(2025), p. 171. [10.3390/bdcc9070171]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/466551
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