2023
Journal article  Open Access

Cognitive network neighborhoods quantify feelings expressed in suicide notes and Reddit mental health communities

Joseph S. M., Citraro S., Morini V., Rossetti G., Stella M.

Topic modeling  Concepts  Statistical and Nonlinear Physics  Complex networks  Statistics and Probability  Emotions  Corpus 

Writing messages is key to expressing feelings. This study adopts cognitive network science to reconstruct how individuals report their feelings in clinical narratives like suicide notes or mental health posts. We achieve this by reconstructing syntactic/semantic associations between concepts in texts as co-occurrences enriched with affective data. We transform 142 suicide notes and 77,000 Reddit posts from the r/anxiety, r/depression, r/schizophrenia, and r/do-it-your-own (r/DIY) forums into 5 cognitive networks, each one expressing meanings and emotions as reported by authors. These networks reconstruct the semantic frames surrounding "feel", stem for "to feel" and "feelings", enabling a quantification of prominent associations and emotions focused around feelings. We find strong feelings of sadness across all clinical Reddit boards, added to fear r/depression, and replaced by joy/anticipation in r/DIY. Semantic communities and topic modeling both highlight key narrative topics of "regret", "unhealthy lifestyle" and "low mental well-being". Importantly, negative associations and emotions co-existed with trustful/positive language, focused on "getting better". This emotional polarization provides quantitative evidence that online clinical boards possess a complex structure, where users mix both positive and negative outlooks. This dichotomy is absent in the DIY reference board and in suicide notes, where negative emotional associations about regret and pain persist but are overwhelmed by positive jargon addressing loved ones. Our network-based comparisons provide quantitative evidence that suicide notes encapsulate different ways of expressing feelings compared to online Reddit boards, the latter acting more like personal diaries and relief valves. Our findings provide an interpretable network-based aid for supporting psychological inquiries of human feelings in digital and clinical settings.

Source: Physica. A (Print) 610 (2023). doi:10.1016/j.physa.2022.128336

Publisher: North-Holland, Amsterdam , Paesi Bassi


Metrics



Back to previous page
BibTeX entry
@article{oai:it.cnr:prodotti:477684,
	title = {Cognitive network neighborhoods quantify feelings expressed in suicide notes and Reddit mental health communities},
	author = {Joseph S. M. and Citraro S. and Morini V. and Rossetti G. and Stella M.},
	publisher = {North-Holland, Amsterdam , Paesi Bassi},
	doi = {10.1016/j.physa.2022.128336},
	journal = {Physica. A (Print)},
	volume = {610},
	year = {2023}
}

SoBigData-PlusPlus
SoBigData++: European Integrated Infrastructure for Social Mining and Big Data Analytics


OpenAIRE