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Main Authors: Zhu, Jianfeng, Jiang, Hailong, Wang, Yulan, Coifman, Karin G., Jin, Ruoming, Kenne, Deric R.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.14037
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author Zhu, Jianfeng
Jiang, Hailong
Wang, Yulan
Coifman, Karin G.
Jin, Ruoming
Kenne, Deric R.
author_facet Zhu, Jianfeng
Jiang, Hailong
Wang, Yulan
Coifman, Karin G.
Jin, Ruoming
Kenne, Deric R.
contents Early substance use during adolescence increases the risk of later substance use disorders and mental health problems, yet the emotional and contextual factors driving these behaviors remain poorly understood. This study analyzed 23000 substance-use related posts and an equal number of non-substance posts from Reddit's r/teenagers community (2018-2022). Posts were annotated for six discrete emotions (sadness, anger, joy, guilt, fear, disgust) and contextual factors (family, peers, school) using large language models (LLMs). Statistical analyses compared group differences, and interpretable machine learning (SHAP) identified key predictors of substance-use discussions. LLM-assisted thematic coding further revealed latent psychosocial themes linking emotions with contexts. Negative emotions, especially sadness, guilt, fear, and disgust, were significantly more common in substance-use posts, while joy dominated non-substance discussions. Guilt and shame diverged in function: guilt often reflected regret and self-reflection, whereas shame reinforced risky behaviors through peer performance. Peer influence emerged as the strongest contextual factor, closely tied to sadness, fear, and guilt. Family and school environments acted as both risk and protective factors depending on relational quality and stress levels. Overall, adolescent substance-use discussions reflected a dynamic interplay of emotion, social context, and coping behavior. By integrating statistical analysis, interpretable models, and LLM-based thematic exploration, this study demonstrates the value of mixed computational approaches for uncovering the emotional and contextual mechanisms underlying adolescent risk behavior.
format Preprint
id arxiv_https___arxiv_org_abs_2501_14037
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Emotions, Context, and Substance Use in Adolescents: A Large Language Model Analysis of Reddit Posts
Zhu, Jianfeng
Jiang, Hailong
Wang, Yulan
Coifman, Karin G.
Jin, Ruoming
Kenne, Deric R.
Computation and Language
Early substance use during adolescence increases the risk of later substance use disorders and mental health problems, yet the emotional and contextual factors driving these behaviors remain poorly understood. This study analyzed 23000 substance-use related posts and an equal number of non-substance posts from Reddit's r/teenagers community (2018-2022). Posts were annotated for six discrete emotions (sadness, anger, joy, guilt, fear, disgust) and contextual factors (family, peers, school) using large language models (LLMs). Statistical analyses compared group differences, and interpretable machine learning (SHAP) identified key predictors of substance-use discussions. LLM-assisted thematic coding further revealed latent psychosocial themes linking emotions with contexts. Negative emotions, especially sadness, guilt, fear, and disgust, were significantly more common in substance-use posts, while joy dominated non-substance discussions. Guilt and shame diverged in function: guilt often reflected regret and self-reflection, whereas shame reinforced risky behaviors through peer performance. Peer influence emerged as the strongest contextual factor, closely tied to sadness, fear, and guilt. Family and school environments acted as both risk and protective factors depending on relational quality and stress levels. Overall, adolescent substance-use discussions reflected a dynamic interplay of emotion, social context, and coping behavior. By integrating statistical analysis, interpretable models, and LLM-based thematic exploration, this study demonstrates the value of mixed computational approaches for uncovering the emotional and contextual mechanisms underlying adolescent risk behavior.
title Emotions, Context, and Substance Use in Adolescents: A Large Language Model Analysis of Reddit Posts
topic Computation and Language
url https://arxiv.org/abs/2501.14037