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Published:2026/1/2 5:13:44

最強ギャル、LLMでストレスケア💖!IT企業向けチャットボット爆誕☆

**1. 超要約:**IT企業の従業員向けに、LLM(すごいAI)使ったストレス軽減チャットボットを作る研究だよ!ストレスを減らして、みんなハッピーになろうね🥰

2. ギャル的キラキラポイント✨

  • ● IT企業のメンタルヘルス問題に、LLMでバッチリ対策!
  • ● テンプレート(決まりきったやつ)じゃなくて、対話で柔軟に対応するからすごい!
  • ● 認知(考え方)を変えることで、ストレスを根本解決しちゃお!

3. 詳細解説

続きは「らくらく論文」アプリで

User Perceptions of an LLM-Based Chatbot for Cognitive Reappraisal of Stress: Feasibility Study

Ananya Bhattacharjee / Jina Suh / Mohit Chandra / Javier Hernandez

Cognitive reappraisal is a well-studied emotion regulation strategy that helps individuals reinterpret stressful situations to reduce their impact. Many digital mental health tools struggle to support this process because rigid scripts fail to accommodate how users naturally describe stressors. This study examined the feasibility of an LLM-based single-session intervention (SSI) for workplace stress reappraisal. We assessed short-term changes in stress-related outcomes and examined design tensions during use. We conducted a feasibility study with 100 employees at a large technology company who completed a structured cognitive reappraisal session delivered by a GPT-4o-based chatbot. Pre-post measures included perceived stress intensity, stress mindset, perceived demand, and perceived resources. These outcomes were analyzed using paired Wilcoxon signed-rank tests with correction for multiple comparisons. We also examined sentiment and stress trajectories across conversation quartiles using two RoBERTa-based classifiers and an LLM-based stress rater. Open-ended responses were analyzed using thematic analysis. Results showed significant reductions in perceived stress intensity and significant improvements in stress mindset. Changes in perceived resources and perceived demand trended in expected directions but were not statistically significant. Automated analyses indicated consistent declines in negative sentiment and stress over the course of the interaction. Qualitative findings suggested that participants valued the structured prompts for organizing thoughts, gaining perspective, and feeling acknowledged. Participants also reported tensions around scriptedness, preferred interaction length, and reactions to AI-driven empathy. These findings highlight both the promise and the design constraints of integrating LLMs into DMH interventions for workplace settings.

cs / cs.HC