Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Ein externer Link zum Volltext ist derzeit nicht verfügbar.
From "Help" to Helpful: A Hierarchical Assessment of LLMs in Mental e-Health Applications
0
Zitationen
2
Autoren
2026
Jahr
Abstract
Psychosocial online counselling frequently encounters generic subject lines that impede efficient case prioritisation. This study evaluates eleven large language models generating six-word subject lines for German counselling emails through hierarchical assessment - first categorising outputs, then ranking within categories to enable manageable evaluation. Nine assessors (counselling professionals and AI systems) enable analysis via Krippendorff's $α$, Spearman's $ρ$, Pearson's $r$ and Kendall's $τ$. Results reveal performance trade-offs between proprietary services and privacy-preserving open-source alternatives, with German fine-tuning consistently improving performance. The study addresses critical ethical considerations for mental health AI deployment including privacy, bias and accountability.
Ähnliche Arbeiten
Amazon's Mechanical Turk
2011 · 10.034 Zit.
The Epidemiology of Major Depressive Disorder
2003 · 7.969 Zit.
The Transtheoretical Model of Health Behavior Change
1997 · 7.710 Zit.
Acute and Longer-Term Outcomes in Depressed Outpatients Requiring One or Several Treatment Steps: A STAR*D Report
2006 · 5.452 Zit.
Depression Is a Risk Factor for Noncompliance With Medical Treatment
2000 · 4.140 Zit.