English

Deconstructing Depression Stigma: Integrating AI-driven Data Collection and Analysis with Causal Knowledge Graphs

Human-Computer Interaction 2025-02-11 v1 Computation and Language Computers and Society

Abstract

Mental-illness stigma is a persistent social problem, hampering both treatment-seeking and recovery. Accordingly, there is a pressing need to understand it more clearly, but analyzing the relevant data is highly labor-intensive. Therefore, we designed a chatbot to engage participants in conversations; coded those conversations qualitatively with AI assistance; and, based on those coding results, built causal knowledge graphs to decode stigma. The results we obtained from 1,002 participants demonstrate that conversation with our chatbot can elicit rich information about people's attitudes toward depression, while our AI-assisted coding was strongly consistent with human-expert coding. Our novel approach combining large language models (LLMs) and causal knowledge graphs uncovered patterns in individual responses and illustrated the interrelationships of psychological constructs in the dataset as a whole. The paper also discusses these findings' implications for HCI researchers in developing digital interventions, decomposing human psychological constructs, and fostering inclusive attitudes.

Keywords

Cite

@article{arxiv.2502.06075,
  title  = {Deconstructing Depression Stigma: Integrating AI-driven Data Collection and Analysis with Causal Knowledge Graphs},
  author = {Han Meng and Renwen Zhang and Ganyi Wang and Yitian Yang and Peinuan Qin and Jungup Lee and Yi-Chieh Lee},
  journal= {arXiv preprint arXiv:2502.06075},
  year   = {2025}
}

Comments

Conditionally accepted to CHI Conference on Human Factors in Computing Systems (CHI'25)

R2 v1 2026-06-28T21:37:59.743Z