AutismCarebot: An Empathy-Enhanced and Retrieval-Augmented Chatbot for Autistic Users
Abstract
Many autistic individuals require specialized communication strategies, tailoredemotional understanding, and personalized resources - areas often overlooked by general
mental health chatbots. This thesis presents AutismCarebot, an empathy-enhanced,
retrieval-augmented conversational AI built upon the LLaMA-3.2 (3B) Instruct model,
designed specifically to support autistic users. The model was initially fine-tuned on
empathetic dialogue datasets (Empathetic Dialogues, Amod Mental Health Counseling
Conversations, Psych8k, ExTES) and further adapted using autism-specific data (TASD)
to better align with autistic communication styles. The chatbot uses keyword-based
heuristics - simple rule-driven methods - to detect emotional cues such as anxiety,
sadness, and overwhelm, responding with clear, empathetic validation and tailored
reassurance. Retrieval-Augmented Generation (RAG) helps improve factual grounding by
embedding evidence-based advice from credible autism-related resources, with transparent
citations. A keyword-triggered crisis support feature connects users to global helplines
when self-harm indicators are detected. Usability testing and qualitative feedback from
autistic individuals, caregivers, and educators indicated positive perceptions of empathy,
emotional responsiveness, and trust. AutismCarebot demonstrates a promising, ethically
aligned approach to enhancing emotional support and crisis safety for autistic users, with
potential applications in therapeutic, educational, and peer-support contexts.
Description
Thesis (Master's)--University of Washington, 2025
