New AI-Driven Tools for Enhancing Campus Well-being: A Prevention and Intervention Approach
Jinwen Tang

TL;DR
This paper introduces AI-driven tools, including chatbots and models, to improve campus well-being monitoring and mental health detection through innovative frameworks and adaptive techniques.
Contribution
It presents novel AI tools like TigerGPT, AURA, PsychoGPT, and SMMR, integrating prevention and intervention strategies for campus mental health.
Findings
TigerGPT achieved 75% usability and 81% satisfaction.
AURA reduced prompts by 63% and increased validation behavior tenfold.
PsychoGPT and SMMR outperformed existing models in accuracy and explainability.
Abstract
Campus well-being underpins academic success, yet many universities lack effective methods for monitoring satisfaction and detecting mental health risks. This dissertation addresses these gaps through prevention (improving feedback collection) and intervention (advancing mental health detection), unified under an integrated framework. For prevention, we developed TigerGPT, a personalized survey chatbot leveraging LLMs to engage users in context-aware conversations grounded in conversational design and engagement theory, achieving 75% usability and 81% satisfaction. To address its limitations in repetitiveness and response depth, we introduced AURA, a reinforcement-learning framework that adapts follow-up question types (validate, specify, reflect, probe) within a session using an LSDE quality signal (Length, Self-disclosure, Emotion, Specificity), initialized from 96 prior…
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