Date
Publisher
arXiv
Assessing student depression in sensitive environments like special education
is challenging. Standardized questionnaires may not fully reflect students'
true situations. Furthermore, automated methods often falter with rich student
narratives, lacking the crucial, individualized insights stemming from
teachers' empathetic connections with students. Existing methods often fail to
address this ambiguity or effectively integrate educator understanding. To
address these limitations by fostering a synergistic human-AI collaboration,
this paper introduces Human Empathy as Encoder (HEAE), a novel, human-centered
AI framework for transparent and socially responsible depression severity
assessment. Our approach uniquely integrates student narrative text with a
teacher-derived, 9-dimensional "Empathy Vector" (EV), its dimensions guided by
the PHQ-9 framework,to explicitly translate tacit empathetic insight into a
structured AI input enhancing rather than replacing human judgment. Rigorous
experiments optimized the multimodal fusion, text representation, and
classification architecture, achieving 82.74% accuracy for 7-level severity
classification. This work demonstrates a path toward more responsible and
ethical affective computing by structurally embedding human empathy
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
