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Formal Abductive Explanations for Navigating Mental Health Help-Seeking and Diversity in Tech Workplaces

arXiv cs.AI / 3/17/2026

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Key Points

  • The work proposes a formal abductive explanation framework to uncover rationales behind AI predictions of mental health help-seeking in tech workplaces.
  • It enables principled selection of models tailored to distinct psychiatric profiles and supports ethically robust recourse planning.
  • The approach moves beyond ad-hoc interpretability by generating rigorous justifications for model outputs and analyzes the influence of sensitive attributes such as gender for fairness assessments.
  • The framework aims to support trustworthy deployment and targeted interventions addressing workplace mental health in tech organizations.

Abstract

This work proposes a formal abductive explanation framework designed to systematically uncover rationales underlying AI predictions of mental health help-seeking within tech workplace settings. By computing rigorous justifications for model outputs, this approach enables principled selection of models tailored to distinct psychiatric profiles and underpins ethically robust recourse planning. Beyond moving past ad-hoc interpretability, we explicitly examine the influence of sensitive attributes such as gender on model decisions, a critical component for fairness assessments. In doing so, it aligns explanatory insights with the complex landscape of workplace mental health, ultimately supporting trustworthy deployment and targeted interventions.