Toward Neurodivergent-Aware Productivity: A Systems and AI-Based Human-in-the-Loop Framework for ADHD-Affected Professionals
July 09, 2025 Β· Declared Dead Β· π ACM SIGCHI Italian Chapter International Conference on Computer-Human Interaction
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Authors
Raghavendra Deshmukh
arXiv ID
2507.06864
Category
cs.HC: Human-Computer Interaction
Citations
2
Venue
ACM SIGCHI Italian Chapter International Conference on Computer-Human Interaction
Last Checked
4 months ago
Abstract
Digital work environments in IT and knowledge-based sectors demand high levels of attention management, task juggling, and self-regulation. For adults with ADHD, these settings often amplify challenges such as time blindness, digital distraction, emotional reactivity, and executive dysfunction. These individuals prefer low-touch, easy-to-use interventions for daily tasks. Conventional productivity tools often fail to support the cognitive variability and overload experienced by neurodivergent professionals. This paper presents a framework that blends Systems Thinking, Human-in-the-Loop design, AI/ML, and privacy-first adaptive agents to support ADHD-affected users. The assistant senses tab usage, application focus, and inactivity using on-device ML. These cues are used to infer attention states and deliver nudges, reflective prompts, or accountability-based presence (body doubling) that aid regulation without disruption. Technically grounded in AI, the approach views attention as shaped by dynamic feedback loops. The result is a replicable model for adaptive, inclusive support tools in high-distraction work environments.
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