A generative system for digital mental health support dynamically assembles personalized content and multimodal interaction flows, producing lower stress and better user experience than a fixed LLM baseline in a preregistered RCT.
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4 Pith papers cite this work. Polarity classification is still indexing.
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citation-polarity summary
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2026 4roles
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LLMs improve with detailed code descriptions but remain insufficient to replace human annotators for security-specific qualitative coding.
Task management for adults with ADHD is a relational and emotional process best supported by AI systems that enable co-regulation and accommodate nonlinear attention patterns.
Pista decomposes AI agent actions in spreadsheets into auditable steps, enabling real-time user intervention that improves task outcomes, user comprehension, agent perception, and sense of co-ownership over baseline agents.
citing papers explorer
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Generative Experiences for Digital Mental Health Interventions: Evidence from a Randomized Study
A generative system for digital mental health support dynamically assembles personalized content and multimodal interaction flows, producing lower stress and better user experience than a fixed LLM baseline in a preregistered RCT.
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LLMs for Qualitative Data Analysis Fail on Security-specificComments in Human Experiments
LLMs improve with detailed code descriptions but remain insufficient to replace human annotators for security-specific qualitative coding.
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"Not Just Me and My To-Do List": Understanding Challenges of Task Management for Adults with ADHD and the Need for AI-Augmented Social Scaffolds
Task management for adults with ADHD is a relational and emotional process best supported by AI systems that enable co-regulation and accommodate nonlinear attention patterns.
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Auditing and Controlling AI Agent Actions in Spreadsheets
Pista decomposes AI agent actions in spreadsheets into auditable steps, enabling real-time user intervention that improves task outcomes, user comprehension, agent perception, and sense of co-ownership over baseline agents.