Polite chatbot feedback lowers psychological reactance and boosts behavioral intentions but lacks engagement, whereas verbal leakage heightens surprise and engagement at the expense of increased reactance.
Epstein, Kenzie L
4 Pith papers cite this work. Polarity classification is still indexing.
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2026 4verdicts
UNVERDICTED 4roles
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A Privacy Guardian Agent automates routine consent choices with user profiles and contextual awareness, escalating unclear or high-risk cases to users while keeping autonomous decisions reviewable for transparency.
EmBot combines wearable-triggered stress detection with LLM conversational support and was probed via expert interviews to surface design considerations for daily stress management.
Metagente is an LLM multi-agent system using Teacher-Student collaboration that outperforms baselines on real-world software documentation summarization for requirements analysis and technical docs.
citing papers explorer
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Polite But Boring? Trade-offs Between Engagement and Psychological Reactance to Chatbot Feedback Styles
Polite chatbot feedback lowers psychological reactance and boosts behavioral intentions but lacks engagement, whereas verbal leakage heightens surprise and engagement at the expense of increased reactance.
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The Privacy Guardian Agent: Towards Trustworthy AI Privacy Agents
A Privacy Guardian Agent automates routine consent choices with user profiles and contextual awareness, escalating unclear or high-risk cases to users while keeping autonomous decisions reviewable for transparency.
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Exploring Expert Perspectives on Wearable-Triggered LLM Conversational Support for Daily Stress Management
EmBot combines wearable-triggered stress detection with LLM conversational support and was probed via expert interviews to surface design considerations for daily stress management.
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Automated Summarization of Software Documents: An LLM-based Multi-Agent Approach
Metagente is an LLM multi-agent system using Teacher-Student collaboration that outperforms baselines on real-world software documentation summarization for requirements analysis and technical docs.