PRISM: Festina Lente Proactivity -- Risk-Sensitive, Uncertainty-Aware Deliberation for Proactive Agents
Yuxuan Fu, Xiaoyu Tan, Teqi Hao, Chen Zhan, Xihe Qiu

TL;DR
PRISM introduces a decision-theoretic framework for proactive agents that balances intervention benefits and costs, using selective reasoning and distillation to improve precision and efficiency.
Contribution
It presents a novel cost-sensitive, uncertainty-aware intervention method combining gating and dual-process reasoning, with aligned distillation for tunable control.
Findings
Reduces false alarms by 22.78%
Improves F1 score by 20.14%
Enhances computational efficiency and controllability
Abstract
Proactive agents must decide not only what to say but also whether and when to intervene. Many current systems rely on brittle heuristics or indiscriminate long reasoning, which offers little control over the benefit-burden tradeoff. We formulate the problem as cost-sensitive selective intervention and present PRISM, a novel framework that couples a decision-theoretic gate with a dual-process reasoning architecture. At inference time, the agent intervenes only when a calibrated probability of user acceptance exceeds a threshold derived from asymmetric costs of missed help and false alarms. Inspired by festina lente (Latin: "make haste slowly"), we gate by an acceptance-calibrated, cost-derived threshold and invoke a resource-intensive Slow mode with counterfactual checks only near the decision boundary, concentrating computation on ambiguous and high-stakes cases. Training uses…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Human-Automation Interaction and Safety · AI-based Problem Solving and Planning
