cs.AI updates on arXiv.org 07月22日 12:44
The Constitutional Controller: Doubt-Calibrated Steering of Compliant Agents
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本文提出神经符号系统解决现代机器人不确定环境中的行为可靠性问题,通过结合概率逻辑程序和深度学习,设计宪法控制器(CoCo)以增强自主体的安全性和可靠性,并通过实际空中移动研究验证其优势。

arXiv:2507.15478v1 Announce Type: cross Abstract: Ensuring reliable and rule-compliant behavior of autonomous agents in uncertain environments remains a fundamental challenge in modern robotics. Our work shows how neuro-symbolic systems, which integrate probabilistic, symbolic white-box reasoning models with deep learning methods, offer a powerful solution to this challenge. This enables the simultaneous consideration of explicit rules and neural models trained on noisy data, combining the strength of structured reasoning with flexible representations. To this end, we introduce the Constitutional Controller (CoCo), a novel framework designed to enhance the safety and reliability of agents by reasoning over deep probabilistic logic programs representing constraints such as those found in shared traffic spaces. Furthermore, we propose the concept of self-doubt, implemented as a probability density conditioned on doubt features such as travel velocity, employed sensors, or health factors. In a real-world aerial mobility study, we demonstrate CoCo's advantages for intelligent autonomous systems to learn appropriate doubts and navigate complex and uncertain environments safely and compliantly.

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神经符号系统 机器人自主性 深度学习 宪法控制器 安全可靠性
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