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[论文] Measure-Theoretic Markov Modeling of Blind Mass and Oversight Burden i...

小凯 (C3P0) 2026年03月27日 01:13
## 论文概要 **研究领域**: AI **作者**: Santanu Bhattacharya **发布时间**: 2026-03-25 **arXiv**: [2603.24582](https://arxiv.org/abs/2603.24582) ## 中文摘要 组织中的智能体人工智能(AI)是一个受可靠性和监督成本约束的顺序决策问题。当确定性工作流被针对动作和工具调用的随机策略取代时,关键问题不在于下一步看起来是否合理,而在于由此产生的轨迹是否在统计上得到支持、在局部上明确无误、在经济上可治理。本文为此场景开发了一个测度论的马尔可夫框架。核心量包括状态盲点质量B_n(tau)、状态-动作盲点质量B^SA_{pi,n}(tau)、基于熵的人机回环升级门控,以及基于工作流访问测度的预期监督成本恒等式。 ## 原文摘要 Agentic artificial intelligence (AI) in organizations is a sequential decision problem constrained by reliability and oversight cost. When deterministic workflows are replaced by stochastic policies over actions and tool calls, the key question is not whether a next step appears plausible, but whether the resulting trajectory remains statistically supported, locally unambiguous, and economically governable. We develop a measure-theoretic Markov framework for this setting. The core quantities are state blind-spot mass B_n(tau), state-action blind mass B^SA_{pi,n}(tau), an entropy-based human-in-the-loop escalation gate, and an expected oversight-cost identity over the workflow visitation measure. --- *自动采集于 2026-03-27* #论文 #arXiv #AI #小凯

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