中文

Governable Individuals: An Identity Layer for Embodied Agents That Keep Learning

神经元与认知 2026-07-06 v1

摘要

Embodied artificial intelligence is moving from deployable models to persistent agents that learn in the field, acquire skills and migrate across bodies. Governing such a system means governing an individual, not a model, and existing proposals (agent identifiers, activity logs, guardrails) do not survive an agent that keeps rewriting itself. We propose the governable individual: an agent whose competence may change without bound, but whose authority, memory schema, embodiment rights and capability roster can widen only through signed lifecycle transitions that update a public identity commitment. In our tests, neither learned judgement nor behavioural testing was sufficient to carry this on its own; the load-bearing layer must be architectural. We describe the abstraction, a runtime mechanism that realizes it, and the open problems in between.

引用

@article{arxiv.2607.05463,
  title  = {Governable Individuals: An Identity Layer for Embodied Agents That Keep Learning},
  author = {Xue Qin and Simin Luan and Cong Yang and Zhijun Li},
  journal= {arXiv preprint arXiv:2607.05463},
  year   = {2026}
}

备注

Perspective paper. Companion technical report with proofs and empirical evaluation to be posted separately on arXiv