cs.AI updates on arXiv.org 07月31日 12:48
Agent-centric learning: from external reward maximization to internal knowledge curation
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文章提出代表能力这一概念,强调智能体内部知识结构的可控维持与多样化,以实现更佳的适应性,并认为塑造自身理解的能力是实现更好准备度的关键。

arXiv:2507.22255v1 Announce Type: cross Abstract: The pursuit of general intelligence has traditionally centered on external objectives: an agent's control over its environments or mastery of specific tasks. This external focus, however, can produce specialized agents that lack adaptability. We propose representational empowerment, a new perspective towards a truly agent-centric learning paradigm by moving the locus of control inward. This objective measures an agent's ability to controllably maintain and diversify its own knowledge structures. We posit that the capacity -- to shape one's own understanding -- is an element for achieving better ``preparedness'' distinct from direct environmental influence. Focusing on internal representations as the main substrate for computing empowerment offers a new lens through which to design adaptable intelligent systems.

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