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arXiv 提交日期: 2026-04-09
📄 Abstract - Agentivism: a learning theory for the age of artificial intelligence

Learning theories have historically changed when the conditions of learning evolved. Generative and agentic AI create a new condition by allowing learners to delegate explanation, writing, problem solving, and other cognitive work to systems that can generate, recommend, and sometimes act on the learner's behalf. This creates a fundamental challenge for learning theory: successful performance can no longer be assumed to indicate learning. Learners may complete tasks effectively with AI support while developing less understanding, weaker judgment, and limited transferable capability. We argue that this problem is not fully captured by existing learning theories. Behaviourism, cognitivism, constructivism, and connectivism remain important, but they do not directly explain when AI-assisted performance becomes durable human capability. We propose Agentivism, a learning theory for human-AI interaction. Agentivism defines learning as durable growth in human capability through selective delegation to AI, epistemic monitoring and verification of AI contributions, reconstructive internalization of AI-assisted outputs, and transfer under reduced support. The importance of Agentivism lies in explaining how learning remains possible when intelligent delegation is easy and human-AI interaction is becoming a persistent and expanding part of human learning.

顶级标签: agents theory machine learning
详细标签: learning theory human-ai interaction delegation capability development agentic ai 或 搜索:

代理主义:人工智能时代的一种学习理论 / Agentivism: a learning theory for the age of artificial intelligence


1️⃣ 一句话总结

本文提出了一种名为“代理主义”的新学习理论,旨在解释在人工智能(AI)可以轻松代劳认知工作的新时代,人类如何通过与AI进行有选择地委托、监督、内化和迁移,实现自身能力的持久增长,而不仅仅是依赖AI完成任务。

源自 arXiv: 2604.07813