Understanding learning as a dynamic process is challenging due to the interaction of multiple factors, including cognitive load, internal state change, and subjective evaluation. Existing approaches often address these elements in isolation, limiting the ability to describe learning phenomena within a unified and structurally explicit framework. This paper proposes a multi-layer formal descriptive framework for learning dynamics. Rather than offering a predictive or prescriptive model, the framework introduces a symbolic language composed of state variables, mappings, and layer-specific responsibilities, enabling consistent description of learning processes without commitment to specific functional forms or optimization objectives. This descriptive framework is intended to serve as a structural substrate for analyzing learning processes in human learners, and by extension, in adaptive and Al-assisted learning systems. A central design principle is the explicit separation of descriptive responsibilities across layers, distinguishing load generation, internal understanding transformation, observation, and evaluation. Within this structure, cognitive load is treated as a relational quantity arising from interactions between external input and internal organization, while subjective evaluation is modeled as a minimal regulatory interface responding to learning dynamics and environmental conditions. By emphasizing descriptive clarity and extensibility, the framework provides a common language for organizing existing theories and supporting future empirical and theoretical work.
翻译:理解学习作为一种动态过程具有挑战性,这源于认知负荷、内部状态变化和主观评价等多重因素的相互作用。现有方法通常孤立地处理这些要素,限制了在统一且结构明确的框架内描述学习现象的能力。本文提出了一种用于学习动力学的多层形式化描述框架。该框架并非提供一个预测性或规定性模型,而是引入一种由状态变量、映射和层特定职责组成的符号语言,从而能够在不承诺特定函数形式或优化目标的情况下,对学习过程进行一致的描述。此描述框架旨在作为分析人类学习者学习过程的结构基础,并进而推广至自适应和AI辅助学习系统。一个核心设计原则是明确分离各层的描述职责,区分负荷生成、内部理解转化、观察和评价。在此结构中,认知负荷被视为由外部输入与内部组织相互作用产生的关系量,而主观评价则被建模为一个对学习动力学和环境条件做出响应的最小调节接口。通过强调描述的清晰性和可扩展性,该框架为组织现有理论以及支持未来的实证和理论工作提供了一种共同语言。