CogEvolution: A Human-like Generative Educational Agent to Simulate Student's Cognitive Evolution

arXiv cs.AI / 4/17/2026

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Key Points

  • The paper introduces CogEvolution, a human-like generative educational agent designed to simulate a student’s cognitive evolution rather than relying on static student personas.
  • It builds a “cognitive depth perceptron” using the ICAP (Interactive, Constructive, Active, Passive) taxonomy to precisely quantify learner cognitive engagement during practice.
  • To model how students connect and internalize new knowledge, it proposes a memory retrieval approach grounded in Item Response Theory (IRT).
  • It uses an evolutionary-algorithm-based dynamic cognitive update mechanism to reflect real-time cognitive state transitions and learning behavior integration.
  • Experiments show CogEvolution improves behavioral fidelity and learning-curve fitting over baseline models and can generate plausible, robust cognitive evolutionary trajectories aligned with educational psychology.

Abstract

Generative Agents, owing to their precise modeling and simulation capabilities of human behavior, have become a pivotal tool in the field of Artificial Intelligence in Education (AIEd) for uncovering complex cognitive processes of learners. However, existing educational agents predominantly rely on static personas to simulate student learning behaviors, neglecting the decisive role of deep cognitive capabilities in learning outcomes during practice interactions. Furthermore, they struggle to characterize the dynamic fluidity of knowledge internalization, transfer, and cognitive state transitions. To overcome this bottleneck, this paper proposes a human-like educational agent capable of simulating student cognitive evolution: CogEvolution. Specifically, we first construct a cognitive depth perceptron based on the Interactive, Constructive, Active, Passive (ICAP) taxonomy from cognitive psychology, achieving precise quantification of learner cognitive engagement. Subsequently, we propose a memory retrieval method based on Item Response Theory (IRT) to simulate the connection and assimilation of new and prior knowledge. Finally, we design a dynamic cognitive update mechanism based on evolutionary algorithms to simulate the real-time integration of student learning behaviors and cognitive evolution processes. Comprehensive evaluations demonstrate that CogEvolution not only significantly outperforms baseline models in behavioral fidelity and learning curve fitting but also uniquely reproduces plausible and robust cognitive evolutionary paths consistent with educational psychology expectations, providing a novel paradigm for constructing highly interpretable educational agents.

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