Date
Publisher
arXiv
Effective teaching requires adapting instructional strategies to accommodate
the diverse cognitive and behavioral profiles of students, a persistent
challenge in education and teacher training. While Large Language Models (LLMs)
offer promise as tools to simulate such complex pedagogical environments,
current simulation frameworks are limited in two key respects: (1) they often
reduce students to static knowledge profiles, and (2) they lack adaptive
mechanisms for modeling teachers who evolve their strategies in response to
student feedback. To address these gaps, \textbf{we introduce a novel
simulation framework that integrates LLM-based heterogeneous student agents
with a self-optimizing teacher agent}. The teacher agent's pedagogical policy
is dynamically evolved using a genetic algorithm, allowing it to discover and
refine effective teaching strategies based on the aggregate performance of
diverse learners. In addition, \textbf{we propose Persona-RAG}, a Retrieval
Augmented Generation module that enables student agents to retrieve knowledge
tailored to their individual learning styles. Persona-RAG preserves the
retrieval accuracy of standard RAG baselines while enhancing personalization,
an essential factor in modeling realistic educational scenarios. Through
extensive experiments, we demonstrate how our framework supports the emergence
of distinct and interpretable teaching patterns when interacting with varied
student populations. Our results highlight the potential of LLM-driven
simulations to inform adaptive teaching practices and provide a testbed for
training human educators in controlled, data-driven environments.
What is the application?
Who age?
Why use AI?
Study design