ArXiv TLDR

LLM-Based Educational Simulation: Evaluating Temporal Student Persona Stability Across ADHD Profiles

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2605.06307

Jana Gonnermann-Müller, Jennifer Haase, Nicolas Leins, Thomas Kosch, Sebastian Pokutta

cs.HC

TLDR

LLMs can simulate student personas, but their stability, especially for ADHD profiles, depends on structured interaction design, crucial for valid educational applications.

Key contributions

  • Assessed LLM student persona stability for ADHD profiles across various models and prompt designs.
  • Self-reported characteristics of high-intensity personas remained stable.
  • Unscripted dialogues showed behavioral drift for moderate/high ADHD personas.
  • Scripted interactions with explicit tasks completely eliminated this behavioral drift.

Why it matters

Valid LLM-based student simulations are vital for educational research and teacher training. This paper identifies a key challenge—persona drift—and provides a practical solution: structured interaction design. This ensures more reliable and coherent simulated learners for critical applications like adaptive tutoring.

Original Abstract

Student simulation with Large language models (LLMs) offers a scalable alternative for educational research and teacher training. Yet, its validity depends on whether models maintain stable personas across extended interactions. We test this prerequisite using a dual-assessment framework measuring self-reported characteristics and observer-rated behavioral expressions. Across two experiments testing four clinically-grounded ADHD persona conditions, five LLMs, and three prompt designs, we quantify between-conversation stability (N=4,968) and within-conversation stability (N=3,952 across 9 turns). Self-reported characteristics remain stable for high intensities, constituting a necessary prerequisite for valid behavioral simulation. Observer-rated behavioral expression reveals selective instability: within-conversation drift occurs in unscripted dialog for high and moderate ADHD personas. Scripted interactions with explicit task prompts eliminate this drift entirely. Stable, persona-aligned simulated learners benefit from a structured interaction design to maintain behavioral coherence, which holds significant implications for teacher training, adaptive tutoring, and any application requiring sustained, path-dependent learner interactions.

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