InqEduAgent: Adaptive AI Learning Partners with Gaussian Process Augmentation
Abstract
Collaborative partnership matters in inquiry-oriented education. However, most study partners are selected either rely on experience-based assignments with little scientific planning or build on rule-based machine assistants, encountering difficulties in knowledge expansion and inadequate flexibility. This paper proposes an LLM-empowered agent model for simulating and selecting learning partners tailored to inquiry-oriented learning, named InqEduAgent. Generative agents are designed to capture cognitive and evaluative features of learners in real-world scenarios. Then, an adaptive matching algorithm with Gaussian process augmentation is formulated to identify patterns within prior knowledge. Optimal learning-partner matches are provided for learners facing different exercises. The experimental results show the optimal performance of InqEduAgent in most knowledge-learning scenarios and LLM environment with different levels of capabilities. This study promotes the intelligent allocation of human-based learning partners and the formulation of AI-based learning partners. The code, data, and appendix are publicly available at https://github.com/InqEduAgent/InqEduAgent.
Cite
@article{arxiv.2508.03174,
title = {InqEduAgent: Adaptive AI Learning Partners with Gaussian Process Augmentation},
author = {Wen-Xi Yang and Tian-Fang Zhao and Guan Liu and Liang Yang and Zi-Tao Liu and Wei-Neng Chen},
journal= {arXiv preprint arXiv:2508.03174},
year = {2025}
}