GraphMASAL: A Graph-based Multi-Agent System for Adaptive Learning
Biqing Zeng, Mengquan Liu, Zongwei Zhen

TL;DR
GraphMASAL introduces a novel graph-based multi-agent system that dynamically models learner knowledge and plans personalized educational paths, outperforming existing methods in generating effective, interpretable, and pedagogically sound learning sequences.
Contribution
It presents an integrated system combining dynamic knowledge graphs, multi-agent orchestration, neural information retrieval, and optimization for adaptive, personalized learning path planning.
Findings
Outperforms LLM prompting and ablations in planning accuracy
Achieves higher coverage of weak concepts and lower learning costs
Validates effectiveness through expert and LLM-proxy ratings
Abstract
The advent of Intelligent Tutoring Systems (ITSs) has marked a paradigm shift in education, enabling highly personalized learning pathways. However, true personalization requires adapting to learners' complex knowledge states (multi-source) and diverse goals (multi-sink); existing ITSs often lack the necessary structural-reasoning capability and knowledge dynamism to generate genuinely effective learning paths, and they lack scientifically rigorous validation paradigms. In this paper we propose GraphMASAL (A Graph-based Multi-Agent System for Adaptive Learning), which integrates (i) a dynamic knowledge graph for persistent, stateful learner modeling; (ii) a LangGraph-orchestrated trio of agents (Diagnostician, Planner, Tutor); (iii) a knowledge-graph-grounded two-stage neural IR component (dual-encoder dense retrieval with cross-encoder listwise re-ranking and calibrated score fusion);…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Advanced Graph Neural Networks · Multimodal Machine Learning Applications
