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Engineering Critical Analysis Software Services: a Graph-Rag and Self-Learning Large Language Model Agent Services Approach

H. Yu,Brian Scanlon,Stephan Reiff-Marganiec

2025 · DOI: 10.1109/SOSE67019.2025.00005
International Symposium on Service Oriented Software Engineering · 0 Citations

TLDR

This paper presents Graph-RAG and Self-learning LLM-based Agent Services Framework for structured reasoning and knowledge-driven analysis, which integrates graph-enhanced retrieval mechanisms with self-learning Large Language Models to improve critical analysis and domain-specific decision-making.

Abstract

This paper presents Graph-RAG and Self-learning LLM-based Agent Services Framework for structured reasoning and knowledge-driven analysis. The proposed approach integrates graph-enhanced retrieval mechanisms with self-learning Large Language Models (LLMs) to improve critical analysis and domain-specific decision-making. The framework is evaluated using Air Accidents Investigation Branch (AAIB) Publications Reports, which provide structured, investigative narratives aimed at preventing future aviation incidents rather than assigning blame. By leveraging graph-based knowledge learning, the framework enhances causal reasoning, multimodal response generation, and retrieval accuracy, demonstrating its capability to support structured problem analysis based on real-world investigative experiences. Experimental results show significant improvements in hallucination mitigation, retrieval precision, and real-time performance when compared to standard Retrieval-Augmented Generation (RAG) models. The findings highlight the potential of graph-augmented self-learning LLMs in transforming automated analytical workflows, paving the way for enhanced visual knowledge exploration and structured decisionsupport systems.

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