Way to Specialist: Closing Loop Between Specialized LLM and Evolving Domain Knowledge Graph
Yutong Zhang, Lixing Chen, Shenghong Li, Nan Cao, Yang Shi, Jiaxin, Ding, Zhe Qu, Pan Zhou, Yang Bai

TL;DR
This paper introduces the Way-to-Specialist framework that enhances large language models' domain-specific reasoning by creating a bidirectional loop with knowledge graphs, enabling continuous learning without extensive domain-specific training.
Contribution
The paper proposes a novel bidirectional LLM-KG paradigm that dynamically evolves domain knowledge graphs and improves LLM reasoning without specialized training.
Findings
WTS surpasses previous SOTA in 4 out of 5 domains.
Achieves up to 11.3% performance improvement.
Demonstrates effective continuous domain knowledge learning.
Abstract
Large language models (LLMs) have demonstrated exceptional performance across a wide variety of domains. Nonetheless, generalist LLMs continue to fall short in reasoning tasks necessitating specialized knowledge. Prior investigations into specialized LLMs focused on domain-specific training, which entails substantial efforts in domain data acquisition and model parameter fine-tuning. To address these challenges, this paper proposes the Way-to-Specialist (WTS) framework, which synergizes retrieval-augmented generation with knowledge graphs (KGs) to enhance the specialized capability of LLMs in the absence of specialized training. In distinction to existing paradigms that merely utilize external knowledge from general KGs or static domain KGs to prompt LLM for enhanced domain-specific reasoning, WTS proposes an innovative "LLMKG" paradigm, which achieves bidirectional…
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Taxonomy
TopicsData Mining Algorithms and Applications · Artificial Intelligence in Law · Semantic Web and Ontologies
