KnowledgeNavigator: Leveraging Large Language Models for Enhanced
Reasoning over Knowledge Graph
- URL: http://arxiv.org/abs/2312.15880v2
- Date: Fri, 19 Jan 2024 06:42:16 GMT
- Title: KnowledgeNavigator: Leveraging Large Language Models for Enhanced
Reasoning over Knowledge Graph
- Authors: Tiezheng Guo and Qingwen Yang and Chen Wang and Yanyi Liu and Pan Li
and Jiawei Tang and Dapeng Li and Yingyou Wen
- Abstract summary: Large language model (LLM) has achieved outstanding performance on various downstream tasks with its powerful natural language understanding and zero-shot capability, but LLM still suffers from knowledge limitation.
We propose a novel framework KnowledgeNavigator to address these challenges by efficiently and accurately retrieving external knowledge from knowledge graph.
We evaluate KnowledgeNavigator on multiple public KGQA benchmarks, the experiments show the framework has great effectiveness and generalization.
- Score: 11.808990571175269
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Large language model (LLM) has achieved outstanding performance on various
downstream tasks with its powerful natural language understanding and zero-shot
capability, but LLM still suffers from knowledge limitation. Especially in
scenarios that require long logical chains or complex reasoning, the
hallucination and knowledge limitation of LLM limit its performance in question
answering (QA). In this paper, we propose a novel framework KnowledgeNavigator
to address these challenges by efficiently and accurately retrieving external
knowledge from knowledge graph and using it as a key factor to enhance LLM
reasoning. Specifically, KnowledgeNavigator first mines and enhances the
potential constraints of the given question to guide the reasoning. Then it
retrieves and filters external knowledge that supports answering through
iterative reasoning on knowledge graph with the guidance of LLM and the
question. Finally, KnowledgeNavigator constructs the structured knowledge into
effective prompts that are friendly to LLM to help its reasoning. We evaluate
KnowledgeNavigator on multiple public KGQA benchmarks, the experiments show the
framework has great effectiveness and generalization, outperforming previous
knowledge graph enhanced LLM methods and is comparable to the fully supervised
models.
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