知识图
石油工业
萃取(化学)
计算机科学
化石燃料
石油工程
自然语言处理
人工智能
工程类
化学
色谱法
废物管理
环境工程
作者
L. M. Parra-Navarro,Elvis de Souza,Marco Aurélio C. Pacheco
标识
DOI:10.5753/stil.2024.31172
摘要
This paper presents a detailed methodology for extracting and analyzing data from a knowledge graph designed to store complex geological information. Our pipeline was designed after a deep understanding of the KG, focuses on browsing, querying and transforming data using curated text templates. The extraction methodology is based on graph triples, key classes, properties and relationships, which ensures the relevance and truthfulness of the data obtained. With the recent advancements in neural large language models, which perform exceptionally well on open-domain tasks, our work addresses the challenge of presenting LLMs with accurate closed-domain data—originating from graph-based sources—in a readable and accessible textual format.
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