A hybrid knowledge graph for efficient exploration of lithostratigraphic information in open text data

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Applied Computing and Geosciences Pub Date : 2024-04-11 DOI:10.1016/j.acags.2024.100164
Wenjia Li , Xiaogang Ma , Xinqing Wang , Liang Wu , Sanaz Salati , Zhong Xie
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Abstract

Rocks formed during different geologic time record the diverse evolution of the geosphere and biosphere. In the past decades, substantial geoscience data have been made open access, providing invaluable resources for studying the stratigraphy in different regions and at different scales. However, many open datasets have information recorded in natural language with heterogeneous terminologies, short of efficient approaches to analyze them. In this research, we constructed a hybrid Stratigraphic Knowledge Graph (StraKG) to help address this challenge. StraKG has two layers, a simple schema layer and a rich instance layer. For the schemas, we used a short but functional list of classes and relationships, and then incorporated community-recognized terminologies from geological dictionaries. For the instances, we used natural language processing techniques to analyze open text data and obtained massive records, such as rocks and spatial locations. The nodes in the two layers were associated to establish a consistent structure of stratigraphic knowledge. To verify the functionality of StraKG, we applied it to the Baidu encyclopedia, the largest online Chinese encyclopedia. Three experiments were implemented on the topics of stratigraphic correlation, spatial distribution of ophiolite in China, and spatio-temporal distribution of open lithostratigraphic data. The results show that StraKG can provide strong knowledge reference for stratigraphic studies. Used together with data exploration and data mining methods, StraKG illustrates a new approach to analyze the open and big text data in geoscience.

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高效探索开放文本数据中岩石地层信息的混合知识图谱
不同地质时期形成的岩石记录了地圈和生物圈的不同演化过程。在过去几十年中,大量地球科学数据已经开放,为研究不同地区和不同尺度的地层学提供了宝贵的资源。然而,许多开放数据集的信息都是用自然语言记录的,术语不尽相同,缺乏有效的分析方法。在这项研究中,我们构建了一个混合地层知识图谱(StraKG)来帮助应对这一挑战。StraKG 有两层,一层是简单的模式层,另一层是丰富的实例层。对于模式,我们使用了一个简短但实用的类和关系列表,然后从地质词典中纳入了社区认可的术语。在实例方面,我们使用自然语言处理技术分析开放文本数据,获得了大量记录,如岩石和空间位置。两层中的节点被关联起来,以建立一致的地层知识结构。为了验证 StraKG 的功能,我们将其应用于最大的在线中文百科全书--百度百科全书。我们针对地层相关性、中国蛇绿岩空间分布和开放岩层数据时空分布三个主题进行了实验。结果表明,StraKG 可为地层研究提供有力的知识参考。StraKG 与数据探索和数据挖掘方法结合使用,为分析地球科学领域的开放式大文本数据提供了一种新方法。
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来源期刊
Applied Computing and Geosciences
Applied Computing and Geosciences Computer Science-General Computer Science
CiteScore
5.50
自引率
0.00%
发文量
23
审稿时长
5 weeks
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