4.7 Article

Information extraction and knowledge graph construction from geoscience literature

Journal

COMPUTERS & GEOSCIENCES
Volume 112, Issue -, Pages 112-120

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.cageo.2017.12.007

Keywords

Geological corpus; Knowledge graph; Geoscience literature; Chinese word segmentation; Chord and bigram graphs

Funding

  1. National Key R&D Program of China [2017YFC0601500, 2017YFC0601504]
  2. China Geological Survey through the project of Research and Application of Big Data in geoscience [201511079-02]
  3. National Science Foundation (NSF) through the NSF Idaho EPSCoR Program [IIA-1301792]
  4. Computers and Geosciences Research Scholarships of IAMG
  5. Office of Integrative Activities
  6. Office Of The Director [1301792] Funding Source: National Science Foundation

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Geoscience literature published online is an important part of open data, and brings both challenges and opportunities for data analysis. Compared with studies of numerical geoscience data, there are limited works on information extraction and knowledge discovery from textual geoscience data. This paper presents a workflow and a few empirical case studies for that topic, with a focus on documents written in Chinese. First, we set up a hybrid corpus combining the generic and geology terms from geology dictionaries to train Chinese word segmentation rules of the Conditional Random Fields model. Second, we used the word segmentation rules to parse documents into individual words, and removed the stop-words from the segmentation results to get a corpus constituted of content-words. Third, we used a statistical method to analyze the semantic links between content words, and we selected the chord and bigram graphs to visualize the content-words and their links as nodes and edges in a knowledge graph, respectively. The resulting graph presents a clear overview of key information in an unstructured document. This study proves the usefulness of the designed workflow, and shows the potential of leveraging natural language processing and knowledge graph technologies for geoscience.

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