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Geoscience language models and their intrinsic evaluation

Authors :
Christopher J.M. Lawley
Stefania Raimondo
Tianyi Chen
Lindsay Brin
Anton Zakharov
Daniel Kur
Jenny Hui
Glen Newton
Sari L. Burgoyne
Geneviève Marquis
Source :
Applied Computing and Geosciences, Vol 14, Iss , Pp 100084- (2022)
Publication Year :
2022
Publisher :
Elsevier, 2022.

Abstract

Geoscientists use observations and descriptions of the rock record to study the origins and history of our planet, which has resulted in a vast volume of scientific literature. Recent progress in natural language processing (NLP) has the potential to parse through and extract knowledge from unstructured text, but there has, so far, been only limited work on the concepts and vocabularies that are specific to geoscience. Herein we harvest and process public geoscientific reports (i.e., Canadian federal and provincial geological survey publications databases) and a subset of open access and peer-reviewed publications to train new, geoscience-specific language models to address that knowledge gap. Language model performance is validated using a series of new geoscience-specific NLP tasks (i.e., analogies, clustering, relatedness, and nearest neighbour analysis) that were developed as part of the current study. The raw and processed national geological survey corpora, language models, and evaluation criteria are all made public for the first time. We demonstrate that non-contextual (i.e., Global Vectors for Word Representation, GloVe) and contextual (i.e., Bidirectional Encoder Representations from Transformers, BERT) language models updated using the geoscientific corpora outperform the generic versions of these models for each of the evaluation criteria. Principal component analysis further demonstrates that word embeddings trained on geoscientific text capture meaningful semantic relationships, including rock classifications, mineral properties and compositions, and the geochemical behaviour of elements. Semantic relationships that emerge from the vector space have the potential to unlock latent knowledge within unstructured text, and perhaps more importantly, also highlight the potential for other downstream geoscience-focused NLP tasks (e.g., keyword prediction, document similarity, recommender systems, rock and mineral classification).

Details

Language :
English
ISSN :
25901974
Volume :
14
Issue :
100084-
Database :
Directory of Open Access Journals
Journal :
Applied Computing and Geosciences
Publication Type :
Academic Journal
Accession number :
edsdoj.27c033037f6046698a61a8556dcf50f6
Document Type :
article
Full Text :
https://doi.org/10.1016/j.acags.2022.100084