Geoscience language models and their intrinsic evaluation

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Applied Computing and Geosciences Pub Date : 2022-06-01 DOI:10.1016/j.acags.2022.100084
Christopher J.M. Lawley , Stefania Raimondo , Tianyi Chen , Lindsay Brin , Anton Zakharov , Daniel Kur , Jenny Hui , Glen Newton , Sari L. Burgoyne , Geneviève Marquis
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引用次数: 5

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).

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地球科学语言模型及其内在评价
地球科学家通过对岩石记录的观察和描述来研究地球的起源和历史,这导致了大量的科学文献。自然语言处理(NLP)的最新进展有可能从非结构化文本中解析和提取知识,但到目前为止,在地球科学特定的概念和词汇方面的工作有限。在这里,我们收集和处理公共地球科学报告(即加拿大联邦和省级地质调查出版物数据库)以及开放获取和同行评审出版物的子集,以培训新的,地球科学特定的语言模型,以解决知识差距。使用一系列新的地球科学特定的NLP任务(即类比,聚类,相关性和最近邻分析)来验证语言模型的性能,这些任务是作为当前研究的一部分开发的。国家地质调查原始语料库、语言模型、评价标准首次公开。我们证明了使用地球科学语料库更新的非上下文(即用于单词表示的全局向量,GloVe)和上下文(即来自Transformers的双向编码器表示,BERT)语言模型在每个评估标准上都优于这些模型的通用版本。主成分分析进一步表明,在地球科学文本上训练的词嵌入捕获有意义的语义关系,包括岩石分类、矿物性质和成分,以及元素的地球化学行为。从向量空间中出现的语义关系有可能解锁非结构化文本中的潜在知识,也许更重要的是,也突出了其他下游以地球科学为重点的NLP任务的潜力(例如,关键字预测、文档相似性、推荐系统、岩石和矿物分类)。
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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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