Overview of computational methods in taphonomy based on the combination of bibliometric analysis and natural language.

IF 1.1 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES Anais da Academia Brasileira de Ciencias Pub Date : 2024-08-05 eCollection Date: 2024-01-01 DOI:10.1590/0001-3765202420230789
Ronaldo A Leoni, Laís Alves-Silva, Hermínio Ismael DE Araújo-Júnior
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Abstract

Artificial intelligence tools are new in taphonomy and are growing fast. They are being used mainly to investigate bone surface marks. In order to investigate this subject, a bibliometric study was made to understand the growing rate of this intersectional field, the future, and gaps in the field until now. From Scopus and Google Scholar metadata, graphs were made to describe the data, and inferential statistics were made by regression with the Ordinary Least Squares method. Exploratory analysis with word clouds, topic modeling, and natural language processing with Latent Dirichlet Allocation as a method were also made using the entire corpus from the papers. From the first register until 2023, we found eight articles in Scopus and 32 in Google Scholar; the majority of the studies and the most cited were from Spain. The studies are growing fast from 2016 to 2018, and the regression shows that growth can be maintained in the coming years. Exploratory analysis shows the most frequent words are marks, models, data, and bone. Topic modeling shows that the studies are highly concentrated on similar problems and the tools to solve them, revealing that there is much more to explore with computational tools in taphonomy and paleontology as well.

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基于文献计量分析和自然语言相结合的考古学计算方法概述。
人工智能工具在古乐彩网学领域是一个新生事物,发展迅速。它们主要用于研究骨骼表面的痕迹。为了研究这一课题,我们进行了一项文献计量学研究,以了解这一交叉领域的发展速度、未来以及该领域目前存在的差距。根据 Scopus 和 Google Scholar 的元数据,制作了图表来描述数据,并通过普通最小二乘法进行回归推断统计。此外,还利用论文的整个语料库进行了词云探索性分析、主题建模和以潜在德里希特分配为方法的自然语言处理。从第一次注册到 2023 年,我们在 Scopus 和 Google Scholar 分别发现了 8 篇和 32 篇文章;大多数研究和被引用次数最多的研究都来自西班牙。从 2016 年到 2018 年,这些研究增长迅速,回归结果表明,未来几年还能保持增长。探索性分析表明,出现频率最高的词是mark、models、data和bone。主题建模显示,这些研究高度集中于类似的问题和解决这些问题的工具,揭示了在岩石学和古生物学领域还有更多的计算工具值得探索。
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来源期刊
Anais da Academia Brasileira de Ciencias
Anais da Academia Brasileira de Ciencias 综合性期刊-综合性期刊
CiteScore
2.20
自引率
0.00%
发文量
347
审稿时长
1 months
期刊介绍: The Brazilian Academy of Sciences (BAS) publishes its journal, Annals of the Brazilian Academy of Sciences (AABC, in its Brazilianportuguese acronym ), every 3 months, being the oldest journal in Brazil with conkinuous distribukion, daking back to 1929. This scienkihic journal aims to publish the advances in scienkihic research from both Brazilian and foreigner scienkists, who work in the main research centers in the whole world, always looking for excellence. Essenkially a mulkidisciplinary journal, the AABC cover, with both reviews and original researches, the diverse areas represented in the Academy, such as Biology, Physics, Biomedical Sciences, Chemistry, Agrarian Sciences, Engineering, Mathemakics, Social, Health and Earth Sciences.
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