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  • 标题:Phyloreferences: Tree-Native, Reproducible, and Machine-Interpretable Taxon Concepts
  • 本地全文:下载
  • 作者:Nico Cellinese orcid logo ; Stijn Conix orcid logo ; Hilmar Lapp
  • 期刊名称:Philosophy, Theory, and Practice in Biology
  • 电子版ISSN:2475-3025
  • 出版年度:2022
  • 卷号:14
  • DOI:10.3998/ptpbio.2101
  • 语种:English
  • 出版社:Michigan Publishing
  • 摘要:Evolutionary and organismal biology have become inundated with data. At the same rate, we are experiencing a surge in broader evolutionary and ecological syntheses for which tree-thinking is the staple for a variety of post-tree analyses. To fully take advantage of this wealth of data to discover and understand large-scale evolutionary and ecological patterns, computational data integration, i.e., the use of machines to link data at large scale, is crucial. The most common shared entity by which evolutionary and ecological data need to be linked is the taxon to which they belong. We propose a set of requirements that a system for defining such taxa should meet for computational data science: taxon definitions should maintain conceptual consistency, be reproducible via a known algorithm, be computationally automatable, and be applicable across the Tree of Life. We argue that Linnaean names, the most prevalent means of linking data to taxa, fail to meet these requirements due to fundamental theoretical and practical shortfalls. We argue that for the purposes of data-integration we should instead use phylogenetic definitions transformed into formal logic expressions. We call such expressions phyloreferences, and argue that, unlike Linnaean names, they meet all requirements for effective data-integration.
  • 关键词:computational semantics;data integration;Linnaean names;phylogenetic definitions;phyloreferences;taxon concepts;tree of life
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