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Taxamatch an Algorithm for Near (‘Fuzzy’) Matching of Scientific Names in Taxonomic Databases

机译:分类匹配一种用于分类数据库中科学名称的近(模糊)匹配的算法

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摘要

Misspellings of organism scientific names create barriers to optimal storage and organization of biological data, reconciliation of data stored under different spelling variants of the same name, and appropriate responses from user queries to taxonomic data systems. This study presents an analysis of the nature of the problem from first principles, reviews some available algorithmic approaches, and describes Taxamatch, an improved name matching solution for this information domain. Taxamatch employs a custom Modified Damerau-Levenshtein Distance algorithm in tandem with a phonetic algorithm, together with a rule-based approach incorporating a suite of heuristic filters, to produce improved levels of recall, precision and execution time over the existing dynamic programming algorithms n-grams (as bigrams and trigrams) and standard edit distance. Although entirely phonetic methods are faster than Taxamatch, they are inferior in the area of recall since many real-world errors are non-phonetic in nature. Excellent performance of Taxamatch (as recall, precision and execution time) is demonstrated against a reference database of over 465,000 genus names and 1.6 million species names, as well as against a range of error types as present at both genus and species levels in three sets of sample data for species and four for genera alone. An ancillary authority matching component is included which can be used both for misspelled names and for otherwise matching names where the associated cited authorities are not identical.
机译:生物科学名称的拼写错误为生物数据的最佳存储和组织,以相同名称的不同拼写变量存储的数据的协调以及用户查询到分类数据系统的适当响应提供了障碍。这项研究从第一条原则对问题的本质进行了分析,回顾了一些可用的算法方法,并介绍了Taxamatch,这是该信息领域的一种改进的名称匹配解决方案。 Taxamatch结合使用自定义的修改的Damerau-Levenshtein距离算法和语音算法,结合包含启发式过滤器套件的基于规则的方法,与现有的动态编程算法相比,产生了更高的召回率,精度和执行时间。克(如二字和三字)和标准编辑距离。尽管完全语音方法比Taxamatch更快,但由于许多现实世界中的错误本质上都是非语音的,因此它们在召回方面较差。在超过465,000个属名称和160万个物种名称的参考数据库以及三类属和物种级别同时存在的一系列错误类型中,证明了Taxamatch的出色性能(召回率,准确性和执行时间)样本数据和单独属的四个样本数据。包含一个辅助权限匹配组件,该组件可用于拼写错误的名称以及在关联的引用权限不同的情况下匹配名称。

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    Tony Rees;

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  • 年(卷),期 -1(9),9
  • 年度 -1
  • 页码 e107510
  • 总页数 27
  • 原文格式 PDF
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