Application of Fuzzy Measures to Move Towards Cyber-Taxonomy

Richardson Ciguene, Aurélien Miralles, Francis Clément
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Abstract

The species inventory of global biodiversity is constantly revised and refined by taxonomic research, through the addition of newly discovered species and the reclassification of known species. This almost three-century-old project provides essential knowledge for humankind. In particular, knowledge of biodiversity establishes a foundation for developing appropriate conservation strategies. An accurate global inventory of species relies on the study of millions of specimens housed all around the world in natural history collections. For the last two decades, biological taxonomy has generated an increasing amount of data every year, and notably through the digitization of collection specimens, has gradually been transformed into a big data science. In recognition of this trend, the French National Museum of Natural History has embarked on a major research and engineering challenge within its information system: the adoption of cyber-taxonomic practices that require easy access to data on specimens housed in natural history collections all over the world. To this end, an important step is to automatically complete and reconcile the heterogeneous classification data usually associated with specimens managed in different collection databases. We describe here a new fuzzy approach to reconciling the classifications in multiple databases, enabling more accurate taxonomic retrieval of specimen data across databases.
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应用模糊测度迈向网络分类法
分类学研究通过增加新发现的物种和对已知物种的重新分类,不断修订和完善全球生物多样性物种清单。这个几乎有三个世纪历史的项目为人类提供了必要的知识。特别是,生物多样性知识为制定适当的保护战略奠定了基础。准确的全球物种清单依赖于对世界各地自然历史收藏中数百万个标本的研究。近二十年来,生物分类学每年产生的数据量不断增加,特别是通过采集标本的数字化,逐渐转变为一门大数据科学。认识到这一趋势,法国国家自然历史博物馆在其信息系统中开始了一项重大的研究和工程挑战:采用网络分类实践,这需要方便地访问世界各地自然历史馆藏标本的数据。为此,一个重要的步骤是自动完成和协调通常与不同采集数据库中管理的标本相关的异构分类数据。我们在这里描述了一种新的模糊方法来协调多个数据库中的分类,使跨数据库的标本数据更准确的分类检索。
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