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Detection of material property errors in handbooks and databases using artificial neural networks with hidden correlations

机译:使用具有隐藏相关性的人工神经网络检测手册和数据库中的材料属性错误

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摘要

The authors have discovered a systematic, intelligent and potentially automatic method to detect errors in handbooks and stop their transmission using unrecognised relationships between materials properties. The scientific community relies on the veracity of scientific data in handbooks and databases, some of which have a long pedigree covering several decades. Although various outlier-detection procedures are employed to detect and, where appropriate, remove contaminated data, errors, which had not been discovered by established methods, were easily detected by our artificial neural network in tables of properties of the elements. We started using neural networks to discover unrecognised relationships between materials properties and quickly found that they were very good at finding inconsistencies in groups of data. They reveal variations from 10 to 900% in tables of property data for the elements and point out those that are most probably correct. Compared with the statistical method adopted by Ashby and co-workers [Proc. R. Soc. Lond. Ser. A 454 (1998) p. 1301, 1323], this method locates more inconsistencies and could be embedded in database software for automatic self-checking. We anticipate that our suggestion will be a starting point to deal with this basic problem that affects researchers in every field. The authors believe it may eventually moderate the current expectation that data field error rates will persist at between 1 and 5%.
机译:作者发现了一种系统的,智能的,可能是自动的方法,可以使用材料属性之间无法识别的关系来检测手册中的错误并阻止其传播。科学界依赖于手册和数据库中科学数据的准确性,其中一些具有数十年的悠久血统。尽管采用了各种异常值检测程序来检测并在适当情况下删除受污染的数据,但我们的人工神经网络却在元素属性表中很容易地检测出了用既定方法未发现的错误。我们开始使用神经网络来发现材料属性之间无法识别的关系,并很快发现它们非常擅长发现数据组中的不一致之处。它们揭示了元素的属性数据表中从10%到900%的变化,并指出了最有可能正确的变化。与Ashby及其同事采用的统计方法相比[Proc。 R. Soc。 nd老师A 454(1998)。 [1301,1323],此方法定位更多的不一致之处,并且可以嵌入数据库软件中以进行自动自检。我们希望我们的建议将成为处理影响每个领域研究人员的基本问题的起点。作者认为,最终可能会缓和目前对数据字段错误率将持续在1-5%之间的预期。

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  • 来源
    《Philosophical Magazine》 |2010年第33期|p.4453-4474|共22页
  • 作者单位

    a Department of Materials, Queen Mary University of London, Mile End Road, London, E1 4NS, UK b Department of Chemistry, University College London, 20 Gordon Street, London, WC1H 0AJ, UK;

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