University of Genova, Department of Pharmacy, Viale Cembrano, 4, I-16148 Genova, Italy.
Anal Chim Acta. 2017 Aug 22;982:9-19. doi: 10.1016/j.aca.2017.05.013. Epub 2017 May 29.
Qualitative data modelling is a fundamental branch of pattern recognition, with many applications in analytical chemistry, and embraces two main families: discriminant and class-modelling methods. The first strategy is appropriate when at least two classes are meaningfully defined in the problem under study, while the second strategy is the right choice when the focus is on a single class. For this reason, class-modelling methods are also referred to as one-class classifiers. Although, in the food analytical field, most of the issues would be properly addressed by class-modelling strategies, the use of such techniques is rather limited and, in many cases, discriminant methods are forcedly used for one-class problems, introducing a bias in the outcomes. Key aspects related to the development, optimisation and validation of suitable class models for the characterisation of food products are critically analysed and discussed.
定性数据分析是模式识别的一个基本分支,在分析化学中有许多应用,包括两个主要领域:判别和分类建模方法。当研究问题中至少有两个有意义的类别时,第一种策略是合适的,而当重点是单个类别时,第二种策略是正确的选择。因此,分类建模方法也被称为单类分类器。尽管在食品分析领域,大多数问题都可以通过分类建模策略来妥善解决,但这些技术的应用相当有限,而且在许多情况下,对于单类问题也被迫使用判别方法,从而导致结果存在偏差。本文批判性地分析和讨论了与开发、优化和验证适合食品特征化的分类模型相关的关键方面。