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Review and application of functional data analysis to chemical data-The example of the comparison, classification, and database search of forensic ink chromatograms

机译:功能数据分析在化学数据中的回顾和应用-法医墨水色谱图的比较,分类和数据库搜索示例

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Functional data analysis is a relatively recent statistical method that can be applied to any dataset that can be thought of as a function. Functional data analysis considers functions as random elements. Modem chromatographic or spectroscopic techniques typically record analytical outputs as a function of time or wavelength. The purpose of this paper is to investigate the potential of functional data analysis for the characterization, comparison, and classification of chemical data. Forensic examination of ink is used as the main example in this paper as it covers different aspects of functional data analysis: (a) thin-layer chromatograms resulting from analysis of ink samples are characterized as functions of time and wavelength; (b) multiple samples analyzed at different times, or by different analysts, are registered into a common space; (c) a dimension reduction technique is applied to the sample functions to enable (d) their use for comparing between ink samples and for clustering large databases of inks. Our algorithms showed excellent performance and can readily be implemented to search and retrieve chemical profiles in large databases. From a theoretical standpoint, functional data analysis allows for a natural extension of multivariate analysis to datasets that can be thought of as functions. Algorithmically, functional data analysis proves to be a powerful technique that enables to detect functions minima and maxima, register multiple functions to a common space, and control the dimensionality and smoothness of a functional dataset Nevertheless, we found that the implementation of functional data analysis is computationally complex when compared to classic multivariate analysis. (C) 2015 Elsevier B.V. All rights reserved.
机译:功能数据分析是一种相对较新的统计方法,可以应用于可以视为函数的任何数据集。功能数据分析将功能视为随机元素。现代色谱或光谱技术通常将分析输出记录为时间或波长的函数。本文的目的是研究功能数据分析在化学数据的表征,比较和分类方面的潜力。本文以墨水的法医检查为主要示例,因为它涵盖了功能数据分析的不同方面:(a)墨水样品分析产生的薄层色谱图具有时间和波长的函数; (b)将在不同时间或由不同分析人员分析的多个样本注册到一个公共空间中; (c)将降维技术应用于样本函数,以使(d)将其用于在墨水样本之间进行比较以及对大型墨水数据库进行聚类。我们的算法表现出出色的性能,可以很容易地实现以在大型数据库中搜索和检索化学特征。从理论的角度来看,功能数据分析允许将多元分析自然扩展到可以视为功能的数据集。从算法上讲,功能数据分析被证明是一种强大的技术,能够检测功能的最小值和最大值,将多个功能注册到一个公共空间,并控制功能数据集的维数和平滑度。然而,我们发现功能数据分析的实现是与经典多元分析相比,计算复杂。 (C)2015 Elsevier B.V.保留所有权利。

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