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首页> 外文期刊>Applied Geochemistry: Journal of the International Association of Geochemistry and Cosmochemistry >Sequential Factor Analysis as a new approach to multivariate analysis of heterogeneous geochemical datasets: An application to a bulk chemical characterization of fluvial deposits (Rhine-Meuse delta, The Netherlands)
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Sequential Factor Analysis as a new approach to multivariate analysis of heterogeneous geochemical datasets: An application to a bulk chemical characterization of fluvial deposits (Rhine-Meuse delta, The Netherlands)

机译:序列因子分析作为异质地球化学数据集多元分析的一种新方法:在河流沉积物的整体化学表征中的应用(荷兰,莱茵-默兹三角洲)

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摘要

Sequential Factor Analysis (seqFA) is presented here as all enhanced alternative to multivariate factorial techniques including robust and classical Factor Analysis (FA) or Principal Component Analysis (PCA). A geochemical data set of 145 sediment samples from very heterogeneous, mainly riverine, deposits of the Rhine-Meuse delta (The Netherlands) analyzed for 27 bulk parameters was used as a test case. The innovative approach explicitly addresses the priority issues when performing PCA or FA: heterogeneity and overall integrity of the data, the number of factors to be extracted, and which optimum minimal set of key variables to be included in the model. The stepwise decision process is based on quantitative and objectively derived statistical criteria, yet also permitting arguments based on geochemical expertize. The results show that seqFA, preferably in combination with robust methods, yields a highly consistent factor model, and is favorable over classical methods when dealing with heterogeneous data sets. It optimizes rotation of the factors, and allows the extraction of less distinct factors supported by only a few variables, thus uncovering additional geochemical processes and properties that would easily be missed with other approaches. The identification of key variables simplifies the geochemical interpretation of the factors, and greatly facilitates the construction of a geochemical conceptual model. For the case of the fluvial deposits, the conceptual model effectively describes their bulk chemical variation in terms of a limited number of governing processes. (c) 2005 Elsevier Ltd. All rights reserved.
机译:此处介绍了顺序因子分析(seqFA),它是多变量因子分析技术的所有增强替代方案,包括健壮和经典的因子分析(FA)或主成分分析(PCA)。以莱茵河-默兹河三角洲(荷兰)的非常异质(主要为河流)矿床的145个沉积物样品的地球化学数据集为例,对27个体积参数进行了分析。该创新方法明确地解决了执行PCA或FA时的优先级问题:数据的异质性和整体完整性,要提取的因子数量以及模型中要包含的最佳关键变量的最小集合。逐步决策过程基于定量和客观得出的统计标准,但也允许基于地球化学专业知识的论点。结果表明,seqFA(最好与鲁棒方法结合使用)可产生高度一致的因子模型,并且在处理异构数据集时优于经典方法。它优化了因子的旋转,并允许仅由几个变量支持的较少差异的因子的提取,从而揭示了其他方法容易忽略的其他地球化学过程和特性。关键变量的识别简化了对这些因素的地球化学解释,并极大地促进了地球化学概念模型的构建。对于河床沉积物,概念模型有效地描述了其在有限的治理过程中的整体化学变化。 (c)2005 Elsevier Ltd.保留所有权利。

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