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SVD-based principal component analysis of geochemical data

机译:基于SVD的地球化学数据主成分分析

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Principal Component Analysis(PCA)was used for the mapping of geochemical data.A testing data matrix was prepared from the chemical and physical analyses of the coals altered by thermal and oxidation e?ects.PCA based on Singular Value Decomposition(SVD) of the standardized(centered and scaled by the standard deviation)data matrix revealed three principal components explaining 85.2% of the variance.Combining the scatter and components weights plots with knowledge of the composition of tested samples,the coal samples were divided into seven groups depending on the degree of their oxidation and thermal alteration. The PCA findings were verified by other multivariate methods.The relationships among geochemical variables were successfully confirmed by Factor Analysis(FA).The data structure was also described by the Average Group dendrogram using Euclidean distance.The found sample clusters were not defined so clearly as in the case of PCA.It can be explained by the PCA filtration of the data noise.
机译:使用主成分分析(PCA)绘制地球化学数据。通过对热和氧化作用改变后的煤进行化学和物理分析,制备了测试数据矩阵。基于奇异值分解(SVD)的PCA标准化(以标准偏差为中心并按标准偏差定标)的数据矩阵揭示了三个主要成分,解释了85.2%的方差。结合散点图和成分权重图并结合被测样品的成分,将煤样品分为7组氧化程度和热变化。通过其他多元方法验证了PCA的结果,通过因子分析(FA)成功地证实了地球化学变量之间的关系,并使用欧几里德距离通过平均群树状图描述了数据结构,发现的样品簇没有如此清晰地定义为对于PCA,可以通过PCA过滤数据噪声来解释。

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