基于构成美国GDP的宏观经济因素,即个人消费支出、国内私人投资总额、商品和服务净出口以及政府消费支出和总投资,应用主成分分析(PCA)。

Michel Guirguis
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摘要

在本文中,我们测试了个人消费支出、国内私人投资总额、商品和服务净出口、政府消费支出和总投资等宏观经济变量的自然对数年回报对美国国内生产总值(GDP)的相关性和协方差关系。我们在EViews 6中应用了主成分分析(PCA)来检查特征值,相关矩阵和协方差矩阵的特征向量负载。使用这种方法的目的是双重的。首先,确定变量之间的相关程度。其次,通过消去因子来降低变量间的变异维数。通过相关矩阵我们发现,大部分宏观经济变量的相关系数都大于0.5,它们表现出很强的正线性相关关系。宏观变量之间也存在线性弱负相关和正相关。在降维方面,我们发现因子1和因子2的特征值大于1。具体来说,因子1的值为3.14,因子2的值为1.09。因此,我们将保留两个因素。对于特征值图,我们发现因子1的比例为62.73%,因子2的比例为21.74%。前两个分量分别占总变异量的84.47%。公共协方差矩阵的残差大部分是正的,这意味着变量一起增加。正态载荷双标图显示,第一个分量占总变异的比例最高,为62.7%,五个变量均为正载荷。第二个分量的值占总变异的21.7%。它对政府消费支出和总投资(GCEGI)具有正的可变负荷,对国内私人投资总额(GPDI)和商品和服务净出口(NEGS)具有负的可变负荷。总数据集包括1980 - 2012年的年度数据,共有33个观测值。对数年回报的总数据占32个观测值。数据来自美国经济分析局(BEA)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of a Principal Component Analysis, (PCA), Based on the Macroeconomic Factors, Namely, Personal Consumption Expenditures, Gross Private Domestic Investment, Net Export of Goods and Services and Government Consumption Expenditures and Gross Investment that Constitute The US GDP.
In this article, we have tested the correlation and covariance relationships that the natural logarithmic yearly returns of the macroeconomic variables in terms of personal consumption expenditures, gross private domestic investment, net export of goods and services and government consumption expenditures and gross investment, have on the US Gross domestic product, (GDP). We have applied a principal component analysis, (PCA), in EViews 6 to check the eigenvalues, the eigenvectors loadings of the correlation matrix and the covariance matrix. The aim by using this methodology is twofold. Firstly, to identify the degree of correlation between the variables. Secondly to reduce the dimension of variation between the variables by eliminating the factors. We have found though the correlation matrix that most of the correlation coefficients of the macroeconomic variables are greater than 0.5 and they show very strong positive linear correlation. There is also linear weak negative and positive correlation between the macro variables. In terms of dimensionality reduction, we have found that factors 1 and 2 have an eigenvalues greater than 1. Specifically, factor 1 has a value of 3.14 and factor 2 has a value of 1.09. Thus, the factors that we will retain are two. Concerning, eigenvalues figures, we have found that the proportion for factor 1 is 62.73% and for factor 2 is 21.74% of the total variance. The first two components namely account for 84.47% of the total variation. Most of the residuals of the common covariance matrix are positive, which mean that the variables increase together. The orthonormal loadings biplot shows that the first component has the highest proportion of total variation, which is 62.7% and positive loadings for all five variables. The second component has a value of 21.7% of total variation. It has a positive variable loadings for government consumption expenditures and gross investment, (GCEGI) and negative variable loadings for gross private domestic investment, (GPDI), and net export of goods and services, (NEGS). The total dataset includes annual data starting from 1980 to 2012 and total to 33 observations. The total data of the logarithmic yearly returns account to 32 observations. The data was obtained from the US Bureau of Economic Analysis, (BEA).
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