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Interpretation of the Probabilistic Principal Components Analysis with Anisotropic Gaussian Distribution of Latent Variables

机译:潜在变量的各向异性高斯分布对概率主成分分析的解释

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Principal component analysis (PCA) is a well established technique for data analysis and processing. Recently, it has been shown that the principal axes of a set of observed data vectors might be determined trough maximum likelihood estimation of parameter in a specific form of latent variable model closely related to factor analysis. It is assumed that the latent variables have a unit isotropic Gaussian distribution. In view of this, in this study, we express some interpretation for covariance between PPCs, correlation between PPCs and variables, and covariance matrix between PPCs and PCs in common PCA case. Further, we consider more general case in which the latent variables are independent with different variances. We also investigate properties of the associated likelihood function.
机译:主成分分析(PCA)是一种成熟的数据分析和处理技术。最近,已经表明,可以通过与因子分析密切相关的潜变量模型的特定形式,通过参数的最大似然估计来确定一组观察到的数据向量的主轴。假定潜变量具有单位各向同性的高斯分布。有鉴于此,在本研究中,我们对常见PCA情况下PPC之间的协方差,PPC与变量之间的相关性以及PPC与PC之间的协方差矩阵进行了一些解释。此外,我们考虑了更一般的情况,其中潜在变量是独立的且具有不同的方差。我们还研究了相关似然函数的性质。

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