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The independent factor analysis approach to latent variable modelling

机译:潜在变量建模的独立因素分析方法

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摘要

Independent factor analysis (IFA) has recently been proposed in the signal processing literature as a way to model a set of observed variables through linear combinations of latent independent variables and a noise term. A peculiarity of the method is that it defines a probability density function for the latent variables by mixtures of Gaussians. The aim of this paper is to cast the method into a more rigorous statistical framework and to propose some developments. In the first part, we present the IFA model in its population version, address identifiability issues and draw some parallels between the IFA model and the ordinary factor analysis (FA) one. Then we show that the IFA model may be reinterpreted as an independent component analysis-based rotation of an ordinary FA solution. We also give evidence that the IFA model represents a special case of mixture of factor analysers. In the second part, we address inferential issues, also deriving the standard errors for the model parameter estimates and providing model selection criteria. Finally, we present some empirical results on real data sets.
机译:最近在信号处理文献中提出了独立因子分析(IFA),以作为通过潜在独立变量和噪声项的线性组合对一组观察变量建模的方法。该方法的独特之处在于,它通过混合高斯来定义潜在变量的概率密度函数。本文的目的是将方法转换为更严格的统计框架,并提出一些进展。在第一部分中,我们以人口版本介绍了IFA模型,解决了可识别性问题,并在IFA模型和普通因子分析(FA)模型之间得出了一些相似之处。然后我们表明,IFA模型可以重新解释为普通FA解决方案的基于独立成分分析的旋转。我们还提供了证据,即IFA模型代表因子分析器混合的特殊情况。在第二部分中,我们解决了推论性问题,还推导了模型参数估计的标准误差并提供了模型选择标准。最后,我们在真实数据集上给出一些经验结果。

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