Generalized Monotone Additive Latent Variable Models

S. Sardy, Maria-Pia Victoria-Feser
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Abstract

For manifest variables with additive noise and for a given number of latent variables with an assumed distribution, we propose to nonparametrically estimate the association between latent and manifest variables. Our estimation is a two step procedure: first it employs standard factor analysis to estimate the latent variables as theoretical quantiles of the assumed distribution; second, it employs the additive models’ backfitting procedure to estimate the monotone nonlinear associations between latent and manifest variables. The estimated fit may suggest a different latent distribution or point to nonlinear associations. We show on simulated data how, based on mean squared errors, the nonparametric estimation improves on factor analysis. We then employ the new estimator on real data to illustrate its use for exploratory data analysis.
广义单调加性潜变量模型
对于具有加性噪声的显性变量和具有假设分布的给定数量的潜在变量,我们建议对潜在变量和显性变量之间的关联进行非参数估计。我们的估计是一个两步的过程:首先,它使用标准因子分析来估计潜在变量作为假设分布的理论分位数;其次,它采用加性模型的反拟合过程来估计潜在变量和显变量之间的单调非线性关联。估计的拟合可能表明一个不同的潜在分布或指向非线性关联。我们在模拟数据中展示了基于均方误差的非参数估计如何改进因子分析。然后,我们将新的估计器应用于实际数据,以说明其在探索性数据分析中的应用。
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