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 ...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
We develop a general approach to factor analysis that involves observed and latent variables that ar...
We develop a general approach to factor analysis that involves observed and latent variables that ar...
For manifest variables with additive noise and for a given number of latent variables with an assume...
For manifest variables with additive noise and for a given number of latent variables with an assume...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...
In the low-dimensional case, the generalized additive coefficient model (GACM) proposed by Xue and Y...
We propose generalized additive partial linear models for complex data which allow one to capture no...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
We develop a general approach to factor analysis that involves observed and latent variables that ar...
We develop a general approach to factor analysis that involves observed and latent variables that ar...
For manifest variables with additive noise and for a given number of latent variables with an assume...
For manifest variables with additive noise and for a given number of latent variables with an assume...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...
AbstractIn this paper a nonparametric latent variable model is estimated without specifying the unde...
In the low-dimensional case, the generalized additive coefficient model (GACM) proposed by Xue and Y...
We propose generalized additive partial linear models for complex data which allow one to capture no...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
The doctoral thesis is focused on non-parametric nonlinear regression and additive modeling. Regres...
We develop a general approach to factor analysis that involves observed and latent variables that ar...
We develop a general approach to factor analysis that involves observed and latent variables that ar...