In this paper we propose to use the object-oriented Bayesian network architecture to model measurement errors. We then apply our model to the Italian Survey on Household Income and Wealth (SHIW) 2008. Attention is focused on errors caused by the respondents. The parameters of the error model are estimated using a validation sample. The network is used to stochastically impute micro data for households. In particular imputation is performed also using an auxiliary variable. Indices are calculated to evaluate the performance of the correction procedure and show that accounting for auxiliary information improves the results. Finally, potentialities and possible extensions of the Bayesian network approach both to the measurement error conte...
Measurement error is the difference between the value provided by the respondent and the true (but u...
In this paper the problem of detection and correction of errors in the Banca d’Italia Survey on Hous...
In this paper the use of non-parametric Bayesian belief networks for modeling measurement error in ...
In this paper we propose to use the object-oriented Bayesian network architecture to model measureme...
In this paper we propose to use the Object-Oriented Bayesian Networks architecture to model measure...
In this paper we propose to use the Object-Oriented Bayesian Networks architecture to model measure...
In this paper we propose to use the Object-Oriented Bayesian Networks architecture to model measure...
In this paper we propose to use the object-oriented Bayesian networks (OOBNs) architecture to model...
Measurement error is the difference between a feature value provided by the respondent and the corre...
In this article, the quality of data produced by national statistical institutes and by governmenta...
Variables are rarely, if ever, measured without error. In this paper we propose to use the Object-Or...
Variables are rarely, if ever, measured without error. In this paper we propose to use the Object-O...
Variables are rarely, if ever, measured without error. In this paper we propose to use the Object-O...
In this article, Object-Oriented Bayesian Networks (OOBN) are proposed as a tool to model measureme...
In this paper a procedure for measurement error correction based on nonparametric Bayesian networks...
Measurement error is the difference between the value provided by the respondent and the true (but u...
In this paper the problem of detection and correction of errors in the Banca d’Italia Survey on Hous...
In this paper the use of non-parametric Bayesian belief networks for modeling measurement error in ...
In this paper we propose to use the object-oriented Bayesian network architecture to model measureme...
In this paper we propose to use the Object-Oriented Bayesian Networks architecture to model measure...
In this paper we propose to use the Object-Oriented Bayesian Networks architecture to model measure...
In this paper we propose to use the Object-Oriented Bayesian Networks architecture to model measure...
In this paper we propose to use the object-oriented Bayesian networks (OOBNs) architecture to model...
Measurement error is the difference between a feature value provided by the respondent and the corre...
In this article, the quality of data produced by national statistical institutes and by governmenta...
Variables are rarely, if ever, measured without error. In this paper we propose to use the Object-Or...
Variables are rarely, if ever, measured without error. In this paper we propose to use the Object-O...
Variables are rarely, if ever, measured without error. In this paper we propose to use the Object-O...
In this article, Object-Oriented Bayesian Networks (OOBN) are proposed as a tool to model measureme...
In this paper a procedure for measurement error correction based on nonparametric Bayesian networks...
Measurement error is the difference between the value provided by the respondent and the true (but u...
In this paper the problem of detection and correction of errors in the Banca d’Italia Survey on Hous...
In this paper the use of non-parametric Bayesian belief networks for modeling measurement error in ...