In this paper we propose to use the object-oriented Bayesian networks (OOBNs) architecture to model measurement errors in the Italian survey on household income and wealth (SHIW) 2008 when the variable of interest is categorical. The network is used to stochastically impute microdata for households. Imputation is performed both assuming a misreport probability constant over all the population and learning a Bayesian network for estimating such a probability. Finally, potentialities and possible extensions of this approach are discussed.

Object-Oriented Bayesian Network to Deal with Measurement Error in Household Surveys / Marella, D.; Vicard, P.. - (2015).

Object-Oriented Bayesian Network to Deal with Measurement Error in Household Surveys.

Marella D.;Vicard P.
2015

Abstract

In this paper we propose to use the object-oriented Bayesian networks (OOBNs) architecture to model measurement errors in the Italian survey on household income and wealth (SHIW) 2008 when the variable of interest is categorical. The network is used to stochastically impute microdata for households. Imputation is performed both assuming a misreport probability constant over all the population and learning a Bayesian network for estimating such a probability. Finally, potentialities and possible extensions of this approach are discussed.
2015
Advances in Statistical Models for Data Analysis
9783319173764
Categorical variable, Misreport probability, Mixed measurement model , Structural learning , Underreporting
02 Pubblicazione su volume::02a Capitolo o Articolo
Object-Oriented Bayesian Network to Deal with Measurement Error in Household Surveys / Marella, D.; Vicard, P.. - (2015).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1617518
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