Latent class analysis has beer recently proposed for the multiple imputation (MI) of missing categorical data, using either a standard frequentist approach or a nonparametric Bayesian model called Dirichlet process mixture of multinomial distributions (DPMM). The main advantage of using a latent class model for multiple imputation is that it is very flexible in the sense that it car capture complex relationships in the data given that the number of latent classes is large enough. However, the two existing approaches also have certain disadvantages. The frequentist approach is computationally demanding because it requires estimating many LC models: first models with different number of classes should be estimated to determine the required nu...
We propose an approach for multiple imputation of items missing at random in large-scale surveys wi...
<p>This thesis develops Bayesian latent class models for nested categorical data, e.g., people neste...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...
This paper provides an overview of recent proposals for using latent class models for the multiple i...
With this article, we propose using a Bayesian multilevel latent class (BMLC; or mixture) model for ...
We propose using latent class analysis as an alternative to log-linear analysis for the multiple imp...
We propose using latent class analysis as an alternative to log-linear analysis for the multiple imp...
This work advances an imputation procedure for categorical scales which relays on the results of Lat...
<p>Multiple imputation is a common approach for dealing with missing values in statistical databases...
We studied four methods for handling incomplete categorical data in statistical modeling: (1) maximu...
Both registers and sample surveys can contain measurement error. While some errors are invisibly pre...
In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown ...
In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown ...
Most of the background variables in MICS (Multiple Indicator Cluster Surveys) are categorical with m...
In a latent class IRT model in which the latent classes are ordered on one dimension, the class spe-...
We propose an approach for multiple imputation of items missing at random in large-scale surveys wi...
<p>This thesis develops Bayesian latent class models for nested categorical data, e.g., people neste...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...
This paper provides an overview of recent proposals for using latent class models for the multiple i...
With this article, we propose using a Bayesian multilevel latent class (BMLC; or mixture) model for ...
We propose using latent class analysis as an alternative to log-linear analysis for the multiple imp...
We propose using latent class analysis as an alternative to log-linear analysis for the multiple imp...
This work advances an imputation procedure for categorical scales which relays on the results of Lat...
<p>Multiple imputation is a common approach for dealing with missing values in statistical databases...
We studied four methods for handling incomplete categorical data in statistical modeling: (1) maximu...
Both registers and sample surveys can contain measurement error. While some errors are invisibly pre...
In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown ...
In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown ...
Most of the background variables in MICS (Multiple Indicator Cluster Surveys) are categorical with m...
In a latent class IRT model in which the latent classes are ordered on one dimension, the class spe-...
We propose an approach for multiple imputation of items missing at random in large-scale surveys wi...
<p>This thesis develops Bayesian latent class models for nested categorical data, e.g., people neste...
<div><p>Identifying the number of classes in Bayesian finite mixture models is a challenging problem...