This book is made of different reseach problems which have in common the presence of latent variables. In the first part undirected and directed graphical models are considered and in the case of Gaussian continuous variables the author shows that the specification of a complex multivariate distribution through univariate regressions induced by a Directed Acyclic Graph (DAG) can be regarded as a simplification. The Expectation-Maximization algorithm is considered for the maximum likelihood estimation of the model parameters and the author illustrates a method for obtaining an explicit formula of the observed information matrix using the missing information principle. An essential background on the latent class model is given as well its extension to study latent changes over time. The Hidden Markov model is presented consisting of hidden states and observed variables both varying over time. The latent class cluster model is extended by proposing a latent model that also incorporates the longitudinal structure of the data by using a local likelihood approach. Some examples illustrate the use of the models in criminology and education. A detailed bibliography is provided

Pennoni, F. (2014). Issues on the estimation of latent variable and latent class models. Scholars'Press.

Issues on the estimation of latent variable and latent class models

PENNONI, FULVIA
2014

Abstract

This book is made of different reseach problems which have in common the presence of latent variables. In the first part undirected and directed graphical models are considered and in the case of Gaussian continuous variables the author shows that the specification of a complex multivariate distribution through univariate regressions induced by a Directed Acyclic Graph (DAG) can be regarded as a simplification. The Expectation-Maximization algorithm is considered for the maximum likelihood estimation of the model parameters and the author illustrates a method for obtaining an explicit formula of the observed information matrix using the missing information principle. An essential background on the latent class model is given as well its extension to study latent changes over time. The Hidden Markov model is presented consisting of hidden states and observed variables both varying over time. The latent class cluster model is extended by proposing a latent model that also incorporates the longitudinal structure of the data by using a local likelihood approach. Some examples illustrate the use of the models in criminology and education. A detailed bibliography is provided
Monografia o trattato scientifico - Monografia di Ricerca - Prima edizione
criminal trajectories; directed acyclic graph model; latent class model; Expectation Maximization algorithm; standard errors
English
giu-2014
9783639716580
Scholars'Press
128
https://www.scholars-press.com/catalog/index
Pennoni, F. (2014). Issues on the estimation of latent variable and latent class models. Scholars'Press.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/52729
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