Latent Markov Models for Longitudinal Data

Regular price €61.50
Quantity:
Ships in 10-20 days
Delivery/Collection within 10-20 working days
Shipping & Delivery
A01=Alessio Farcomeni
A01=Francesco Bartolucci
A01=Fulvia Pennoni
analysis of categorical longitudinal data
Author_Alessio Farcomeni
Author_Francesco Bartolucci
Author_Fulvia Pennoni
Basic LC Model
bayesian
Bayesian inference as an alternative to maximum likelihood inference
Bayesian inference methods
BIC Index
Binary Response Variables
categorical data analysis
Category=JMB
Category=PBT
chain
Cluster Level Covariates
Complete Data Log Likelihood
conditional
Conditional Response Probabilities
criteria for selecting the number of latent states
criterion
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
expectation maximization algorithm
hidden
hidden Markov models
information
Lagged Response Variables
latent class model
Latent Markov Chain
Latent Markov Models
Latent Variable
Latent Variable Models
LC Model
Lm
Lm Model
Log fY
Markov chain model
maximum likelihood estimation
Maximum Log Likelihood
MC Model
multilevel statistical modeling
Multivariate Longitudinal Data
Nr Algorithm
Posterior Distribution
probabilities
Proportional Odds Model
response
RJ Algorithm
Simulated Posterior Distribution
statistical and econometric models
Time Occasions
transition
transition analysis with measurement error
Transition Matrix
Transition Probabilities
variables

Product details

  • ISBN 9781032477541
  • Weight: 400g
  • Dimensions: 156 x 234mm
  • Publication Date: 21 Jan 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
Secure checkout Fast Shipping Easy returns

Drawing on the authors’ extensive research in the analysis of categorical longitudinal data, Latent Markov Models for Longitudinal Data focuses on the formulation of latent Markov models and the practical use of these models. Numerous examples illustrate how latent Markov models are used in economics, education, sociology, and other fields. The R and MATLAB® routines used for the examples are available on the authors’ website.

The book provides you with the essential background on latent variable models, particularly the latent class model. It discusses how the Markov chain model and the latent class model represent a useful paradigm for latent Markov models. The authors illustrate the assumptions of the basic version of the latent Markov model and introduce maximum likelihood estimation through the Expectation-Maximization algorithm. They also cover constrained versions of the basic latent Markov model, describe the inclusion of the individual covariates, and address the random effects and multilevel extensions of the model. After covering advanced topics, the book concludes with a discussion on Bayesian inference as an alternative to maximum likelihood inference.

As longitudinal data become increasingly relevant in many fields, researchers must rely on specific statistical and econometric models tailored to their application. A complete overview of latent Markov models, this book demonstrates how to use the models in three types of analysis: transition analysis with measurement errors, analyses that consider unobserved heterogeneity, and finding clusters of units and studying the transition between the clusters.

Francesco Bartolucci is a professor of statistics in the Department of Economics, Finance and Statistics at the University of Perugia, where he also coordinates the Ph.D. program in mathematical and statistical methods for the economic and social sciences. His main research interests include latent variable models for cross-sectional and longitudinal categorical data, with applications ranging from educational and psychometric contexts to the analysis of labor market data.

Alessio Farcomeni is a researcher at the University of Rome "La Sapienza". His interests range from analysis of panel data and categorical time series to multiple testing, multivariate analysis and clustering, and model selection.

Fulvia Pennoni is an assistant professor of statistics in the Department of Statistics at the University of Milano-Bicocca. Her main expertise encompasses latent variable modeling. She is currently carrying out research in methods and statistics with intensive statistical programming applications.

More from this author