Methods of Statistical Model Estimation examines the most
important and popular methods used to estimate parameters for
statistical models and provide informative model summary
statistics. Designed for R users, the book is also ideal for anyone
wanting to better understand the algorithms used for statistical
model fitting.
The text presents algorithms for the estimation of a variety of
regression procedures using maximum likelihood estimation,
iteratively reweighted least squares regression, the EM algorithm,
and MCMC sampling. Fully developed, working R code is constructed
for each method. The book starts with OLS regression and
generalized linear models, building to two-parameter maximum
likelihood models for both pooled and panel models. It then covers
a random effects model estimated using the EM algorithm and
concludes with a Bayesian Poisson model using Metropolis-Hastings
sampling.
The book's coverage is innovative in several ways. First, the
authors use executable computer code to present and connect the
theoretical content. Therefore, code is written for clarity of
exposition rather than stability or speed of execution. Second, the
book focuses on the performance of statistical estimation and
downplays algebraic niceties. In both senses, this book is written
for people who wish to fit statistical models and understand
them.
See Professor Hilbe discuss the book.
General
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