Practical Guide to Logistic Regression

Regular price €248.00
Quantity:
Ships in 10-20 days
Delivery/Collection within 10-20 working days
Shipping & Delivery
3rd Qu
A01=Joseph M. Hilbe
advanced logistic regression techniques
Author_Joseph M. Hilbe
Bayesian Logistic Regression
Beta Binomial Model
BIC Statistic
binary classification
binomial
Binomial Link
categorical data
Category=PBT
Conditional Effects Plot
Continuous Predictor
data
deviance
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
freedom
Freedom AIC
Freedom Residual Deviance
genmod
GLM Model
goodness-of-fit
grouped data modeling
Grouped Logistic Regression
health outcomes analysis
Linear Predictor
link
Logistic Model
logistic regression
model
model evaluation
Model Fit
Non-informative Priors
Null Deviance
Obtain Odds Ratio
overdispersion
Pearson Chi2
Pearson Residual
penalized regression methods
Posterior Distribution
predictive modeling
proc
Proc Genmod Data
Profile Confidence Intervals
R programming statistics
residual
Residual Deviance
Roc Curve
statistical inference
Statistical Model

Product details

  • ISBN 9781138469433
  • Weight: 490g
  • Dimensions: 138 x 216mm
  • Publication Date: 28 Jun 2018
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
Secure checkout Fast Shipping Easy returns

Practical Guide to Logistic Regression covers the key points of the basic logistic regression model and illustrates how to use it properly to model a binary response variable. This powerful methodology can be used to analyze data from various fields, including medical and health outcomes research, business analytics and data science, ecology, fisheries, astronomy, transportation, insurance, economics, recreation, and sports. By harnessing the capabilities of the logistic model, analysts can better understand their data, make appropriate predictions and classifications, and determine the odds of one value of a predictor compared to another.

Drawing on his many years of teaching logistic regression, using logistic-based models in research, and writing about the subject, Professor Hilbe focuses on the most important features of the logistic model. Serving as a guide between the author and readers, the book explains how to construct a logistic model, interpret coefficients and odds ratios, predict probabilities and their standard errors based on the model, and evaluate the model as to its fit. Using a variety of real data examples, mostly from health outcomes, the author offers a basic step-by-step guide to developing and interpreting observation and grouped logistic models as well as penalized and exact logistic regression. He also gives a step-by-step guide to modeling Bayesian logistic regression.

R statistical software is used throughout the book to display the statistical models while SAS and Stata codes for all examples are included at the end of each chapter. The example code can be adapted to readers own analyses. All the code is available on the author‘s website.

Joseph M. Hilbe is a Solar System Ambassador with NASA's Jet Propulsion Laboratory at the California Institute of Technology, an adjunct professor of statistics at Arizona State University, and an emeritus professor at the University of Hawaii. He also teaches five web-based courses on statistical modeling at Statistics.com. He is president of the International Astrostatistics Association, elected fellow of the American Statistical Association, elected member of the International Statistical Institute, and full member of the American Astronomical Society.
Professor Hilbe is one of the world's leading statisticians in modeling discrete and longitudinal data. He has authored 16 books related to statistical modeling, including the best-selling Logistic Regression Models and Modeling Count Data.
During the late 1980s and 1990s, Professor Hilbe was a leading figure in the then new area of health outcomes research, serving as director of research at a national chain of hospitals and later CEO of a national health economics firm. He was also on the executive committee forming the Health Policy Statistics Section of the American Statistical Association.

More from this author