Skip to content

Logistic Regression Using SAS Theory and Application, Second Edition

Best in textbook rentals since 2012!

ISBN-10: 1599946416

ISBN-13: 9781599946412

Edition: 2nd 2012

Authors: Paul D. Allison

List price: $70.95
Shipping box This item qualifies for FREE shipping.
Blue ribbon 30 day, 100% satisfaction guarantee!

Rental notice: supplementary materials (access codes, CDs, etc.) are not guaranteed with rental orders.

what's this?
Rush Rewards U
Members Receive:
Carrot Coin icon
XP icon
You have reached 400 XP and carrot coins. That is the daily max!

Description:

If you are a researcher or student with experience in multiple linear regression and want to learn about logistic regression, Paul Allison's Logistic Regression Using SAS: Theory and Application, Second Edition, is for you! Informal and nontechnical, this book both explains the theory behind logistic regression, and looks at all the practical details involved in its implementation using SAS. Several real-world examples are included in full detail. This book also explains the differences and similarities among the many generalizations of the logistic regression model. The following topics are covered: binary logistic regression, logit analysis of contingency tables, multinomial logit…    
Customers also bought

Book details

List price: $70.95
Edition: 2nd
Copyright year: 2012
Publisher: SAS Institute
Publication date: 3/30/2012
Binding: Paperback
Pages: 348
Size: 8.00" wide x 10.50" long x 0.75" tall
Weight: 2.002
Language: English

Paul D. Allison, Ph.D., is Professor of Sociology at the University of Pennsylvania where he teaches graduate courses in methods and statistics. He is also the founder and president of Statistical Horizons LLC which offers short courses on a wide variety of statistical topics. After completing his doctorate in sociology at the University of Wisconsin, he did postdoctoral study in statistics at the University of Chicago and the University of Pennsylvania. He has published eight books and more than 60 articles on topics that include linear regression, log-linear analysis, logistic regression, structural equation models, inequality measures, missing data, and survival analysis. Much of his…