## Generalized Linear Models: An Applied ApproachThis brief and economical text shows students with relatively little mathematical background how to understand and apply sophisticated linear regression models in their research areas within the social, behavioral, and medical sciences, as well as marketing, and business. Less theoretical than competing texts, Hoffman includes numerous exercises and worked-out examples and sample programs and data sets for three popular statistical software programs: SPSS, SAS, and Stata. |

### What people are saying - Write a review

We haven't found any reviews in the usual places.

### Contents

A Review of the Linear Regression Model | 1 |

Introduction to Generalized Linear Models | 22 |

Logistic and Probit Regression Models | 45 |

Copyright | |

8 other sections not shown

### Common terms and phrases

_cons analysis approach associated assume assumption binary Chapter chi2 Code libname glm Coef cohab command line compute Conf count variables Cox model data set delinquency dependent variable deviance residuals discussed drug educate Equation estimate event history models example exponential females gender glm place data libname glm place linear models linear regression linear regression model link function Log likelihood logistic model logistic regression model males marijuana marriage measure multilevel models multinomial distribution multinomial logistic regression negative binomial regression non-white normally distributed Number of obs observations odds ratio OLS regression model ordered logistic ordered probit ordinal outcomes p-values P>lzl parameter place data subdirectory plot Poisson distribution Poisson regression Poisson regression model polviewl predicted probabilities predicted values Prob probit model proc genmod Pseudo R2 race regression coefficients sample SAS Code libname satlife set glm.gss96 simply spanking SPSS SPSS Syntax standard errors Stata statistical software strongly disagreeing volteer zero