Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

When I run 'glm' in R, the 'gender' variable is suffixed by M (for male). Does it has any special meaning or there is something wrong in my code

>as.formula('response ~ gender + age + var1 +var2+var3+var4')
  response ~ gender + age + var1 + var2 + var3 + var4
>model <- try(glm(formula = fmla,   na.action=na.exclude , data = tmpData));

                           Estimate Std. Error t value Pr(>|t|)    
(Intercept)                   27.5192512  0.7215193  38.141  < 2e-16 ***
genderM                       -3.1572328  0.3952508  -7.988 1.87e-15 ***
age                            0.0078203  0.0139269   0.562   0.5745    
var1                          -0.0007449  0.0004484  -1.661   0.0968 .  
var2                           0.0284026  0.0017356  16.365  < 2e-16 ***
var3                           0.0007293  0.0005172   1.410   0.1586    
var4                           0.0854644  0.0418632   2.042   0.0413 *  
share|improve this question

That's because you have defined gender as a factor (check the output of class(gender)). glm() treats each level of the factor other than the reference level (the first one in levels(gender)) as a dummy dichotomous variable (0 or 1) in the model, and outputs a regression coefficient for each.

If your factor had n levels, you would have n-1 dummy variables. If your factor has only two levels, as yours probably has, you only get one dummy variable and the coefficient is the same as if you had a numeric 0 or 1 variable.

share|improve this answer

It is as if you had a dummy 0-1 variable, where 1 stands for gender being M (and presumably 0 stands for F). So you are saying that allowing for the other variables, responses for cases with gender taking the value M are about 3 below responses for cases with F.

Try this example

mdata <- melt(UCBAdmissions) 
glm(mdata$value ~ mdata$Gender + mdata$Admit + mdata$Dept)

and you will get something similar. The values for mdata$DeptB and other departments are differences from the base position for DeptA.

share|improve this answer

The contrast coefficients used for each variable in a linear model are determined by the contrasts attribute, which you can see and change by using the contrasts() function, e.g.:

mdata <- melt(UCBAdmissions)
glm(mdata$value ~ mdata$Gender + mdata$Admit + mdata$Dept)
contrasts(mdata$Gender) <- c(-0.5, 0.5) # Use "deviation coding" instead
glm(mdata$value ~ mdata$Gender + mdata$Admit + mdata$Dept)

The default contrast coding for unordered factors is treatment contrasts/dummy coding. If you're unsure about the differences between these types of contrast coding, you may want to look at stats.stackexchange.com.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.