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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));
>summary(model) 
>    

                           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 *  
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3 Answers

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

require(reshape)
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.

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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.

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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.:

require(reshape)
mdata <- melt(UCBAdmissions)
contrasts(mdata$Gender)
glm(mdata$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.

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