# Binary variable in a linear regression in R? [closed]

I have a binary variable (biological sex) and I am concerned about the sign (positive or negative) of the estimate in my linear regression. In my `data.frame`, female is coded as 2 and male is coded as 1. I'm considering recoding it so that female is coded as 0 and male is coded as 1.

In either of these scenarios, how can I interpret the sign of the estimate? For example, if my outcome is height, I would expect a positive value if female is 0 and male is 1. But if female is 2 and male is 1, wouldn't I expect a negative value for an outcome of height?

• I’m voting to close this question because it is not about programing as defined in the help center. – Ian Campbell Jul 7 at 14:40

I think your statement is correct. If you don't want to recode the variable just use `as.factor(sex)` in the formula itself. Than R knows that the value is not nummeric and you dont have to worry about the coding of the variable.

Let me know if this helps or if you have furhter questions :)

• brilliant thank you! that works perfectly – goose144 Jul 7 at 21:45
• Thats nice :) Can you accept the awnser as the "best", so others who see this, and have the same problem, know that it worked? – Elias Jul 8 at 11:00
• gotchu, thanks for pointing that out – goose144 Jul 8 at 15:50

Code sex as a categorical variable (class `factor`). R will then specify to which sex the value corresponds.

``````set.seed(1234)
x = data.frame(sex = factor(sample(c("female", "male"), size = 20, replace = TRUE)),
var = rnorm(20))
lm(var ~ sex, x)

# Call:
# lm(formula = var ~ sex, data = x)

# Coefficients:
# (Intercept)      sexmale
#    -0.31066      0.08228
``````

This means that in males, values in the variable `var` increase.