# How to force R to use a specified factor level as reference in a regression?

How can I tell R to use a certain level as reference if I use binary explanatory variables in a regression?

It's just using some level by default.

``````lm(x ~ y + as.factor(b))
``````

with `b {0, 1, 2, 3, 4}`. Let's say I want to use 3 instead of the zero that is used by R.

• You should do the data processing step outside of the model formula/fitting. When creating the factor from `b` you can specify the ordering of the levels using `factor(b, levels = c(3,1,2,4,5))`. Do this in a data processing step outside the `lm()` call though. My answer below uses the `relevel()` function so you can create a factor and then shift the reference level around to suit as you need to. Oct 6, 2010 at 12:14
• I reworded your question. You're actually after changing the reference level, not leaving one out. Oct 6, 2010 at 12:39
• thx for rewording my question. Indeed, relevel() was what I was looking for. Thx for the detailed answer and the example though. I am not sure if the linear-regression tag is a bit misleading because this applies to all kinds of regression using dummy explanatories... Oct 7, 2010 at 8:52

See the `relevel()` function. Here is an example:

``````set.seed(123)
x <- rnorm(100)
DF <- data.frame(x = x,
y = 4 + (1.5*x) + rnorm(100, sd = 2),
b = gl(5, 20))
str(DF)

m1 <- lm(y ~ x + b, data = DF)
summary(m1)
``````

Now alter the factor `b` in `DF` by use of the `relevel()` function:

``````DF <- within(DF, b <- relevel(b, ref = 3))
m2 <- lm(y ~ x + b, data = DF)
summary(m2)
``````

The models have estimated different reference levels.

``````> coef(m1)
(Intercept)           x          b2          b3          b4          b5
3.2903239   1.4358520   0.6296896   0.3698343   1.0357633   0.4666219
> coef(m2)
(Intercept)           x          b1          b2          b4          b5
3.66015826  1.43585196 -0.36983433  0.25985529  0.66592898  0.09678759
``````
• To preseve the original variable, just don't use the `within`, but `df\$bR = relevel(df\$b, ref=3)`. Mar 16, 2017 at 10:49
• You can use relevel() inside your formula, wouldn't affect the original dataset... Aug 20, 2019 at 19:32
• Can one use this approach to plot all factor levels together in a coefficient plot? Oct 7, 2020 at 7:40

I know this is an old question, but I had a similar issue and found that:

``````lm(x ~ y + relevel(b, ref = "3"))
``````

• This was a big help! Only solution that included a way to do it within the lm() command which was exactly what I needed. Thanks! Jan 11, 2018 at 18:20
• This is a very flexible way of working with factors. I like the fact that I can combine it with `as.factor()` if needed, for instance by using `...+relevel(as.factor(mycol), ref = "myref")+...` Dec 11, 2018 at 12:47
• This is by far the best solution here! I love it. Sep 16, 2020 at 19:17

Others have mentioned the `relevel` command which is the best solution if you want to change the base level for all analyses on your data (or are willing to live with changing the data).

If you don't want to change the data (this is a one time change, but in the future you want the default behavior again), then you can use a combination of the `C` (note uppercase) function to set contrasts and the `contr.treatments` function with the base argument for choosing which level you want to be the baseline.

For example:

``````lm( Sepal.Width ~ C(Species,contr.treatment(3, base=2)), data=iris )
``````

The `relevel()` command is a shorthand method to your question. What it does is reorder the factor so that whatever is the ref level is first. Therefore, reordering your factor levels will also have the same effect but gives you more control. Perhaps you wanted to have levels 3,4,0,1,2. In that case...

``````bFactor <- factor(b, levels = c(3,4,0,1,2))
``````

I prefer this method because it's easier for me to see in my code not only what the reference was but the position of the other values as well (rather than having to look at the results for that).

NOTE: DO NOT make it an ordered factor. A factor with a specified order and an ordered factor are not the same thing. `lm()` may start to think you want polynomial contrasts if you do that.

• Polynomial contrasts, not a polynomial regression. Oct 6, 2010 at 13:31
• Is there a way to set the reference level at the same time that you define the factor, rather than in a subsequent call to relevel? Oct 18, 2016 at 15:11
• For some reason R is treating my variable as being ordered (it is just a bunch of strings), any idea of how to fix this?
– Mark
Jul 8, 2021 at 19:04
• It's best to ask new questions separately. You can link to this one and say you are expending it but it's best not to hide new stuff in the comments.
– John
Jul 9, 2021 at 20:58

You can also manually tag the column with a `contrasts` attribute, which seems to be respected by the regression functions:

``````contrasts(df\$factorcol) <- contr.treatment(levels(df\$factorcol),
base=which(levels(df\$factorcol) == 'RefLevel'))
``````

For those looking for a dplyr/tidyverse version. Building on Gavin Simpson solution:

``````# Create DF
set.seed(123)
x <- rnorm(100)
DF <- data.frame(x = x,
y = 4 + (1.5*x) + rnorm(100, sd = 2),
b = gl(5, 20))

# Change reference level
DF = DF %>% mutate(b = relevel(b, 3))

m2 <- lm(y ~ x + b, data = DF)
summary(m2)
``````
• I'm confused why you put "If the variable is a factor" where you did... this is necessary whether you use `relevel()` or `forcats::fct_relevel()` Oct 24, 2019 at 13:30
• You are correct, thanks! I added "you can also use", because, afaik, fct_relevel only works with factors. Oct 25, 2019 at 14:32
• `relevel` only works with factors. `fct_relevel` only works with factors. There isn't any difference between the functions except the name, AFAIK. Saying "If the variable is a factor you can also use `fct_relevel`" implies that if the variable is not a factor you could use `relevel`, but that is not true. Oct 25, 2019 at 14:38