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))
head(DF)
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
```

`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.