Adding a mapping `aes(group=Species)`

to the `geom_smooth()`

call will do what you want.

Basic plot:

```
library(ggplot2); theme_set(theme_bw())
g0 <- ggplot(data = iris, aes(x = Sepal.Length, y = Petal.Length)) +
geom_point(aes(color = Species))
```

`geom_smooth`

:

```
g0 + geom_smooth(aes(group=Species),
method = "nls", formula = y ~ a * x + b, se = FALSE,
method.args = list(start = list(a = 0.1, b = 0.1)))
```

`formula`

is always expressed in terms of `x`

and `y`

, no matter what variables are called in the original data set:

- the
`x`

variable in the formula refers to the variable that is mapped to the x-axis (`Sepal.Length`

)
- the
`y`

variable to the y-axis variable (`Petal.Length`

)

The model is fitted *separately* to groups in the data (`Species`

).

If you add a colour mapping (for a factor variable) that will have the same effect (groups are implicitly defined according to the intersection of all the mappings used to distinguish geoms), plus the lines will be appropriately coloured.

```
g0 + geom_smooth(aes(colour=Species),
method = "nls", formula = y ~ a * x + b, se = FALSE,
method.args = list(start = list(a = 0.1, b = 0.1)))
```

As @HubertL points out, if you want to apply the same aesthetics to all of your geoms, you can just put them in the original `ggplot`

call ...

By the way, I assume that in reality you want to use a more complex `nls`

model - otherwise you could just use `geom_smooth(...,method="lm")`

and save yourself trouble ...