I borrowed this example dataset from here:

```
# Load library
library(ggplot2)
# Load data
data(mtcars)
# Plot data
p <- ggplot(mtcars,aes(x = disp, y = mpg)) + geom_point() + facet_grid(gear ~ am)
p <- p + geom_smooth(method="lm")
print(p)
```

In above code the regression methods and formulae are the same in all facets. If we want to specify formula for **facet (or panel) 6**, we have the following code, from here:

```
# Smoothing function with different behaviour depending on the panel
custom.smooth <- function(formula, data,...){
smooth.call <- match.call()
if(as.numeric(unique(data$PANEL)) == 6) {
# Linear regression
smooth.call[[1]] <- quote(lm)
# Specify formula
smooth.call$formula <- as.formula("y ~ log(x)")
}else{
# Linear regression
smooth.call[[1]] <- quote(lm)
}
# Perform fit
eval.parent(smooth.call)
}
# Plot data with custom fitting function
p <- ggplot(mtcars,aes(x = disp, y = mpg)) + geom_point() + facet_grid(gear ~ am)
p <- p + geom_smooth(method = "custom.smooth", se = FALSE)
print(p)
```

Now if I want to add regression equations to these facets:

```
# Load library
library(ggpmisc)
p + stat_poly_eq(formula = y ~ x,aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")),
parse=TRUE,label.x.npc = "right")
```

Then what should I do, to specify the equation and R2 displayed on **panel 6**, that can match the model I specified before? See the plot below, now panel 6 has its own fitting model, but the equation label doesn't. Maybe we can define a similar function as we did to ggplot2 parameters?