I have some data from a R course class. The professor was adding each line kind of manually using base graphics. I'd like to do it using `ggplot2`

.

So far I've created a `facet`

'd plot in `ggplot`

with `scatter plots`

of `hunger`

in different regions and also separately fitted a model to the data. The specific model has interaction terms between the `x`

variable in the plot and the `group/colour`

variable.

What I want to do now is **plot the lines resulting for that model one per panel**. I could do this by using `geom_abline`

and defining the `slope`

and the `intercept`

as the sum of 2 of the coefficients (as the categorical variables for group have 0/1 values and in each panel only some values are multiplied by 1) - but this seems not easy.

I tried the same equation I used in lm in `stat_smooth`

with no luck, I get an error.

Ideally, I'd think one can put the equation somehow into the `stat_smooth`

and have `ggplot`

do all the work. How would one go about it?

```
download.file("https://sparkpublic.s3.amazonaws.com/dataanalysis/hunger.csv",
"hunger.csv", method = "curl")
hunger <- read.csv("hunger.csv")
hunger <- hunger[hunger$Sex!="Both sexes",]
hunger_small <- hunger[hunger$WHO.region!="WHO Non Members",c(5,6,8)]
q<- qplot(x = Year, y = Numeric, data = hunger_small,
color = WHO.region) + theme(legend.position = "bottom")
q <- q + facet_grid(.~WHO.region)+guides(col=guide_legend(nrow=2))
q
# I could add the standard lm line from stat_smooth, but I dont want that
# q <- q + geom_smooth(method="lm",se=F)
#I want to add the line(s) from the lm fit below, it is really one line per panel
lmRegion <- lm(hunger$Numeric ~ hunger$Year + hunger$WHO.region +
hunger$Year *hunger$WHO.region)
# I also used a loop to do it, as below, but all in one panel
# I am not able to do that
# with facets, I used a function I found to get the colors
ggplotColours <- function(n=6, h=c(0, 360) +15) {
if ((diff(h)%%360) < 1) h[2] <- h[2] - 360/n
hcl(h = (seq(h[1], h[2], length = n)), c = 100, l = 65)
}
n <- length(levels(hunger_small$WHO.region))
q <- qplot(x = Year, y = Numeric, data = hunger_small,
color = WHO.region) + theme(legend.position = "bottom")
q <- q + geom_abline(intercept = lmRegion$coefficients[1],
slope = lmRegion$coefficients[2], color = ggplotColours(n=n)[1])
for (i in 2:n) {
q <- q + geom_abline(intercept = lmRegion$coefficients[1] +
lmRegion$coefficients[1+i], slope = lmRegion$coefficients[2] +
lmRegion$coefficients[7+i], color = ggplotColours(n=n)[i])
}
```

However: as far as I can tell the naive approach (`geom_smooth(method="lm",se=FALSE)`

)shouldgive you the same plot as you are looking for, with facets ... – Ben Bolker Feb 19 '13 at 1:55