# ggplot2: Adding Regression Line Equation and R2 on graph

I wonder how to add regression line equation and R^2 on the `ggplot`. My code is

``````library(ggplot2)
df <- data.frame(x = c(1:100))
df\$y <- 2 + 3 * df\$x + rnorm(100, sd = 40)
p <- ggplot(data = df, aes(x = x, y = y)) +
geom_smooth(method = "lm", se=FALSE, color="black", formula = y ~ x) +
geom_point()
p
``````

Any help will be highly appreciated. Thanks in advance.

-
For lattice graphics, see `latticeExtra::lmlineq()`. – Josh O'Brien Oct 13 '13 at 2:23

Here is one solution

``````# GET EQUATION AND R-SQUARED AS STRING
# SOURCE: http://goo.gl/K4yh

lm_eqn <- function(df){
m <- lm(y ~ x, df);
eq <- substitute(italic(y) == a + b %.% italic(x)*","~~italic(r)^2~"="~r2,
list(a = format(coef(m)[1], digits = 2),
b = format(coef(m)[2], digits = 2),
r2 = format(summary(m)\$r.squared, digits = 3)))
as.character(as.expression(eq));
}

p1 <- p + geom_text(x = 25, y = 300, label = lm_eqn(df), parse = TRUE)
``````

EDIT. I figured out the source from where I picked this code. Here is the link to the original post in the ggplot2 google groups

-
@JonasRaedle's comment about getting better looking texts with `annotate` was correct on my machine. – BondedDust Aug 16 '13 at 23:23
This doesn't look anything like the posted output on my machine, where the label is overwritten as many times as the data is called, resulting in a thick and blurry label text. Passing the labels to a data.frame first works (see my suggestion in a comment below. – PatrickT Apr 29 '14 at 10:52
@PatrickT: remove the `aes(` and the corresponding `)`. `aes` is for mapping dataframe variables to visual variables - that's not needed here, since there's just one instance, so you can put it all in the main `geom_text` call. I'll edit this in to the answer. – naught101 Jun 18 at 18:56
Problem with this solution seems to be, that if the dataset is bigger (mine was 370000 observations) the function seems to fail. I would recommend the solution from @kdauria which does the same, but much much faster. – Benjamin Sep 3 at 19:27

I've modified Ramnath's post to a) make more generic so it accepts a linear model as a parameter rather than the data frame and b) displays negatives more appropriately.

``````lm_eqn = function(m) {

l <- list(a = format(coef(m)[1], digits = 2),
b = format(abs(coef(m)[2]), digits = 2),
r2 = format(summary(m)\$r.squared, digits = 3));

if (coef(m)[2] >= 0)  {
eq <- substitute(italic(y) == a + b %.% italic(x)*","~~italic(r)^2~"="~r2,l)
} else {
eq <- substitute(italic(y) == a - b %.% italic(x)*","~~italic(r)^2~"="~r2,l)
}

as.character(as.expression(eq));
}
``````

Usage would change to:

``````p1 = p + geom_text(aes(x = 25, y = 300, label = lm_eqn(lm(y ~ x, df))), parse = TRUE)
``````
-
This looks great! But I'm plotting geom_points on multiple facets, where the df differs based on the facet variable. How do I do that? – bshor Dec 12 '12 at 20:01
Jayden's solution works quite well, but the typeface looks very ugly. I would recommend changing the usage to this: `p1 = p + annotate("text", x = 25, y = 300, label = lm_eqn(lm(y ~ x, df)), colour="black", size = 5, parse=TRUE)` edit: this also resolves any issues you might have with letters showing up in your legend. – Jonas Raedle Jul 5 '13 at 15:04
@ Jonas, for some reason I'm getting `"cannot coerce class "lm" to a data.frame"`. This alternative works: `df.labs <- data.frame(x = 25, y = 300, label = lm_eqn(df))` and `p <- p + geom_text(data = df.labs, aes(x = x, y = y, label = label), parse = TRUE)` – PatrickT Apr 29 '14 at 10:50
@PatrickT - That's the error message you would get if you called `lm_eqn(lm(...))` with Ramnath's solution. You probably tried this one after trying that one but forgot to ensure that you had redefined `lm_eqn` – Hamy Oct 5 '14 at 23:01

I changed a few lines of the source of `stat_smooth` and related functions to make a new function that adds the fit equation and R squared value. This will work on facet plots too!

``````library(devtools)
df = data.frame(x = c(1:100))
df\$y = 2 + 5 * df\$x + rnorm(100, sd = 40)
df\$class = rep(1:2,50)
ggplot(data = df, aes(x = x, y = y, label=y)) +
stat_smooth_func(geom="text",method="lm",hjust=0,parse=TRUE) +
geom_smooth(method="lm",se=FALSE) +
geom_point() + facet_wrap(~class)
``````

I used the code in @Ramnath's answer to format the equation. The `stat_smooth_func` function isn't very robust, but it shouldn't be hard to play around with it.

Many Thanks. This one doesn't only work for facets, but even for groups. I find it very useful for piecewise regressions, e.g. `stat_smooth_func(mapping=aes(group=cut(x.val,c(-70,-20,0,20,50,130))),geom="tex‌​t",method="lm",hjust=0,parse=TRUE)`, in combination with EvaluateSmooths from stackoverflow.com/questions/19735149/… – Julian Jan 27 at 17:05