# “Quick” Scatterplot Legend with ggplot? [duplicate]

Possible Duplicate:
ggplot2: Adding Regression Line Equation and R2 on graph

I'm graphing data in a scatter plot with

``````ggplot(work.rootsfnp.h1, aes(x=fnpltrfac, y=rootsscore, group=1)) +
geom_smooth(method=lm, se = F) + geom_point(shape=1)
``````

Is there a "quick" way to add a basic legend that includes the formula of the line of best fit as well as the correlation coefficient?

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## marked as duplicate by casperOne♦Nov 30 '11 at 19:34

Not quick, but possible:

First, fit a model with `lm`

``````model <- lm(mpg ~ wt + factor(cyl), data=mtcars)
``````

Then extract the coefficients and R^2, and construct expressions for each

``````x <- coef(model)
intercept <- signif(x[1], 3)
terms <- paste(signif(x[-1], 3), names(x[-1]), sep="*", collapse= " + ")
e1 <- paste(intercept, terms, collapse = " + ")
e2 <- paste("R^2 = ", round(summary(model)\$r.squared, 3))
``````

Finally, plot with `ggplot` and use `annotate` to place labels.

``````ggplot(mtcars, aes(x=wt, y=mpg)) +
geom_point() +
geom_smooth(method=lm) +
annotate("text", label=e1, x=max(mtcars\$wt), y=max(mtcars\$mpg),
hjust=1, size=3, vjust=0) +
annotate("text", label=e2, x=max(mtcars\$wt), y=max(mtcars\$mpg),
hjust=1, size=3, vjust=1)
``````

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``````library(ggplot2)
df <- data.frame(x = c(1:100))
df\$y <- 2 + 3 * df\$x + rnorm(100, sd = 40)

# 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));
}

p <- ggplot(data = df, aes(x = x, y = y)) +
geom_smooth(method = "lm", se=FALSE, color="black", formula = y ~ x) +
geom_point()

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

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