255

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.

2
  • 1
    For lattice graphics, see latticeExtra::lmlineq(). – Josh O'Brien Oct 13 '13 at 2:23
  • @JoshO'Brien Error: 'lmlineq' is not an exported object from 'namespace:latticeExtra' – robertspierre Mar 14 at 17:12
255
+100

Here is one solution

# GET EQUATION AND R-SQUARED AS STRING
# SOURCE: https://groups.google.com/forum/#!topic/ggplot2/1TgH-kG5XMA

lm_eqn <- function(df){
    m <- lm(y ~ x, df);
    eq <- substitute(italic(y) == a + b %.% italic(x)*","~~italic(r)^2~"="~r2, 
         list(a = format(unname(coef(m)[1]), digits = 2),
              b = format(unname(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

Output

9
  • 1
    @JonasRaedle's comment about getting better looking texts with annotate was correct on my machine. – IRTFM Aug 16 '13 at 23:23
  • 2
    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 '15 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 '15 at 19:27
  • 3
    for those who wants r and p values instead of R2 and equation: eq <- substitute(italic(r)~"="~rvalue*","~italic(p)~"="~pvalue, list(rvalue = sprintf("%.2f",sign(coef(m)[2])*sqrt(summary(m)$r.squared)), pvalue = format(summary(m)$coefficients[2,4], digits = 2))) – Jerry T Apr 1 '17 at 2:29
164
+50

I included a statistics stat_poly_eq() in my package ggpmisc that allows this answer:

library(ggplot2)
library(ggpmisc)
df <- data.frame(x = c(1:100))
df$y <- 2 + 3 * df$x + rnorm(100, sd = 40)
my.formula <- y ~ x
p <- ggplot(data = df, aes(x = x, y = y)) +
   geom_smooth(method = "lm", se=FALSE, color="black", formula = my.formula) +
   stat_poly_eq(formula = my.formula, 
                aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
                parse = TRUE) +         
   geom_point()
p

enter image description here

This statistic works with any polynomial with no missing terms, and hopefully has enough flexibility to be generally useful. The R^2 or adjusted R^2 labels can be used with any model formula fitted with lm(). Being a ggplot statistic it behaves as expected both with groups and facets.

The 'ggpmisc' package is available through CRAN.

Version 0.2.6 was just accepted to CRAN.

It addresses comments by @shabbychef and @MYaseen208.

@MYaseen208 this shows how to add a hat.

library(ggplot2)
library(ggpmisc)
df <- data.frame(x = c(1:100))
df$y <- 2 + 3 * df$x + rnorm(100, sd = 40)
my.formula <- y ~ x
p <- ggplot(data = df, aes(x = x, y = y)) +
   geom_smooth(method = "lm", se=FALSE, color="black", formula = my.formula) +
   stat_poly_eq(formula = my.formula,
                eq.with.lhs = "italic(hat(y))~`=`~",
                aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
                parse = TRUE) +         
   geom_point()
p

enter image description here

@shabbychef Now it is possible to match the variables in the equation to those used for the axis-labels. To replace the x with say z and y with h one would use:

p <- ggplot(data = df, aes(x = x, y = y)) +
   geom_smooth(method = "lm", se=FALSE, color="black", formula = my.formula) +
   stat_poly_eq(formula = my.formula,
                eq.with.lhs = "italic(h)~`=`~",
                eq.x.rhs = "~italic(z)",
                aes(label = ..eq.label..), 
                parse = TRUE) + 
   labs(x = expression(italic(z)), y = expression(italic(h))) +          
   geom_point()
p

enter image description here

Being these normal R parsed expressions greek letters can now also be used both in the lhs and rhs of the equation.

[2017-03-08] @elarry Edit to more precisely address the original question, showing how to add a comma between the equation- and R2-labels.

p <- ggplot(data = df, aes(x = x, y = y)) +
  geom_smooth(method = "lm", se=FALSE, color="black", formula = my.formula) +
  stat_poly_eq(formula = my.formula,
               eq.with.lhs = "italic(hat(y))~`=`~",
               aes(label = paste(..eq.label.., ..rr.label.., sep = "*plain(\",\")~")), 
               parse = TRUE) +         
  geom_point()
p

enter image description here

[2019-10-20] @helen.h I give below examples of use of stat_poly_eq() with grouping.

library(ggpmisc)
df <- data.frame(x = c(1:100))
df$y <- 20 * c(0, 1) + 3 * df$x + rnorm(100, sd = 40)
df$group <- factor(rep(c("A", "B"), 50))
my.formula <- y ~ x
p <- ggplot(data = df, aes(x = x, y = y, colour = group)) +
  geom_smooth(method = "lm", se=FALSE, formula = my.formula) +
  stat_poly_eq(formula = my.formula, 
               aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
               parse = TRUE) +         
  geom_point()
p

p <- ggplot(data = df, aes(x = x, y = y, linetype = group)) +
  geom_smooth(method = "lm", se=FALSE, formula = my.formula) +
  stat_poly_eq(formula = my.formula, 
               aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
               parse = TRUE) +         
  geom_point()
p

enter image description here

enter image description here

[2020-01-21] @Herman It may be a bit counter-intuitive at first sight, but to obtain a single equation when using grouping one needs to follow the grammar of graphics. Either restrict the mapping that creates the grouping to individual layers (shown below) or keep the default mapping and override it with a constant value in the layer where you do not want the grouping (e.g. colour = "black").

Continuing from previous example.

p <- ggplot(data = df, aes(x = x, y = y)) +
  geom_smooth(method = "lm", se=FALSE, formula = my.formula) +
  stat_poly_eq(formula = my.formula, 
               aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
               parse = TRUE) +         
  geom_point(aes(colour = group))
p

enter image description here

[2020-01-22] For the sake of completeness an example with facets, demonstrating that also in this case the expectations of the grammar of graphics are fulfilled.

library(ggpmisc)
df <- data.frame(x = c(1:100))
df$y <- 20 * c(0, 1) + 3 * df$x + rnorm(100, sd = 40)
df$group <- factor(rep(c("A", "B"), 50))
my.formula <- y ~ x

p <- ggplot(data = df, aes(x = x, y = y)) +
  geom_smooth(method = "lm", se=FALSE, formula = my.formula) +
  stat_poly_eq(formula = my.formula, 
               aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")), 
               parse = TRUE) +         
  geom_point() +
  facet_wrap(~group)
p

enter image description here

28
  • 3
    It should be noted that the x and y in the formula refer to the x and y data in the layers of the plot, and not necessarily to those in scope at the time my.formula is constructed. Thus the formula should always use x and y variables? – shabbychef Feb 5 '16 at 23:59
  • 3
    Good point @elarry! This is related to how R's parse() function works. Through trial and error I found that aes(label = paste(..eq.label.., ..rr.label.., sep = "*plain(\",\")~")) does the job. – Pedro Aphalo Apr 8 '17 at 10:09
  • 1
    @HermanToothrot Usually R2 is preferred for a regression, so there is no predefined r.label in the data returned by stat_poly_eq(). You can use stat_fit_glance(), also from package 'ggpmisc', which returns R2 as a numeric value. See examples in the help page, and replace stat(r.squared) by sqrt(stat(r.squared)). – Pedro Aphalo Mar 14 '20 at 19:14
  • 1
    @PedroAphalo If I am using a multivariate model like formula = y~x+z, is it possible to rename the third variable? – Jhonathan Sep 14 '20 at 6:17
  • 1
    I just got to know that, apparently, we can't use ggpmisc::stat_poly_eq in plotly, it's not implemented in plotly. – kolas0202 Oct 15 '20 at 9:51
103

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)
source_gist("524eade46135f6348140")
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)

enter image description here

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.

https://gist.github.com/kdauria/524eade46135f6348140. Try updating ggplot2 if you get an error.

16
  • 2
    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="text",method="lm",hjust=0,parse=TRUE), in combination with EvaluateSmooths from stackoverflow.com/questions/19735149/… – Julian Jan 27 '15 at 17:05
  • 1
    @aelwan, change these lines: gist.github.com/kdauria/… as you like. Then source the entire file in your script. – kdauria Mar 29 '16 at 6:51
  • 1
    @kdauria What if I have several equations in each of facet_wraps and I have different y_values in each of facet_wrap. Any suggestions how to fix the positions of the equations? I tried several options of hjust, vjust and angle using this example dropbox.com/s/9lk9lug2nwgno2l/R2_facet_wrap.docx?dl=0 but I couldn't bring all the equations at the same level in each of the facet_wrap – shiny Mar 29 '16 at 20:24
  • 4
    @aelwan, the position of the equation is determined by these lines: gist.github.com/kdauria/…. I made xpos and ypos arguments of the function in the Gist. So if you wanted all the equations to overlap, just set xpos and ypos. Otherwise, xpos and ypos are calculated from the data. If you want something fancier, it shouldn't be too hard to add some logic inside the function. For example, maybe you could write a function to determine what part of the graph has the most empty space and put the function there. – kdauria Apr 10 '16 at 19:38
  • 6
    I ran into an error with source_gist: Error in r_files[[which]] : invalid subscript type 'closure'. See this post for the solution: stackoverflow.com/questions/38345894/r-source-gist-not-working – Matifou Jun 7 '17 at 0:42
77

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)
5
  • 17
    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
  • 25
    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
  • 1
    @ 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
  • 1
    @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
  • @PatrickT: could you make your answer a separate answer? I would be happy to vote it up! – JelenaČuklina Nov 2 '15 at 14:10
16

Here's the most simplest code for everyone

Note: Showing Pearson's Rho and not R^2.

library(ggplot2)
library(ggpubr)

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()+
        stat_cor(label.y = 35)+ #this means at 35th unit in the y axis, the r squared and p value will be shown
        stat_regline_equation(label.y = 30) #this means at 30th unit regresion line equation will be shown

p

One such example with my own dataset

2
  • Same problem as above, in your plot it is shown rho and not R² ! – matmar Apr 27 '20 at 19:56
  • 2
    actually you can add just the R2 with: stat_cor(aes(label = ..rr.label..)) – Matifou Aug 27 '20 at 21:11
13

Using ggpubr:

library(ggpubr)

# reproducible data
set.seed(1)
df <- data.frame(x = c(1:100))
df$y <- 2 + 3 * df$x + rnorm(100, sd = 40)

# By default showing Pearson R
ggscatter(df, x = "x", y = "y", add = "reg.line") +
  stat_cor(label.y = 300) +
  stat_regline_equation(label.y = 280)

enter image description here

# Use R2 instead of R
ggscatter(df, x = "x", y = "y", add = "reg.line") +
  stat_cor(label.y = 300, 
           aes(label = paste(..rr.label.., ..p.label.., sep = "~`,`~"))) +
  stat_regline_equation(label.y = 280)

## compare R2 with accepted answer
# m <- lm(y ~ x, df)
# round(summary(m)$r.squared, 2)
# [1] 0.85

enter image description here

6
  • Have you seen a neat programmatic way to specify a number for label.y? – Mark Neal Mar 19 '20 at 4:43
  • @MarkNeal maybe get the max of y then multiply by 0.8. label.y = max(df$y) * 0.8 – zx8754 Mar 19 '20 at 5:08
  • 1
    @MarkNeal good points, maybe submit issue as feature request at GitHub ggpubr. – zx8754 Mar 19 '20 at 6:52
  • 1
    Issue on auto location submitted here – Mark Neal Mar 20 '20 at 3:19
  • 1
    @zx8754 , in your plot it is shown rho and not R² ,any easy way to show R² ? – matmar Apr 27 '20 at 19:54
12

really love @Ramnath solution. To allow use to customize the regression formula (instead of fixed as y and x as literal variable names), and added the p-value into the printout as well (as @Jerry T commented), here is the mod:

lm_eqn <- function(df, y, x){
    formula = as.formula(sprintf('%s ~ %s', y, x))
    m <- lm(formula, data=df);
    # formating the values into a summary string to print out
    # ~ give some space, but equal size and comma need to be quoted
    eq <- substitute(italic(target) == a + b %.% italic(input)*","~~italic(r)^2~"="~r2*","~~p~"="~italic(pvalue), 
         list(target = y,
              input = x,
              a = format(as.vector(coef(m)[1]), digits = 2), 
              b = format(as.vector(coef(m)[2]), digits = 2), 
             r2 = format(summary(m)$r.squared, digits = 3),
             # getting the pvalue is painful
             pvalue = format(summary(m)$coefficients[2,'Pr(>|t|)'], digits=1)
            )
          )
    as.character(as.expression(eq));                 
}

geom_point() +
  ggrepel::geom_text_repel(label=rownames(mtcars)) +
  geom_text(x=3,y=300,label=lm_eqn(mtcars, 'hp','wt'),color='red',parse=T) +
  geom_smooth(method='lm')

enter image description here Unfortunately, this doesn't work with facet_wrap or facet_grid.

2
  • Very neat, I've referenced here. A clarification - is your code missing ggplot(mtcars, aes(x = wt, y = mpg, group=cyl))+ before the geom_point()? A semi-related question - if we refer to hp and wt in the aes() for ggplot, can we then grab them to use in the call to lm_eqn, so then we only have to code in one place? I know we could set up xvar = "hp" before the ggplot() call, and use xvar in both locations to replace hp, but this feels like it ought to be unnecessary. – Mark Neal Apr 17 '20 at 21:32
  • Really nice solution! Thanks for sharing it! – Luis Jan 12 at 23:02
3

Inspired by the equation style provided in this answer, a more generic approach (more than one predictor + latex output as option) can be:

print_equation= function(model, latex= FALSE, ...){
    dots <- list(...)
    cc= model$coefficients
    var_sign= as.character(sign(cc[-1]))%>%gsub("1","",.)%>%gsub("-"," - ",.)
    var_sign[var_sign==""]= ' + '

    f_args_abs= f_args= dots
    f_args$x= cc
    f_args_abs$x= abs(cc)
    cc_= do.call(format, args= f_args)
    cc_abs= do.call(format, args= f_args_abs)
    pred_vars=
        cc_abs%>%
        paste(., x_vars, sep= star)%>%
        paste(var_sign,.)%>%paste(., collapse= "")

    if(latex){
        star= " \\cdot "
        y_var= strsplit(as.character(model$call$formula), "~")[[2]]%>%
            paste0("\\hat{",.,"_{i}}")
        x_vars= names(cc_)[-1]%>%paste0(.,"_{i}")
    }else{
        star= " * "
        y_var= strsplit(as.character(model$call$formula), "~")[[2]]        
        x_vars= names(cc_)[-1]
    }

    equ= paste(y_var,"=",cc_[1],pred_vars)
    if(latex){
        equ= paste0(equ," + \\hat{\\varepsilon_{i}} \\quad where \\quad \\varepsilon \\sim \\mathcal{N}(0,",
                    summary(MetamodelKdifEryth)$sigma,")")%>%paste0("$",.,"$")
    }
    cat(equ)
}

The model argument expects an lm object, the latex argument is a boolean to ask for a simple character or a latex-formated equation, and the ... argument pass its values to the format function.

I also added an option to output it as latex so you can use this function in a rmarkdown like this:


```{r echo=FALSE, results='asis'}
print_equation(model = lm_mod, latex = TRUE)
```

Now using it:

df <- data.frame(x = c(1:100))
df$y <- 2 + 3 * df$x + rnorm(100, sd = 40)
df$z <- 8 + 3 * df$x + rnorm(100, sd = 40)
lm_mod= lm(y~x+z, data = df)

print_equation(model = lm_mod, latex = FALSE)

This code yields: y = 11.3382963933174 + 2.5893419 * x + 0.1002227 * z

And if we ask for a latex equation, rounding the parameters to 3 digits:

print_equation(model = lm_mod, latex = TRUE, digits= 3)

This yields: latex equation

1

Another option would be to create a custom function generating the equation using dplyr and broom libraries:

get_formula <- function(model) {
  
  broom::tidy(model)[, 1:2] %>%
    mutate(sign = ifelse(sign(estimate) == 1, ' + ', ' - ')) %>% #coeff signs
    mutate_if(is.numeric, ~ abs(round(., 2))) %>% #for improving formatting
    mutate(a = ifelse(term == '(Intercept)', paste0('y ~ ', estimate), paste0(sign, estimate, ' * ', term))) %>%
    summarise(formula = paste(a, collapse = '')) %>%
    as.character
  
}

lm(y ~ x, data = df) -> model
get_formula(model)
#"y ~ 6.22 + 3.16 * x"

scales::percent(summary(model)$r.squared, accuracy = 0.01) -> r_squared

Now we need to add the text to the plot:

p + 
  geom_text(x = 20, y = 300,
            label = get_formula(model),
            color = 'red') +
  geom_text(x = 20, y = 285,
            label = r_squared,
            color = 'blue')

plot

Not the answer you're looking for? Browse other questions tagged or ask your own question.