# Adding a regression line on a ggplot

I'm trying hard to add a regression line on a ggplot. I first tried with abline but I didn't manage to make it work. Then I tried this...

``````data = data.frame(x.plot=rep(seq(1,5),10),y.plot=rnorm(50))
ggplot(data,aes(x.plot,y.plot))+stat_summary(fun.data=mean_cl_normal) +
geom_smooth(method='lm',formula=data\$y.plot~data\$x.plot)
``````

But it is not working either.

In general, to provide your own formula you should use arguments `x` and `y` that will correspond to values you provided in `ggplot()` - in this case `x` will be interpreted as `x.plot` and `y` as `y.plot`. You can find more information about smoothing methods and formula via the help page of function `stat_smooth()` as it is the default stat used by `geom_smooth()`.

``````ggplot(data,aes(x.plot, y.plot)) +
stat_summary(fun.data=mean_cl_normal) +
geom_smooth(method='lm', formula= y~x)
``````

If you are using the same x and y values that you supplied in the `ggplot()` call and need to plot the linear regression line then you don't need to use the formula inside `geom_smooth()`, just supply the `method="lm"`.

``````ggplot(data,aes(x.plot, y.plot)) +
stat_summary(fun.data= mean_cl_normal) +
geom_smooth(method='lm')
``````
• @ Didzis Elferts is there any way to show the slope of regression line while using the geom_smooth? thanks
– Alex
Commented Mar 28, 2022 at 2:08

As I just figured, in case you have a model fitted on multiple linear regression, the above mentioned solution won't work.

You have to create your line manually as a dataframe that contains predicted values for your original dataframe (in your case `data`).

It would look like this:

``````# read dataset
df = mtcars

# create multiple linear model
lm_fit <- lm(mpg ~ cyl + hp, data=df)
summary(lm_fit)

# save predictions of the model in the new data frame
# together with variable you want to plot against
predicted_df <- data.frame(mpg_pred = predict(lm_fit, df), hp=df\$hp)

# this is the predicted line of multiple linear regression
ggplot(data = df, aes(x = mpg, y = hp)) +
geom_point(color='blue') +
geom_line(color='red',data = predicted_df, aes(x=mpg_pred, y=hp))
``````

``````# this is predicted line comparing only chosen variables
ggplot(data = df, aes(x = mpg, y = hp)) +
geom_point(color='blue') +
geom_smooth(method = "lm", se = FALSE)
``````

• One thing to watch out for is the convention is lm(y~x). I got a little turned around for a second reading this since the variable you're 'predicting' is on the x-axis. Great answer though. Commented May 15, 2019 at 21:21
• Excellent answer. Allows more flexibility in using regression results from non-standard function. Commented Jun 10 at 1:56

The simple and versatile solution is to draw a line using `slope` and `intercept` from `geom_abline`. Example usage with a scatterplot and `lm` object:

``````library(tidyverse)
petal.lm <- lm(Petal.Length ~ Petal.Width, iris)

ggplot(iris, aes(x = Petal.Width, y = Petal.Length)) +
geom_point() +
geom_abline(slope = coef(petal.lm)[["Petal.Width"]],
intercept = coef(petal.lm)[["(Intercept)"]])
``````

`coef` is used to extract the coefficients of the formula provided to `lm`. If you have some other linear model object or line to plot, just plug in the slope and intercept values similarly.

• And so you never worry about ordering of your formulas or just adding a `+0` you can use names. `data.lm\$coefficients[['(Intercept)']]` and `data.lm\$coefficients[['DepDelay']]`.
– Ufos
Commented May 14, 2019 at 16:56
• (Almost) always `(Intercept)` will be listed first. The names do make the code clearer.
– qwr
Commented Nov 16, 2019 at 21:50
• I think this is the best answer - it is the most versatile. Commented May 23, 2020 at 15:59
• How do I make use of this (plot it)?
– Ben
Commented Aug 26, 2020 at 5:43
• @Ben sorry for late response. Since this answer is getting some attention, I've added details for a MWE.
– qwr
Commented Jul 26, 2021 at 21:15

I found this function on a blog

`````` ggplotRegression <- function (fit) {

`require(ggplot2)

ggplot(fit\$model, aes_string(x = names(fit\$model)[2], y = names(fit\$model)[1])) +
geom_point() +
stat_smooth(method = "lm", col = "red") +
"Intercept =",signif(fit\$coef[[1]],5 ),
" Slope =",signif(fit\$coef[[2]], 5),
" P =",signif(summary(fit)\$coef[2,4], 5)))
}`
``````

once you loaded the function you could simply

``````ggplotRegression(fit)
``````

you can also go for `ggplotregression( y ~ x + z + Q, data)`

Hope this helps.

• An explanation of this code would greatly improve this answer. The labels are unnecessary and you should be using `coef(fit)` instead of accessing coefficients directly stackoverflow.com/questions/17824461/…
– qwr
Commented Jul 26, 2021 at 21:18

If you want to fit other type of models, like a dose-response curve using logistic models you would also need to create more data points with the function predict if you want to have a smoother regression line:

fit: your fit of a logistic regression curve

``````#Create a range of doses:
mm <- data.frame(DOSE = seq(0, max(data\$DOSE), length.out = 100))
#Create a new data frame for ggplot using predict and your range of new
#doses:
fit.ggplot=data.frame(y=predict(fit, newdata=mm),x=mm\$DOSE)

ggplot(data=data,aes(x=log10(DOSE),y=log(viability)))+geom_point()+
geom_line(data=fit.ggplot,aes(x=log10(x),y=log(y)))
``````

I found a more simple (to me) answer from this YouTube video which worked really well.

``````library(ggpubr)

ggplot(data,aes(x.plot, y.plot)) +
geom_smooth(method = 'lm', se = FALSE, formula = y ~ x) +
stat_cor(label.x = 30, label.y = 130, size = 4) +
stat_regline_equation(label.x = 30, label.y = 150, size = 4)
``````

The `label.x` and `label.y` just indicate the positions on the x-axis and y-axis where the equation and coefficient should be placed. You can play around with these to fit your graph.

Another way to use geom_line() to add regression line is to use broom package to get fitted values and use it as shown here https://cmdlinetips.com/2022/06/add-regression-line-to-scatterplot-ggplot2/