# ggplot for linear-log regression model?

How do I plot a log linear model in R? Currently, I am doing this but am not sure if it's the right/efficient way:

``````data(food)
model1 <- lm(food_exp~log(income), data = food)
temp_var <- predict(model1, interval="confidence")
new_df <- cbind(food, temp_var)
ggplot(new_df, aes(x = income, y = food_exp))+
geom_point() +
geom_smooth(aes(y=lwr), color = "red", linetype = "dashed")+
geom_smooth(aes(y=upr), color = "red", linetype = "dashed")+
geom_smooth(aes(y = fit), color = "blue")+
theme_economist()
``````

you can use geom_smooth and putting your formula directly in. It should yield the same as your fit (which you can check by also plotting that)

``````ggplot(new_df, aes(x = Sepal.Width, y = Sepal.Length))+
geom_point() +
geom_point(aes(y=fit), color="red") + #your original fit
geom_smooth(method=lm, formula=y~log(x)) #ggplot fit
``````

If you don't car about extracting the parameters and just want the plot, you can plot directly in ggplot2.

Some fake data for plotting:

``````library(tidyverse)

set.seed(454)
income <- VGAM::rpareto(n = 100, scale = 20, shape = 2)*1000
food_exp <- rnorm(100, income*.3+.1, 3)

food <- data.frame(income, food_exp)

``````

Now within ggplot2, use the `geom_smooth` function and specify that you want a linear model. Additionally, you can directly transform the income in the `aes` argument:

``````ggplot(food, aes(x = log(income), y = food_exp))+
geom_point()+
geom_smooth(method = "lm")+
theme_bw()+
labs(
title = "Log Linear Model Food Expense as a Function of Log(income)",
x = "Log(Income)",
y = "Food Expenses"
)

``````

This will work for confidence intervals, but adding prediction intervals, you'll need to do what you did earlier with fitting the model, generating the prediction intervals.

• But I don't want the x axis to be logarithmic Commented Apr 27, 2021 at 11:56