I've created a plot with geom_line and geom_ribbon (image 1) and the result is okay, but for the sake of aesthetics, I'd like the line and ribbon to be smoother. I know I can use geom_smooth for the line (image 2), but I'm not sure if it's possible to smooth the ribbon.I could create a geom_smooth line for the top and bottom lines of the ribbon (image 3), but is there anyway to fill in the space between those two lines?
1 Answer
A principled way to achieve what you want is to fit a GAM model to your data using the gam() function in mgcv and then apply the predict() function to that model over a finer grid of values for your predictor variable. The grid can cover the span defined by the range of observed values for your predictor variable. The R code below illustrates this process for a concrete example.
# load R packages
library(ggplot2)
library(mgcv)
# simulate some x and y data
# x = predictor; y = response
x < seq(10, 10, by = 1)
y < 1  0.5*x  2*x^2 + rnorm(length(x), mean = 0, sd = 20)
d < data.frame(x,y)
# plot the simulated data
ggplot(data = d, aes(x,y)) +
geom_point(size=3)
# fit GAM model
m < gam(y ~ s(x), data = d)
# define finer grid of predictor values
xnew < seq(10, 10, by = 0.1)
# apply predict() function to the fitted GAM model
# using the finer grid of x values
p < predict(m, newdata = data.frame(x = xnew), se = TRUE)
str(p)
# plot the estimated mean values of y (fit) at given x values
# over the finer grid of x values;
# superimpose approximate 95% confidence band for the true
# mean values of y at given x values in the finer grid
g < data.frame(x = xnew,
fit = p$fit,
lwr = p$fit  1.96*p$se.fit,
upr = p$fit + 1.96*p$se.fit)
head(g)
theme_set(theme_bw())
ggplot(data = g, aes(x, fit)) +
geom_ribbon(aes(ymin = lwr, ymax = upr), fill = "lightblue") +
geom_line() +
geom_point(data = d, aes(x, y), shape = 1)
This same principle would apply if you were to fit a polynomial regression model to your data using the lm() function.

2That would be so nice to have an extended
geom_ribbon
in which this process is implemented and simply driven by a parametersmooth
! Commented May 10, 2022 at 15:38
geom_ribbon
with those inbetween points. cf rstatistics.co/LoessRegressionWithR.html