You can use geom_segment
with coord_polar
(for that you will have to pre-calculate density yourself).
library(ggplot2)
# Lets calculate frequency of how far is the ball
d <- density(chickwts$weight)
# Here x is weight (or distance for OP) and y is frequency
pd <- data.frame(distance = d$x, frequency = d$y)
ggplot(pd, aes(x = 1, xend = 2, y = distance, yend = distance, color = frequency)) +
geom_segment(stat = "identity") +
coord_polar() +
scale_color_viridis_c() +
labs(
title = "How far is the ball",
x = "Distance",
y = "Distance",
color = "Frequency"
) +
theme_classic() +
theme(axis.text.x = element_blank())
If categorical grouping is needed one can use this:
# Check if frequency is within wanted range
pd$color <- pd$frequency > 0.002 & pd$frequency < 0.003
ggplot(
pd,
aes(x = 1, xend = 2, y = distance, yend = distance, color = color)
) +
geom_segment(stat = "identity") +
coord_polar() +
scale_color_viridis_d() +
labs(
title = "How far is the ball",
x = "Distance",
y = "Distance",
color = "Frequency"
) +
theme_classic() +
theme(axis.text.x = element_blank())
plot(density(mtcars$mpg))
I can obtain a density plot with the data mpg. I would like to draw a concentric color gradient circle. Just as this circle [link]image.shutterstock.com/image-illustration/… With the darkest part as most frequent ball position.