The doctor prescribes a slight modification to Roman's data frame.
my.cars <- data.frame(
Toyota = runif(50),
Mazda = runif(50),
Renault = runif(50),
Car = paste("Car", 1:50, ".txt", sep = "")
my.cars.melted <- melt(my.cars, id.vars = "Car")
He then suggests that it looks like the car variable is categorical, so your first choice would be a barchart.
p_bar <- ggplot(my.cars.melted, aes(Car, value, fill = variable)) +
geom_bar(position = "dodge")
He then notes that for 95 cars, this could get a bit cumbersome. Perhaps a dotplot would be more suitable.
p_dot <- ggplot(my.cars.melted, aes(Car, value, col = variable)) +
opts(axis.text.x = theme_text(angle = 90))
As this is still a little tricky to get useful information out of, it might be best to order the cars by the average value (whatever value means)
my.cars.melted$Car <- with(my.cars.melted, reorder(Car, value))
p_dot as before.)
Finally, the doctor notes that you can draw the line plot that Roman recommended with
p_lines <- ggplot(my.cars.melted, aes(as.numeric(Car), value, col = variable)) +