I am confused about how
ggplot is handling an aesthetic in some data I'm working with.
I've got some data showing the start
ptype and end
atype type for transit passengers in a number of cities. Additionally, the sample is weighted. You can download the data straight from Dropbox with the
MyData <- repmis::source_data("https://www.dropbox.com/s/62v84hn9wmwpo6b/MyData.csv")
About 75 percent of trips in this data go from a home to a work, but the proportion is different in every city. I want to visualize this (unweighted) table by city:
table(MyData$ptype, MyData$atype)/nrow(MyData) Other School Work Home 0.055 0.130 0.750 Other 0.040 0.005 0.000 Work 0.010 0.010 0.000
This code does it, but
y = ..count.. is the last thing I tried (of course, but I tried lots else first).
# problematic ggplot(MyData, aes(x = ptype, fill = city, weight = weight)) + geom_bar(position = "dodge", aes(y = ..count.., group = city), color = "black") + facet_grid(atype ~ .)
The more natural thing to me would have been
y = ..density.., but this is obviously wrong, because each category sums to 1 within each facet rather than across the plot
# problematic ggplot(MyData, aes(x = ptype, fill = city, weight = weight)) + geom_bar(position = "dodge", aes(y = ..density.., group = city), color = "black") + facet_grid(atype ~ .)
..count.. seems so counterintuitive, I wonder if it's wrong. Can someone explain this to me?
Or point me to a better way to visualize this problem?