I am struggling a bit with
melt() and how to make it work with
Let's say I got this data on California Population by race, age, and gender since 1970:
ca1970_1989<-read.table( url('http://www.dof.ca.gov/research/demographic/data/race-ethnic/1970-89/documents/California.txt'), header=F,strip.white=TRUE,stringsAsFactors=T) names(ca1970_1989)<-c('County name','Year','Sex','Age','Total Population','White Population','Hispanic Population','Asian & Pacific Islander Population','Black Population','American Indian Population')
I don't need age for the time being so I sum that away.
I want to plot it with
ggplot() so I melt as appropriate:
> head(ca1970_1989.m) Sex Year variable value 1 FEMALE 1970 White Population 7845344 2 MALE 1970 White Population 7635379 3 FEMALE 1971 White Population 7848106 4 MALE 1971 White Population 7626582 5 FEMALE 1972 White Population 7827480 6 MALE 1972 White Population 7597465
I want to pass to ggplot, but let it properly know that there is, in fact, an extra identifier (Sex) so it can distinguish male and female values.
If I do this call, I don't capture the
ggplot(ca1970_1989.m, aes(x=Year, y=value, group=variable), colour=variable)) + geom_line()
Should I use
cast to have
variable be a combination of gender AND race? Should I use
melt() differently with respect to the
id.vars parameter in the first place?
Any help appreciated.