# Assigning individuals to an income quantile

I have a set of data such as the following:

``````annual_exp<-as.data.frame(c(6000,4200,240001,750,20000,3470,10500,2400,2280,36000,3600,20000,2000,12000,1200,3000,4500,64000))
annual_exp<-as.data.frame(annual_exp)
``````

I want to create a new variable, call it "quintile", which assigns each observation an integer between 1 and 5, inclusive, depending on which quintile of income expenditure (annual_exp) they fall into. So there should be an equal number of 1`s through to 5.

My attempt so far has been to do the following:

``````test<-quantile(annual_exp\$annual_exp, probs= seq(0,1,0.2), na.rm=TRUE)
summary(test)
test

breaks<-c(test[1],test[2],test[3],test[4],test[5],test[6])
quantiles<-cut(annual_exp\$annual_exp, breaks, labels=c("1","2","3","4","5"), include.lowest=TRUE, right=TRUE)
quantiles<-as.data.frame(quantiles)
quantiles<-cbind(annual_exp, quantiles)
``````

The problem (which doesn`t really show with such a small sample as created in this example), is that the number of people falling into each quantile by doing this varies wildly. This is because I have used the function "quantile" above.

As such, I am looking for an alternative to the "quantile" part of the equation, which will split the sample up into 5 equal groups of quintiles based on their annual expenditure.

Any help on this would be very appreciated!

-

ggplot2 has a nice utility function, `cut_number()`, which does just what you want.
``````library(ggplot2)
It will fail for something like this (as I think you arguably should want it to, since there's no principled way to decide which `1`s should go in 'quintiles' 1,2,3, and 4): `cut_number(c(1,1,1,1,1,1,1,1,1,3,4), n=5)` –  Josh O'Brien Aug 28 '12 at 16:06