I have this code below. I'm trying to use quantiles and then subset by groups (years, of which there are two). I think I can do this with dplyr, but it is not working:

Claims6 %>% 
  group_by(year) %>% 
  summarise(ranker = quantile(Expense, prob = c(.10, .30, .50, .80)))
  • 1
    "is not working" is very vague. When you get an error, you should post the specific error message. Though it might not always be obvious, error messages are designed to be useful and helpful! Jun 15, 2016 at 21:24
  • 1
    Try posting a reproducible example, not necessarily all of your data but some of it. It's hard to tell what you have in Claims6 and simple things like different classes make a big difference.
    – Nate
    Jun 15, 2016 at 21:25
  • This question is a little different (the original poster was a little closer to the right answer), but it might get you to where you want to be: stackoverflow.com/q/30225560/903061 Jun 15, 2016 at 21:26
  • 3
    You're returning four values for each group; dplyr is naturally better at cutting data down than expanding it. If you wrap quantile in list, you can expand with tidyr::unnest like so: Claims6 %>% group_by(year) %>% summarise(ranker = list(quantile(Expense, prob= c(.10,.30,.50,.80)))) %>% unnest(), or to add on probilities, something like Claims6 %>% group_by(year) %>% summarise(nest_col = list(data.frame(ranker = quantile(Expense, prob= c(.10,.30,.50,.80))) %>% add_rownames('prob'))) %>% unnest()
    – alistaire
    Jun 15, 2016 at 21:48
  • You can do it in dplyr with summarise instead of do, but, as shown here, you need to assign each quantile to a separate summary column. The do method in @M_Fidino's answer will be easier if you want to calculate several quantiles.
    – eipi10
    Jun 15, 2016 at 23:40

1 Answer 1


You can use the do function for problems like this. I generated some data for you to test this out.

Claims6 <- data.frame(year = factor(rep(c(2015, 2016), each = 10)),
                  Expense = runif(20))

Claims6 %>% group_by(year) %>% 
  do(data.frame(t(quantile(.$Expense, probs = c(0.10, 0.30, 0.50, 0.80)))))

Source: local data frame [2 x 5]
Groups: year [2]

    year       X10.      X30.      X50.      X80.
  (fctr)      (dbl)     (dbl)     (dbl)     (dbl)
1   2015 0.06998258 0.2855598 0.5469119 0.9499181
2   2016 0.22983539 0.3691736 0.4754915 0.7058695

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