8

I have a dataframe which I am grouping using the group_by function, and summarizing it with using the summarize function in R.

MM_group<-group_by(SYC,Method,Maturity)

My dataset looks like this,

 Year           Group  County Seed.Brand Seed.Variety Seed.Maturity
1 2014 Group 0 No-till Yankton     Asgrow       AG0832           0.8
2 2014 Group 0 No-till   Brown     Asgrow       AG0934           0.9
3 2014 Group 0 No-till   Brown     Asgrow       AG0934           0.9
4 2014 Group 0 No-till   Brown     Asgrow       AG0934           0.9
5 2014 Group 0 No-till   Brown    Pioneer        90Y90           0.9
6 2014 Group 0 No-till   Brown     Asgrow       AG0934           0.9

Yield  Method Maturity digits
1 73.23 No-till        0      0
2 65.14 No-till        0      0
3 63.63 No-till        0      0
4 61.57 No-till        0      0
5 60.20 No-till        0      0

I am grouping by Method & Maturity. I am trying to get County and Year for maximum yield for the Method & Maturity combination.

I have done the following:

summarize(MM_group,Max_Yield=max(Yield))

       Method Maturity Max_Yield
           <chr>    <chr>     <dbl>
1      Irrigated        0    69.600
2      Irrigated        1    86.013
3      Irrigated        2    88.750
4      Irrigated        3    79.650
5        No-till        0    79.470
6        No-till        1    79.856
7        No-till        2    85.860
8        No-till        3    68.530
9  Non-irrigated        0    83.210
10 Non-irrigated        1    81.916
11 Non-irrigated        2   103.740
12 Non-irrigated        3    94.410

But, this doesn't give me the county name and year. I know I can use cbind or joins to get that data but wondering if there is another easier way of doing this.

Expected Output:

          Method Maturity Max_Yield  Year                  Group
           <chr>    <chr>     <dbl> <int>                 <fctr>
1      Irrigated        0    69.600  2012 Group 0 or 1 Irrigated
2      Irrigated        1    86.013  2012 Group 0 or 1 Irrigated
3      Irrigated        2    88.750  2013 Group 2 or 3 Irrigated
4      Irrigated        3    79.650  2013 Group 2 or 3 Irrigated
5        No-till        0    79.470  2013        Group 0 No-till
6        No-till        1    79.856  2012        Group 1 No-till
7        No-till        2    85.860  2013        Group 2 No-till
8        No-till        3    68.530  2014        Group 3 No-till
9  Non-irrigated        0    83.210  2013  Group 0 Non-irrigated
10 Non-irrigated        1    81.916  2012  Group 1 Non-irrigated
11 Non-irrigated        2   103.740  2014  Group 2 Non-irrigated
12 Non-irrigated        3    94.410  2014  Group 3 Non-irrigated 
3
  • sdsoybean.org/programs-events/yield-contest you should be able to find the entire dataset here
    – Kasi
    Jul 9, 2017 at 6:12
  • From that link, where is the data ? Is it the Agronomic data?
    – akrun
    Jul 9, 2017 at 6:14
  • Yes, that's right. But, my data is a compilation of all the years.
    – Kasi
    Jul 9, 2017 at 6:27

3 Answers 3

10

Try

summarize(MM_group, 
          rank = which.max(Yield),
          Year_rank = Year[rank],
          County_rank = County[rank])
2
  • This works like a charm! This is what I was looking for. Great way to use the rank function like an index.
    – Kasi
    Jul 9, 2017 at 6:45
  • 1
    @Kasi I'm not using the function rank, it is just the name of a new column, you could use foo instead, it would still work. And I think the name rank is a bad choice of name, my mistake.
    – F. Privé
    Jul 9, 2017 at 8:38
4

We can use

SYC %>%
   group_by(Method, Maturity) %>%
   slice(which.max(Yield)) %>% 
   rename(Max_Yield = Yield) %>%
   select(Method, Maturity, Max_Yield, Year, Group)
3
  • That won't work cause I need maximum yield by method and maturity column. Your method is basically grouping the four attributes and finding the maximum. I am trying to just add the county and year columns. Something like this:test<-left_join(MM_max,Data,by=c('Method'='Method','Maturity'='Maturity','Max_Yield'='Yield')).
    – Kasi
    Jul 9, 2017 at 6:02
  • @Kasi I also had another method. It is not clear based on your small example what should be the expected output. Suppose you have the same 'Method' for each 'County', 'Year', then left_join would not work
    – akrun
    Jul 9, 2017 at 6:03
  • @Kasi Please show a small reproducible example and expected output instead of just 4 lines
    – akrun
    Jul 9, 2017 at 6:05
3

You can use the arrange and slice method as follows:

library(dplyr)
df %>% 
  arrange(Method, Maturity, desc(Yield)) %>% 
  group_by(Method, Maturity) %>%
  slice(1) %>%
  ungroup %>%
  select(Method, Maturity, Yield, Year, Group) %>%
  rename(Max_Yield = Yield)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.