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I am attempting to merge two data sets. In the past I have used merge() with by equal to the variable I want to merge by. However, now I would like to do so with two variables. My first data set looks something like this:

Year   Winning_Tm    Losing_Tm
2011   Texas         Washington
2012   Alabama       South Carolina
2013   Tennessee     Texas

Then I have another data set with a rank of each team (this is very simplified) for each year. Like this:

Year    Team             Rank
2011    Texas            32
2011    Washington       34
2012    South Carolina   45
2012    Alabama          12
2013    Texas            6
2013    Tennessee        51

I would like to merge them so I have a data set that looks like this:

Year   Winning_Tm    Winning_TM_rank    Losing_Tm        Losing_Tm_rank
2011   Texas         32                 Washington       34
2012   Alabama       12                 South Carolina   45
2013   Tennessee     51                 Texas            6

My hope is that there is a simple way to do this but it may be more complicated. Thanks!

0

3 Answers 3

4

I reproduced your data (try to include a dput of it next time):

A <- data.frame(
  Year = c(2011, 2012, 2013),
  Winning_Tm = c("Texas","Alabama","Tennessee"),
  Losing_Tm = c("Washington","South Carolina", "Texas"),
  stringsAsFactors = FALSE
)

B <- data.frame(
  Year = c("2011","2011","2012","2012","2013","2013"),
  Team = c("Texas","Washington","South Carolina","Alabama","Texas","Tennessee"),
  Rank = c(32,34,45,12,6,51),
  stringsAsFactors = FALSE
)

You can melt the first dataframe using the reshape2 package:

library(reshape2)

A <- melt(A, id.vars = "Year")
names(A)[3] <- "Team"

Now it looks like this:

> A
  Year   variable           Team
1 2011 Winning_Tm          Texas
2 2012 Winning_Tm        Alabama
3 2013 Winning_Tm      Tennessee
4 2011  Losing_Tm     Washington
5 2012  Losing_Tm South Carolina
6 2013  Losing_Tm          Texas

You can then merge the datasets together by the two columns of interest:

AB <- merge(A, B, by=c("Year","Team"))

Which looks like this:

> AB
  Year           Team   variable Rank
1 2011          Texas Winning_Tm   32
2 2011     Washington  Losing_Tm   34
3 2012        Alabama Winning_Tm   12
4 2012 South Carolina  Losing_Tm   45
5 2013      Tennessee Winning_Tm   51
6 2013          Texas  Losing_Tm    6

Then using the reshape command from base R you can change AB to a wide format:

reshape(AB, idvar = "Year", timevar = "variable", direction = "wide")

The result:

  Year Team.Winning_Tm Rank.Winning_Tm Team.Losing_Tm Rank.Losing_Tm
1 2011           Texas              32     Washington             34
3 2012         Alabama              12 South Carolina             45
5 2013       Tennessee              51          Texas              6
3
  • 1
    I have used your method and it works well, except that it appears to be confusing teams that repeat (I think). here is the warning message: Warning messages: 1: In reshapeWide(data, idvar = idvar, timevar = timevar, varying = varying, : multiple rows match for variable=L_Tm: first taken 2: In reshapeWide(data, idvar = idvar, timevar = timevar, varying = varying, : multiple rows match for variable=W_Tm: first taken
    – a.powell
    Commented Aug 25, 2016 at 23:09
  • Good point @a.powell. Does the resulting dataframe after reshape only show the repeated teams once?
    – Warner
    Commented Aug 26, 2016 at 14:01
  • It only showed games from "Air Force" the first alphabetical team in the list. And reshaped them playing themselves.
    – a.powell
    Commented Aug 26, 2016 at 18:48
2

Two separate merges. You would need to wrap your list of by variables in c(), and since the variables have different names, you need by.x and by.y. Afterward you could rename the rank variables.

I'll call your data winlose and teamrank, respectively. Then you'd need:

first_merge <- merge(winlose, teamrank, by.x = c('Year', 'Winning_Tm'), by.y = c('Year', 'Team'))
second_merge <- merge(first_merge, teamrank, by.x = c('Year', 'Losing_Tm'), by.y = c('Year', 'Team'))

Renaming the variables:

names(second_merge)[names(second_merge) == 'Rank.x'] <- 'Winning_Tm_rank'
names(second_merge)[names(second_merge) == 'Rank.y'] <- 'Losing_Tm_rank'
2
  • 1
    Keep in mind that rank is a built-in function, which may result in unwanted name collisions. Commented Aug 25, 2016 at 18:27
  • 2
    Ah, good catch, I never had used that function. Edited my answer to change rank to teamrank. Commented Aug 25, 2016 at 18:40
2

If you are familiar with SQL a rather complicated, but fast way to do this all in one step would be:

res <- sqldf("SELECT l.*,
                     max(case when l.Winning_Tm = r.Team then r.Rank else 0 end) as Winning_Tm_rank,
                     max(case when l.Losing_Tm = r.Team then r.Rank else 0 end) as Losing_Tm_rank
             FROM      df1 as l
             inner join df2 as r
             on        (l.Winning_Tm = r.Team
             OR        l.Losing_Tm = r.Team)
             AND       l.Year = r.Year
             group by  l.Year, l.Winning_Tm, l.Losing_Tm")

res
  Year Winning_Tm      Losing_Tm Winning_Tm_rank Losing_Tm_rank
1 2011      Texas     Washington              32             34
2 2012    Alabama South_Carolina              12             45
3 2013  Tennessee          Texas              51              6

Data:

df1 <- read.table(header=T,text="Year   Winning_Tm    Losing_Tm
2011   Texas         Washington
2012   Alabama       South_Carolina
2013   Tennessee     Texas")

df2<- read.table(header=T,text="Year Team Rank
2011    Texas            32
2011    Washington       34
2012    South_Carolina   45
2012    Alabama          12
2013    Texas            6
2013    Tennessee        51")

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