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I am trying to retrieve the most repeated value in a particular column present in a data frame.Here is my sample data and code below.A

data("Forbes2000", package = "HSAUR")
head(Forbes2000)


  rank                name        country             category  sales profits  assets marketvalue
1    1           Citigroup  United States              Banking  94.71   17.85 1264.03      255.30
2    2    General Electric  United States        Conglomerates 134.19   15.59  626.93      328.54
3    3 American Intl Group  United States            Insurance  76.66    6.46  647.66      194.87
4    4          ExxonMobil  United States Oil & gas operations 222.88   20.96  166.99      277.02
5    5                  BP United Kingdom Oil & gas operations 232.57   10.27  177.57      173.54
6    6     Bank of America  United States              Banking  49.01   10.81  736.45      117.55

As per my sample data I need to return the most repeated category which is Insurance.

subset(subset(Forbes2000,country=="Bermuda")
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How about sort(table(yourdata$category), decreasing=TRUE)[1]. There are lots of other ways too! –  Justin Aug 29 '12 at 22:09
    
I need to return the most repeated value from my data... –  SOaddict Aug 29 '12 at 22:12
    
I thought I'd leave that to the reader as an exercise. names(sort(table(yourdata$category), decreasing=TRUE)[1]). But Josh makes a good point below, what if you've got a tie! –  Justin Aug 29 '12 at 22:24

3 Answers 3

up vote 2 down vote accepted
tail(names(sort(table(Forbes2000$category))), 1)
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It doesnt meet the question –  SOaddict Aug 29 '12 at 22:21
3  
@Vutukuri can you explain how it doesn't meet the question? It sounds like it will work great to me... –  Justin Aug 29 '12 at 22:26
    
Yep its working.. I misplaced the data frame.... –  SOaddict Aug 29 '12 at 22:28

In case two or more categories may be tied for most frequent, use something like this:

x <- c("Insurance", "Insurance", "Capital Goods", "Food markets", "Food markets")
tt <- table(x)
names(tt[tt==max(tt)])
[1] "Food markets" "Insurance" 
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Another way with the data.table package, which is faster for large data sets:

set.seed(1)
x=sample(seq(1,100), 5000000, replace = TRUE)

method 1 (solution proposed above)

start.time <- Sys.time()
tt <- table(x)
names(tt[tt==max(tt)])
end.time <- Sys.time()
time.taken <- end.time - start.time
time.taken

Time difference of 4.883488 secs

method 2 (DATA TABLE)

start.time <- Sys.time()
ds <- data.table( x )
setkey(ds, x)
sorted <- ds[,.N,by=list(x)]

most_repeated_value <- sorted[order(-N)]$x[1]
most_repeated_value

end.time <- Sys.time()
time.taken <- end.time - start.time
time.taken

Time difference of 0.328033 secs

share|improve this answer
1  
tucson, nice. I think as.data.table(ds)[, .N, by=x][, x[N == max(N)]] also does the job, which takes 0.06s on my laptop. As a FYI, no need to setkey for aggregations. –  Arun Jul 20 '14 at 7:50
    
@Arun Thank you. Your solution should be on top of this page. –  tucson Jul 20 '14 at 8:55

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