# dplyr filter: Get rows with minimum of variable, but only the first if multiple minima

I want to make a grouped filter using `dplyr`, in a way that within each group only that row is returned which has the minimum value of variable `x`.

My problem is: As expected, in the case of multiple minima all rows with the minimum value are returned. But in my case, I only want the first row if multiple minima are present.

Here's an example:

``````df <- data.frame(
A=c("A", "A", "A", "B", "B", "B", "C", "C", "C"),
x=c(1, 1, 2, 2, 3, 4, 5, 5, 5),
y=rnorm(9)
)

library(dplyr)
df.g <- group_by(df, A)
filter(df.g, x == min(x))
``````

As expected, all minima are returned:

``````Source: local data frame [6 x 3]
Groups: A

A x           y
1 A 1 -1.04584335
2 A 1  0.97949399
3 B 2  0.79600971
4 C 5 -0.08655151
5 C 5  0.16649962
6 C 5 -0.05948012
``````

With ddply, I would have approach the task that way:

``````library(plyr)
ddply(df, .(A), function(z) {
z[z\$x == min(z\$x), ][1, ]
})
``````

... which works:

``````  A x           y
1 A 1 -1.04584335
2 B 2  0.79600971
3 C 5 -0.08655151
``````

Q: Is there a way to approach this in dplyr? (For speed reasons)

• `filter(df.g, rank(x) == 1)` ? Commented Jan 23, 2014 at 12:46
• @FelixS, does `rank(x)==1` give the desired results? Commented Jan 23, 2014 at 15:23
• @hadley, 1) I don't think `min_rank` helps here. He needs the first min value (look at `plyr` solution). 2) In whatever programming language you write, the algorithmic complexity of `rank` (ties=min, max, first etc..) will be bigger than just computing `min`.
– Arun
Commented Jan 24, 2014 at 1:08
• @Arun: True, only `rank(x, ties.method="first")==1` works, as min and min_rank do not differentiate between multiple minima. Commented Jan 24, 2014 at 8:13
• @hadley, I still don't see how that makes you consider `which.min` to be premature optimisation. AFAIK it's a natural choice, reads well, easy to understand, fast as it happens to be O(n) too.
– Arun
Commented Jan 28, 2014 at 0:06

### Update

With dplyr >= 0.3 you can use the `slice` function in combination with `which.min`, which would be my favorite approach for this task:

``````df %>% group_by(A) %>% slice(which.min(x))
#Source: local data frame [3 x 3]
#Groups: A
#
#  A x          y
#1 A 1  0.2979772
#2 B 2 -1.1265265
#3 C 5 -1.1952004
``````

For the sample data, it is also possible to use two `filter` after each other:

``````group_by(df, A) %>%
filter(x == min(x)) %>%
filter(1:n() == 1)
``````
• I find `do(head)` easier to read, `df %>% group_by(A) %>% filter(x == min(x)) %>% do(head(.,1))` Commented May 20, 2014 at 12:03
• @baptiste that looks nice indeed (however, when i run it, i get an error message `Error: expecting a single value`) - do you know why? Commented May 20, 2014 at 12:07
• not sure, maybe we're using a different version; I have `dplyr_0.2, magrittr_1.0.0` Commented May 20, 2014 at 13:02
• Ok, so the problem is I'm still running dplyr 0.1.3. Thx Commented May 20, 2014 at 13:05
• I’d prefer being able to use `top_n` here but due to ties this method is probably the clear winner — definitely in terms of performance (when compared to `arrange %>% slice`). Commented Nov 13, 2015 at 14:53

Just for completeness: Here's the final `dplyr` solution, derived from the comments of @hadley and @Arun:

``````library(dplyr)
df.g <- group_by(df, A)
filter(df.g, rank(x, ties.method="first")==1)
``````

For what it's worth, here's a `data.table` solution, to those who may be interested:

``````# approach with setting keys
dt <- as.data.table(df)
setkey(dt, A,x)
dt[J(unique(A)), mult="first"]

# without using keys
dt <- as.data.table(df)
dt[dt[, .I[which.min(x)], by=A]\$V1]
``````

The `dplyr` package offers the `slice_min()` function, which does the job with the argument `with_ties = FALSE`.

``````library(dplyr)

df %>%
group_by(A) %>%
slice_min(x, with_ties = FALSE)
``````

Output :

``````# A tibble: 3 x 3
# Groups:   A [3]
A         x      y
<fct> <dbl>  <dbl>
1 A         1  0.273
2 B         2 -0.462
3 C         5  1.08
``````

This can be accomplished by using `row_number` combined with `group_by`. `row_number` handles ties by assigning a rank not only by the value but also by the relative order within the vector. To get the first row of each group with the minimum value of `x`:

``````df.g <- group_by(df, A)
filter(df.g, row_number(x) == 1)
``````

In case you are looking to filter the minima of x and then the minima of y. An intuitive way of do it is just using filtering functions:

``````> df
A x            y
1 A 1  1.856368296
2 A 1 -0.298284187
3 A 2  0.800047796
4 B 2  0.107289719
5 B 3  0.641819999
6 B 4  0.650542284
7 C 5  0.422465687
8 C 5  0.009819306
9 C 5 -0.482082635

df %>% group_by(A) %>%
filter(x == min(x), y == min(y))

# A tibble: 3 x 3
# Groups:   A [3]
A         x      y
<chr> <dbl>  <dbl>
1 A         1 -0.298
2 B         2  0.107
3 C         5 -0.482
``````

This code will filter the minima of x and y.

Also you can do a double filter that looks even more readable:

``````df %>% group_by(A) %>%
filter(x == min(x)) %>%
filter(y == min(y))

# A tibble: 3 x 3
# Groups:   A [3]
A         x      y
<chr> <dbl>  <dbl>
1 A         1 -0.298
2 B         2  0.107
3 C         5 -0.482
``````

Another way to do it:

``````set.seed(1)
x <- data.frame(a = rep(1:2, each = 10), b = rnorm(20))
x <- dplyr::arrange(x, a, b)
dplyr::filter(x, !duplicated(a))
``````

Result:

``````  a          b
1 1 -0.8356286
2 2 -2.2146999
``````

Could also be easily adapted for getting the row in each group with maximum value.

I like sqldf for its simplicity..

``````sqldf("select A,min(X),y from 'df.g' group by A")
``````

Output:

``````A min(X)          y

1 A      1 -1.4836989

2 B      2  0.3755771

3 C      5  0.9284441
``````

For the sake of completeness, here's the `base R` answer:

``````df[with(df, ave(x, A, FUN = \(x) rank(x, ties.method = "first")) == 1), ]

#  A x          y
#1 A 1  0.1076158
#4 B 2 -1.3909084
#7 C 5  0.3511618
``````