I have data with a grouping variable ("from") and values ("number"):
from number
1 1
1 1
2 1
2 2
3 2
3 2
I want to subset the data and select groups which have two or more unique values. In my data, only group 2 has more than one distinct 'number', so this is the desired result:
from number
2 1
2 2
Several possibilities, here's my favorite
library(data.table)
setDT(df)[, if(+var(number)) .SD, by = from]
# from number
# 1: 2 1
# 2: 2 2
Basically, per each group we are checking if there is any variance, if TRUE
, then return the group values
With base R, I would go with
df[as.logical(with(df, ave(number, from, FUN = var))), ]
# from number
# 3 2 1
# 4 2 2
Edit: for a non numerical data you could try the new uniqueN
function for the devel version of data.table
(or use length(unique(number)) > 1
instead
setDT(df)[, if(uniqueN(number) > 1) .SD, by = from]
You could try
library(dplyr)
df1 %>%
group_by(from) %>%
filter(n_distinct(number)>1)
# from number
#1 2 1
#2 2 2
Or using base R
indx <- rowSums(!!table(df1))>1
subset(df1, from %in% names(indx)[indx])
# from number
#3 2 1
#4 2 2
Or
df1[with(df1, !ave(number, from, FUN=anyDuplicated)),]
# from number
#3 2 1
#4 2 2
Using concept of variance shared by David but doing it dplyr way:
library(dplyr)
df %>%
group_by(from) %>%
mutate(variance=var(number)) %>%
filter(variance!=0) %>%
select(from,number)
#Source: local data frame [2 x 2]
#Groups: from
#from number
#1 2 1
#2 2 2