# select random group of observations (rows) from grouped data

I have repeat observations for two individuals spanning four years. How can I select all of the observations from a single year randomly?

``````set.seed(123)
dat <- data.frame(IndID = rep(c("AAA", "BBB"), each = 100),
Year = sample(c("2001", "2002", "2003", "2005"),200, replace = T),
Value = rnorm(200))
dat\$Value[dat\$IndID == "AAA" & dat\$Year == "2002"] <- NA
dat\$Value[dat\$IndID == "BBB" & dat\$Year == "2005"] <- NA
``````

Note, the differing sample sizes between individual-year combinations.

``````table(dat\$IndID, dat\$Year)

2001 2002 2003 2005
AAA   26   27   20   27
BBB   20   30   30   20
``````

Also note that not all years have data.

``````dat %>% group_by(IndID, Year) %>%
summarise(NoDat = sum(is.na(Value))) %>%
as.data.frame()
IndID Year NoDat
1   AAA 2001     0
2   AAA 2002    27
3   AAA 2003     0
4   AAA 2005     0
5   BBB 2001     0
6   BBB 2002     0
7   BBB 2003     0
8   BBB 2005    20
``````

I have seen a number of helpful examples for selecting specific rows within a group (i.e. top, last, n random, etc.) but am not connecting the dots on how to select all rows within a group. Here I want all of the data for a randomly-selected year for each individual, preferably with `dplyr`. The random year should be specific to each individual given differing periods with and without data. The random year needs to be one with observations collected, which varies among individuals.

I believe this is what you are looking for:

``````set.seed(123)
dat <- data.frame(IndID = rep(c("AAA", "BBB"), each = 100),
Year = sample(c("2001", "2002", "2003", "2005"),200, replace = T),
Value = rnorm(200))
rand_year <- sample(dat\$Year,1)
dat %>%
filter(Year == rand_year)
``````

And here is the edited version where you get random year for each participant (note that year could be the same):

``````result <- dat %>%
group_by(IndID) %>%
filter(Year == sample(Year, 1))
``````

And replacing `filter()` row with `filter(Year == sample(unique(Year[!is.na(Value)]), 1))` will give the same probability for each year to be selected and exclude missing values as mentioned in comments.

• I had not thought of working outside of `dplyr`. I have added specifics to the question and the data set, specifically adding `NA`s to some years. I need the random year to be different for each individual. – B. Davis Oct 16 '17 at 21:19
• slick. Could also change line 2 to `filter(Year == sample(Year[!is.na(Value)], 1))` to filter out years with `NA`. – B. Davis Oct 16 '17 at 21:59
• Oh, yes. Good point, because I am sampling a vector with uneven sample sizes, the probability will not be equal. This is fine for this example, but appreciate the comment. – B. Davis Oct 16 '17 at 22:21