# Quarry and aggregate data based on conditions in R

I have a data frame and I want to get the mean of all values of `type b` for each year, if `type a` have values equal to 1.

``````Year  type   value1   value2  value3  value4  value5
1     a       1        1        2       3       4
1     b       10       12       9       8       10
2     a       1        2        2       2       1
2     b       11       10       13      9       14
``````

so that my final product looks like this:

``````Year  type_b_values
1      11
2      12.5
``````

which are the averages of `value1` and `value2` for `Year1` and average of `value1` and `5` for `Year2`.Thanks!

-

Here is an approach using base functions. I'm guessing plyr or reshape may be useful packages here as well but I'm much less familiar with them:

``````dat <- read.table(text="Year  type   value1   value2  value3  value4  value5
1     a       1        1        2       3       4
1     b       10       12       9       8       10
2     a       1        2        2       2       1
2     b       11       10       13      9       14", header=TRUE)

dat_split <- split(dat, dat\$Year)       # split our data into a list by year

output <- sapply(dat_split, function(x) {
y <- x[x\$type == "a", -c(1:2)] == 1 # which a in that year = 1
z <- x[x\$type == "b", -c(1:2)][y]   # grab the b values that a = 1
if (sum(y) == 0) {                  # eliminate if no a = 1
return(NA)
}
mean(z)
})

data.frame(Year = names(output), type_b_values = output)

## > data.frame(Year = names(output), type_b_values = output)
##   Year type_b_values
## 1    1          11.0
## 2    2          12.5
``````
-
Thanks! That's what I wanted. –  N16 May 9 '13 at 23:44

And here is the version using `plyr`:

``````library(plyr)
ddply(dat, "Year", function(x) {
values.cols <- grep("value", names(x), value = TRUE)
a <- subset(x, type == "a", values.cols)
b <- subset(x, type == "b", values.cols)
c("type_b_values" = mean(b[a == 1]))
})

#   Year type_b_values
# 1    1          11.0
# 2    2          12.5
``````
-