# Alternative to if statement in R

I use a series of if statements to check if Year is equal to a certain value, and then calculate a statement. Is there a more efficient and faster way to perform the following instead of using if statements?

``````for (i in 1:length(O\$Year))
{
if (Year[i] == "2012") {
O\$SD[i] = C[i]/5408666
} else if ( Year[i] == "2013") {
O \$SD[i] = C[i]/5300759
} else if ( Year[i] == "2014") {
O\$SD[i] = C[i]/5410924
} else if ( Year[i] == "2015") {
O\$SD[i] = C[i]/5446029
} else if ( Year[i] == "2016") {
O\$SD[i] = C[i]/5480869
} else
O\$SD[i] = C[i]
}

**Data set named O**
**SD Year C**
43 2012 4
23 2012 5
12 2014 3
53 2014 3
``````

``````tmp <- data.frame(year = c("2012","2013","2014","2015","2016"),
denominator = c(5408666,5300759,5410924,5446029,5480869))

for(i in 1:nrow(O)){
O[i,4] <- O\$C[i]/tmp[which(as.character(tmp\$year)==O\$Year[i]),2]
}
``````

you can use `dplyr::recode`, `switch` works similarly:

dummy data:

``````library(dplyr)

43 2012 4
23 2012 5
12 2014 3
``````

recode: note the backticks `` around the values to be replaced:

``````O %>% mutate(SD= recode(Year,`2012`=C/540866,
`2014`=C/5410924))
``````

result:

``````            SD Year C
1 7.395547e-06 2012 4
2 9.244434e-06 2012 5
3 5.544340e-07 2014 3
4 5.544340e-07 2014 3
``````

I'd love to see how to do this with `switch()`, and I would typically use `dplyr` piping to avoid having to type the name of the data.frame so often, but here's what I would do here:

``````O\$SD <- ifelse(O\$Year == '2012', O\$C/5408666,
ifelse(O\$Year == '2013', O\$C/5300759,
ifelse(O\$Year == '2014', O\$C/5410924,
ifelse(O\$Year == '2015', O\$C/5446029,
ifelse(O\$YEar == '2016', O\$C/5480869, O\$C))))
``````

It doesn't save a ton of typing, but it does save a for loop.

• You can also use `with` to avoid typing the data frame name repeatedly. – Gregor Thomas May 8 '17 at 16:33
• `switch` takes a single value for the first argument, so you'd have to wrap it in a `for` loop. That's generally something I'd avoid. – Benjamin May 8 '17 at 18:05

I think you'll be most efficient if you use `match` to assign your denominator to each row.

``````match_year_row <- match(O\$year, 2012:2016)

O\$denominator <- c(5408666,5300759,5410924,5446029,5480869)[match_year_row]
O\$denominator[is.na(O\$denominator)] <- 1
O\$SD <- with(O, C / denominator)
``````