# data.table operation with .SD: calculating percentage change concisely

I'm trying to calculate some percentage change concisely using data.table, but I've got some trouble understanding entirely how the .SD operations works.

Let's say I have the following table

``````dt = structure(list(type = c("A", "A", "A", "B", "B", "B"), Year = c(2000L,
2005L, 2010L, 2000L, 2005L, 2010L), alpha = c(0.0364325563237498,
0.0401968159729988, 0.0357395587861466, 0.0317236054181487, 0.0328213742235379,
0.0294694430578336), beta = c(0.0364325563237498, 0.0401968159729988,
0.0357395587861466, 0.0317236054181487, 0.0328213742235379, 0.0294694430578336
)), .Names = c("type", "Year", "alpha", "beta"), row.names = c(NA,
-6L), class = c("data.table", "data.frame"))

> dt
##    type Year      alpha       beta
## 1:    A 2000 0.03643256 0.03643256
## 2:    A 2005 0.04019682 0.04019682
## 3:    A 2010 0.03573956 0.03573956
## 4:    B 2000 0.03172361 0.03172361
## 5:    B 2005 0.03282137 0.03282137
## 6:    B 2010 0.02946944 0.02946944
``````

To calculate the percentage change on alpha, by category, I came up with the following code:

``````dt[,change:=list(lapply(3:2,function(x)(.SD[x,alpha]/.SD[
(x-1),alpha]))),by=list(type)][][Year==2000,change:=NA]
``````

But something tells me their could be a more concise way of doing it. In particular if one would want to perform the percentage change for both columns the following would not work

``````dt[,c("changeAlpha","changeBeta"):=list(lapply(3:2,
function(x)(.SD[x]/.SD[(x-1)]))),by=list(type)][Year==2000,change:=NA][]
``````

So I resorted to:

``````dt[,c("changeAlpha","changeBeta"):=list(
lapply(3:2,function(x)(.SD[x,alpha]/.SD[(x-1),alpha])),
lapply(3:2,function(x)(.SD[x,beta]/.SD[(x-1),beta]))),by=list(type)][
Year==2000,c("changeAlpha","changeBeta"):=list(NA,NA)][]

##        type Year      alpha       beta       changeAlpha        changeBeta
## 1:    A 2000 0.03643256 0.03643256                NA                NA
## 2:    A 2005 0.04019682 0.04019682  1.10332131557826  1.10332131557826
## 3:    A 2010 0.03573956 0.03573956 0.889114172877617 0.889114172877617
## 4:    B 2000 0.03172361 0.03172361                NA                NA
## 5:    B 2005 0.03282137 0.03282137  1.03460416276522  1.03460416276522
## 6:    B 2010 0.02946944 0.02946944 0.897873527693412 0.897873527693412
``````

But the operations seems right but got a lot of warnings which lead me here.

• Is my method of thinking completely wrong or is it the right way to proceed for this operation?

You could use the `shift` function from data.table v1.9.6+

``````myFunc <- function(x) x/shift(x)
``````

Select the columns you want to calculate the percentage for

``````cols <- c("alpha", "beta")
``````

Or if you want to run this on all the colunms except the first two

``````cols <- names(dt)[-(1:2)]
``````

Run the function over the columns

``````dt[, paste0("change", cols) := lapply(.SD, myFunc), by = type, .SDcols = cols][]
#    type Year      alpha       beta changealpha changebeta
# 1:    A 2000 0.03643256 0.03643256          NA         NA
# 2:    A 2005 0.04019682 0.04019682   1.1033213  1.1033213
# 3:    A 2010 0.03573956 0.03573956   0.8891142  0.8891142
# 4:    B 2000 0.03172361 0.03172361          NA         NA
# 5:    B 2005 0.03282137 0.03282137   1.0346042  1.0346042
# 6:    B 2010 0.02946944 0.02946944   0.8978735  0.8978735
``````
• I didn't have the bleeding edge version. The code is definitely more concise and easier to read. Yet, After installing the latest version of data.table and running your code. I've got `object 'CisOrderedSubset' not found`.Do you have any lead by any chance? – DJJ Mar 15 '15 at 0:25
• Close all you R sessions and open only one and reinstall again. – David Arenburg Mar 15 '15 at 0:26
• BTW, if you want to run this on all the columns of your data except the first two, set `cols <- names(dt)[-(1:2)]` and the run the code. – David Arenburg Mar 15 '15 at 0:40